Skip to main content
F1000Research logoLink to F1000Research
. 2024 Jul 19;13:815. [Version 1] doi: 10.12688/f1000research.144332.1

Factors Influencing Climate-Smart Agriculture Practices Adoption and Crop Productivity among Smallholder Farmers in Nyimba District, Zambia

Chavula Petros 1,2,a, Samuel Feyissa 2, Million Sileshi 3, Chizumba Shepande 4
PMCID: PMC12371323  PMID: 40860262

Abstract

Background

The profound impacts of climate change on the environment, economy, and society are anticipated to significantly influence smallholder farmers, whose livelihoods and traditional ways of life are inextricably intertwined with the natural environment. This comprehensive study delves into the multifaceted factors shaping the adoption of climate-smart agricultural practices and their subsequent effects on crop productivity among the small-scale farming communities in Nyimba District, situated within Zambia.

Methods

The study collected data from 194 smallholder farmer households across 12 villages in 4 agricultural camps of Nyimba District between June and July 2022. A logistic regression model was utilized to assess the factors influencing crop production and the adoption of climate-smart agricultural practices in response to climate change and variability within the study area. Furthermore, propensity score matching was performed to evaluate the impacts of adopting climate-smart agriculture by comparing adopter households with their non-adopter counterparts.

Results

The logit regression model’s findings from the research indicate that several factors influence smallholder farmer households’ adoption of climate-smart agricultural techniques and crop productivity. These factors include the farmer’s educational level, household size, fertilizer utilization, the household head’s age and gender, farming experience duration, livestock ownership status, annual household income, farmland size, the household head’s marital status, and access to climate-related information. Additionally, the propensity score matching analysis revealed that crop yields among smallholder farmers who adopted climate-smart agricultural practices were 20.20% higher compared to non-adopters. Furthermore, the analysis showed that implementing such practices in the study area led to a 21.50% increase in maize yields for adopter households relative to their non-adopter counterparts.

Conclusion

The findings of this research offer valuable insights to policymakers, guiding them in enhancing farmers’ climate change adaptation strategies and formulating relevant policies. Nevertheless, these initiatives and concerted efforts possess the potential to mitigate the detrimental impacts posed by climate change and climatic variability.

This manuscript is an extract from my master of science degree in climate-smart agriculture from Haramaya University titled ‘Climate-Smart Practices: Effects of Agroforestry and Conservation Agriculture on Selected Physicochemical Properties of Soils and Crop Productivity among Smallholder Farmers, in Nyimba, Zambia.’

Please refer to this link; http://ir.haramaya.edu.et/hru/bitstream/handle/123456789/6402/PETROS%20CHAVULA.pdf?isAllowed=y&sequence=1

Keywords: Adoption, Agriculture production, Climate-smart agriculture, Climate change, Crop productivity

1. Introduction

Climate change is already hindering the growth of agricultural production, both livestock and crop farming, on a global scale ( Alfani et al., 2019). Greater climate variability and shifts in climatic patterns exacerbate production risks and strain farmers’ ability to cope. These climatic changes pose threats to accessing nutritious food for urban, peri-urban, and rural communities due to decreased agricultural output and reduced household income ( Ivanova et al., 2020; Sharifi, 2021; Mossie, 2022), as well as increased risks that disrupt food markets. The 2018 assessment from the Intergovernmental Panel on Climate Change (IPCC) states that food output is impacted by climate change in most parts of the world, with negative consequences predominating over positive ones. Developing nations are particularly vulnerable to additional negative effects. In many parts of the world, there has already been and is predicted to be an acceleration of increases in the frequency and intensity of severe events, such as drought, flooding, heavy rainfall, and high maximum temperatures ( Murray & Ebi, 2012; IPCC, 2018). It is anticipated that average and seasonal maximum temperatures will keep rising along with an overall increase in average rainfall. But the distribution of these effects won’t be uniform. By the end of the twenty-first century, there will probably be more drought and scarcity of water in existing arid areas.

Climate change is projected to contribute to and/or is already causing a global reduction in cereal yields, such as maize and wheat declining by 3.8% and 5.5% respectively. Several researchers warn that crop productivity will experience steep declines when temperatures exceed critical physiological thresholds for these crops. Smallholder farmers, including poor producers, the landless, and marginalized ethnic groups, are among the most vulnerable to the impacts of climate change ( CIAT & World Bank, 2017; Makate, 2019). Their livelihoods and food security are threatened by the reduced agricultural yields and disruptions to food systems caused by climate change. Climate change-induced extreme weather events and shocks can have long-lasting impacts by altering investment incentives, increasing the likelihood of low-risk, low-return ventures, and decreasing the chances of successful agricultural advancements. According to studies, the average yields of Zambia’s major crops, such as wheat, sorghum, and maize, are likely to be significantly affected by climate change, as the agronomic conditions for these crops may deteriorate across a significant portion of the country ( Molieleng et al., 2021; Chavula, 2022; Stahlbaumer et al., 2022).

Climate change-induced extreme events and shocks, such as droughts and floods, have a significant impact on crop production in Zambia and other Sub-Saharan African countries. However, due to the intricate nature of agricultural systems in Sub-Saharan Africa and their interrelation with the socio-economic aspects of smallholder farmers’ households, an integrated approach has been promoted to maximize productivity at the smallholder agricultural landscape and adapt to climate change. These approaches and interventions are termed ‘climate-smart agriculture (CSA)’ ( Makate, 2019; Odubote & Ajayi, 2020; Zakaria et al., 2020; Molieleng et al., 2021).

The integrated approach recognizes the complexity of agricultural systems in Sub-Saharan Africa and their interconnectedness with the socio-economic factors affecting smallholder farmers’ households ( Beedy et al., 2010). Due to adopting climate-smart agricultural practices, smallholder farmers can enhance productivity while simultaneously adapting to the impacts of climate change on their agricultural landscapes.

In Zambia, as farmers grappled with mounting economic pressures, environmental degradation, and climatic adversities towards the close of the 20th century, they turned to climate-smart agriculture (CSA) as a viable solution. The initial thrust of CSA practices was to enable smallholder farmers to sustain viable production levels, thereby securing their role as active participants in the agricultural landscape. The emergence of CSA was driven by the need to mitigate the deleterious impacts of climate change on smallholder farming communities. To bolster household resilience against climatic variability and rehabilitate degraded lands, the Zambian government has been spearheading efforts to promote the widespread adoption of CSA ( Ngoma et al., 2021). These endeavors have been facilitated through collaborations with regional, national, and global research and development institutions ( Ngoma et al., 2021). CSA encompasses a suite of practices, including conservation agriculture, integrated pest management, organic farming methodologies, sustainable agricultural techniques, integrated nutrient management, multi-cropping systems, and agroforestry approaches. The overarching objectives of these practices are to augment household incomes, enhance agricultural productivity, and cultivate climate resilience through judicious fertilizer application and sustainable land stewardship ( Newell et al., 2019).

Given the significance of climate-smart agriculture (CSA), the Zambian government has prioritized promoting climate-smart farming practices, such as organic farming, integrated pest management, agroforestry, conservation agriculture, and integrated agricultural practices, among others. These practices have become crucial components of extension and rural advisory service delivery. However, unlike previous empirical studies, this research investigates the factors influencing the adoption of climate-smart farming practices and their impact on crop production among smallholder farmers in Nyimba district, Zambia. This study deviates from earlier research by specifically examining the drivers behind the adoption of climate-smart agricultural techniques and their effects on crop yields among smallholder farmers in Nyimba district. By understanding these influences, policymakers and agricultural extension services can better tailor their efforts to facilitate the widespread adoption of CSA practices, ultimately enhancing the resilience and productivity of smallholder farming systems in the face of climate change.

1.1 Conceptual framework

In the face of changing climatic conditions and climate change, climate-smart agriculture (CSA) is an approach to transform and reorient agricultural systems to ensure food security ( Chavula, 2021). Climate change disrupts food markets, putting food supply and production at risk. Strengthening farmers’ adaptive capacity and enhancing the mitigation potential and efficiency of agricultural production systems can mitigate these risks. Smallholder farmers who are aware of climate change or perceive it as a reality are more likely to adopt climate-smart agricultural practices. These farmers aim to achieve the three pillars of CSA: improving household income and productivity, enhancing resilience and adaptation, and reducing greenhouse gas emissions. The adoption of climate-smart agriculture to attain these principles is influenced by institutional, cognitive, and socioeconomic factors ( Figure 1).

Figure 1. Conceptual framework based on adoption.

Figure 1.

2. Methods

2.1 Study area description

2.1.1 Location

The research was carried out in Nyimba district of Eastern Province Zambia. The district is situated 334 kilometers East of Lusaka Zambia’s national capital. In the South the district borders with Mozambique, North with Muchinga province, West with Lusaka province, and East with Petauke district. The district lies between latitude (13°30′1019″ and 14°55′81426″ South) and longitude (30° 48′5047″ and 31°48′20252′′East) ( Figure 2).

Figure 2. Map of study area.

Figure 2.

2.1.2 Climate, soil and topography

Zambia is divided into three agro-ecological zones: Zone I, Zone II (subdivided into IIa and IIb), and Zone III. Nyimba district falls within Zone I, which covers the Southern and Eastern rift valleys of the Zambezi and Luangwa River basins. This zone also extends to parts of the Western and Southern provinces in the south of Zambia. The average annual rainfall in Nyimba district ranges from 600 to 900 mm, with the wettest months being December to February and a distinct dry season from May to November. The annual mean temperature is 24.2°C, while the daily temperature range is from 10.3°C to 36.5°C ( Figure 3). Topographically, the district comprises hills and plateaus, with soils characterized as Lithosol-Cambisols, while in the valleys, the soils are classified as Fluvisol-Vertisols. The elevation varies from 450-1000 m at the bottom of the Luangwa River valley, extending to the plateau near the Nyimba district center and reaching even higher altitudes on the mountain tops in the western part of the district.

Figure 3. Mean annual rainfall and temperature for the study area.

Figure 3.

2.1.3 Vegetation type

The Miombo woodland is the most dominant formation and habitat type in Southern Africa ( Gumbo and Dumas-Johansen, 2021; Montfort et al., 2021). Miombo woodland is also the major forest type in Zambia itself, covering approximately 45% of the entire land surface ( Kalinda, 2008). Nyimba is located in the middle of the Miombo Ecoregion, a biome with a variety of flora types that is dominated by tree species from the Caesalpinioiae subfamily of leguminous plants ( Timberlake et al., 2010). Depending on the climate, soil, landscape position, and degree of disturbance, the ecoregion’s vegetation varies in composition and structure ( Timberlake et al., 2010; Halperin et al., 2016). Nyimba is located in the arid ecozone and is characterised by four types of plants: Dry miombo woodland (i.e., Brachystegia spiciformis, Brachystegia boehmii and Julbernardia globiflora), Mopane woodland ( i.e., Colophospermum mopane), Munga woodland ( i.e., Vechellia sp., Senegalia sp., Combretum sp., and trees associated with the Papilionoideae subfamily) and Riparian Forest ( i.e., mixed tree species).

2.1.4 Land use and farming systems

Nyimba district total land area is about 10,500 square-kilometers according to population and housing census of 2010. Therefore, 82% of the district population is agrarian with average household income. These households are farmers who are into mixed agriculture practices dominating the agricultural scene in the district. However, local smallholder farmers in the district practice some sort of shifting cultivation. Under this agricultural system, crops are grown in mounds and/or ridges in most cases maize. The major crops grown in include banana ( Musa sp.), maize ( Zea mays), finger millet ( Eleusine coracana), groundnuts ( Arachis hypogaea), haricot bean (Phaseolus vulgaris), cowpeas ( Vigna unguiculata spp.) and soybean ( Glycine max). Multiple cropping system is common among the farming households were cultivated land is on gently and moderately on steep slopes. The topography of the land in the district makes the agricultural or cultivation pattern different from other areas. Therein, cropping system is alongside livestock production such as cattle, goat, chickens, ducks and doves. Besides agricultural activities, farmers are engaged in charcoal production, timber, firewood supply and non-timber forest products (NTFPs) from the miombo woodland for household economic gain ( Policy Brief, 2016).

2.2 Site selection

Prior to the actual data collection, an exploratory study was conducted to gather essential information about the research area. The information gathered included the following: the distance between villages, the number of farming households per village, contact details for lead farmers, households adopting climate-smart agricultural (CSA) practices, the location of croplands, and the identification of central meeting points for focus group discussions (FGDs).

2.2.1 Sampling technique

This study utilized a multi-stage random sampling approach to recruit participants from smallholder farming communities in Zambia. These farming communities, known as agricultural camps, are designated by the Ministry of Agriculture of the Republic of Zambia. The camps group smallholder farmers’ residences within a district, facilitating easy access to agricultural extension services. From the eight agricultural camps in Nyimba District, four camps – Ndake, Central Camp, Lwende, and Ofumaya – were randomly selected for the study. These four camps collectively house 10,700 farmers. To determine an appropriate sample size, the study employed Slovin’s formula. Additionally, three villages from the four selected camps were randomly chosen for data collection. These villages were Sikwenda, Sichipale, Mawanda, Elina, Katumbila, Sichalika, Malalo, Mwenecisango, Mulivi, Lengwe, Mofu, and Yona. With a margin of error set at 0.05, the initial calculated sample size was 386 participants. However, to optimize resources, the researchers increased the margin of error to 0.1, resulting in a smaller sample size of 99 participants. Achieving this reduced sample size required additional time and financial investments, but it was a trade-off deemed necessary for the successful completion of the study.

Sample size formula: Slovin’s (1960) formula.

n=N1+Ne2
n=10700/(1+10700(0.12)
n=1070027.75n=99.07

Ultimately, the researchers opted for a compromise, settling on a sample size of 194 participants, which fell between the initial calculations of 99 (with a 0.1 margin of error) and 386 (with a 0.05 margin of error). With the assistance of agricultural camp officers, farmer registers from each selected village were utilized to randomly identify potential participants using an Excel spreadsheet.

2.2.2 Focus group discussion

In-depth information regarding the factors influencing the adoption of climate-smart agricultural practices, crop productivity, perceptions of these practices, the use of CSAPs, and perspectives of climate change was gathered through focused group discussions (FGD). An open-ended FGD study tool that was designed was used to achieve this. Due to the fact that delicate topics are revealed during the execution, focus groups are thought to be superior than one-on-one interviews. Individual farmers frequently find it difficult to completely express themselves in one-on-one interviews. Four (4) focus group discussions (FGDs) involving village headmen, women, men, and youth were conducted within the study region. The FGD meetings were arranged in convenient locations for individual farmers to attend. FGDs were mostly used to augment data that was gathered through household questionnaires.

2.3.3 Household interviews

There were both closed-ended and open-ended questions on the survey. The questionnaire was pre-tested six times for appropriateness (e.g., clarity, adequacy, and question sequence) prior to conducting the household interviews. The questionnaire was then modified based on the results. The questions were pre-tested on smallholder farmers’ homes who did not take part in the study.

For data collection, the study employed three enumerators who underwent training and supervision from the principal researcher, an experienced professional in the field. The enumerators meticulously verified and corrected the gathered data after each day of fieldwork. Subsequently, the validated information was securely backed up on the CSPRO Cloud platform ( https://www.csprousers.org/help/CSDeploy/deployment_options.html).

2.4 Variables specification

Outcome variables

The outcome variable for this study is the impact of adopting climate-smart agriculture practices on crop productivity among smallholder farmers’ households. Additionally, the study examines the factors influencing both crop productivity and the adoption of climate-smart agriculture practices (CSAPs) among smallholder farmers in the Nyimba district.

Dependent variables

Smallholder farmers’ household decision to adopt CSAPs

The dependent variable was whether a smallholder farmer’s household adopted Climate-Smart Agricultural Practices (CSAPs) or not, taking a value of 1 if the household adopted CSAPs and 0 if it did not. The main objective was to identify the factors influencing the adoption of CSAPs among smallholder farmers’ households in the Nyimba district of Zambia.

2.5 Propensity score matching

To evaluate the impact of Climate-Smart Agricultural Practices (CSAPs) on crop productivity, this study employed the Propensity Score Matching (PSM) method, comparing adopters and non-adopters. PSM is a statistical technique that adjusts for confounding variables across a sample population, enabling more accurate estimation of treatment effects. As outlined by Caliendo and Kopeinig (2008), the implementation of PSM involves several key steps: first, estimating propensity scores using a binary model; second, selecting an appropriate matching algorithm; third, verifying the common support condition; and fourth, assessing the quality of the matching between the treatment and control groups. The following are the steps involved in PSM:

Step 1: Model Specification

The logistic model was chosen for this study due to the robustness of its parameter estimations, which stems from the assumption that the error term in the equation follows a logistic distribution ( Baker and Melino, 2000; Ravallion, 2007). Therefore, the Logit model was used to estimate the probability of smallholder farmers’ adoption of CSAPs allotted to socio-economic, agro-ecological and institutional characteristics. Therein, a dependent variable considered a value of 1 for CSAPs adoption and 0 for non-CSAPs adopters.

Pi=P(Y=1|X) (1)

In line with Pindyck and Rubinfeld (1981), the cumulative logistic probability function is specified as follows;

Pi=F(Zi)=F[a+i=1mβiXi]=[11+e(a+βiXi)] (2)

where e represents the base of natural logs, X i represents the i th explanatory variable, P i the probability that a household adopted CSAPs, α and β i are parameters to be estimated.

Expressing the logistic model in terms of odds and log-odds aids in interpreting the coefficients ( Gujarati, 1995). The odds ratio quantifies the relative probability of an individual participating ( P i) versus not participating (1- P i). The probability of non-participation can be calculated as:

(1Pi)=11+ezi (3)
(Pi1+Pi)=[1+ezi1+ezi]=ezi (4)

Alternatively,

(Pi1+Pi)=[1+ezi1+ezi]=e[a+BiXi] (5)

Taking the natural logarithms of equation (3.5) will give the logit model as indicated below.

Zi=ln(Pi1Pi)=a+B1X1i+B2X2i+BmXmi (6)

If consider a disturbance term, μ i, the logit model becomes

Zi=a+t=1mBtXti+μi

So, the binary logit will become:

Pr(pp)=f(X) (7)

Where pp is CSAPs adoption, f( X) is the dependent variable project participation and X is a vector of observable covariates of the households. The dependent variable will take a value of 1 for CSAPs adoption and 0 for non-adopters.

In addition to the estimated coefficients, the marginal effects of the change in the explanatory variables on the probability of CSAPs adoption are also estimated. The interpretation of these marginal values will be dependent on the unit of the measurement for explanatory variables.

When an explanatory variable is binary, the marginal effects provide a reasonable estimate of the change in the likelihood of the outcome variable (Y = 1) evaluated at representative values of the regressors, such as their means.

Step 2: Identifying the Common Support Region and Conducting Balancing Tests

The region where the propensity score distributions of the treatment and comparison groups overlap is known as the area of common support. This needs to be identified. However, if there is a systematic difference in the observed characteristics between the dropped non-adopters of CSAPs and the retained non-adopters, sampling bias may still occur. These differences should be closely monitored to aid in the interpretation of the treatment effect. Furthermore, balancing tests can be conducted to check if the mean of the covariates (X) and the average propensity score are equal within each quantile of the propensity score distribution.

For PSM to be effective, the treatment and comparison groups must be well-balanced based on their observed covariates (X), as similar propensity scores are derived from similar observed characteristics. Achieving balance necessitates that the covariate distributions of the treated and untreated units are indistinguishable. Formally, this requires verifying that the conditional distributions P(X|T=1) and P(X|T=0) are equivalent. Here’s a version with reduced similarity:

Step 3: Matching adopters to non-adopters

Selecting an available data matching algorithm is the third stage. Selecting control subjects who are matched to treated subjects based on context factors that the investigator feels should be tracked is a standard process known as matching. A different one might use comparable criteria. according to propensity score, divide adopters against non-adopters. Kernel-based matching (KBM), radius matching (RM), and closest neighbour matching (NN) are the most often used matching algorithms.

Step 4: Matching quality

Matching quality tests could be conducted in the fourth step. Whether or whether the matching method can balance the distribution of different variables is determined by checking for matching, irrespective of quality. If there are discrepancies, it could be a sign of insufficient matching, and corrective action is advised ( Caliendo & Kopeinig, 2008). The next action is to determine if the treatment caused a difference in the impact indicators.

The difference between the mean outcome of matched adopters and nonadopters with common support conditional at the propensity score provides the average treatment effect at the treated (ATT).

Step 5: Sensitivity analysis

Lastly, to verify the strength of the conditional independence assumption, a sensitivity analysis will be performed. Sensitivity analysis will also be used to examine whether the influence of an unmeasured variable on the decision-making process is significant enough to compromise the matching strategy ( Ali & Abdulai, 2010). The sensitivity analysis (r-bounds test) will be performed using the Rosenbaum bound sensitivity test.

2.6 Ethical clearance

The study was conducted by the researcher and two supervisors, adhering to principles of integrity, objectivity, openness, respect for research participants, respect for intellectual property, confidentiality, informed consent, fidelity, and honesty. The researcher and supervisors take full responsibility for their actions and publications, ensuring that all agreements are intended to be upheld. The study was approved by the University of Zambia Directorate of Research and Graduate Studies (NASREC) on March 18, 2024, and is registered under NASREC IRB No. 00005465 (IORG No. 0005376). The principal researcher provided a written consent form for research participants to participate in the household survey, conforming to the research ethics guidelines of the University of Zambia and Haramaya University.

3. Results and discussion

3.1 Effect of climate-smart practices on crop productivity among smallholder farmers, in Nyimba, Zambia

Characteristics of the participant smallholder farmers

The household survey consisted of 194 randomly selected smallholder farmers from the research area. These farmers were interviewed about their crop production and the application of various Climate-Smart Agriculture (CSA) practices. The study presents the findings of the household survey, beginning with the demographic characteristics of the participants ( Table 1), followed by sections on crop production and productivity, adoption of CSA practices, constraints on the adoption of CSA practices, effects of CSA practices on crop productivity, and factors affecting crop productivity. A total of 339 field plots of various crops were surveyed from the 194 farmer participants. Table 2 provides detailed demographic and socio-economic data on the respondents. The mean age was 46 years (standard deviation: 14.59), and the majority of households (62.18%) were male-headed, with 69.43% of respondents being married. The mean years of formal education were 5.49 (standard deviation: 3.5), and the mean years of farming experience were 26.22 (standard deviation: 15.55). Respondents had lived in the area for an average of 30.92 years (standard deviation: 18.68). The average family size was 5.42 (standard deviation: 2.14). The average total annual income was K5,472.68 (USD 331.68, at an exchange rate of K16.5 per USD), with a standard deviation of 7,626.52. Additionally, 57.51% of respondents reported participating in off-farm activities. Regarding agricultural practices, 78.76% used improved seed varieties, and the average farm size was 3.396 hectares (standard deviation: 3.363). All land was under customary tenure (100%), with the mean cultivated land being 1.83 hectares (standard deviation: 1.45). On average, smallholder farmers grew two different crops, with a standard deviation of 0.930.

Table 1. Independent variables of the study.

Variable name Description Measurement Expected sign
Continuous variables
Age Years of household head Continuous +
Household size Household number of people Continuous +
Income Household average income (ZMK) Continuous +
Fertilizer Amount of fertilizer applied (kg) Continuous +
Education Number of years in school Continuous +
Farmland size Size of farmland Continuous -
Experience Household head farming experience Continuous +
TLU Tropical livestock unit Continuous +
Dummy variables
Sex Gender of household head (1=Male, 0=Female) Dummy +
Information Access to climate information (1=Yes, 0=Otherwise) Dummy -
Marital status Household head if married (1=Yes, 0=Otherwise Dummy +
Credit Household access to credit (1=Yes, 0=Otherwise) Dummy +
Extension Access to extension services (Yes=1, 0=Otherwise) Dummy -

Table 2. Independent variables of the study.

Variable name Description Mean St. Dev %
Continuous variables
Age Years of household head 46.18 14.59 -
Household size Household number of people 5.42 2.14 -
Income Household average income (ZMK) 5472.69 7626.52 -
Living Years of living in an area 31.00 18.68 -
Education Number of years in school 5.49 3.50 -
Farmland size Size of farmland 3.40 3.36 -
Experience Household head farming experience 26.22 15.55 -
Cultivated land Cultivated land in hectares (2021/2022) 1.83 1.45 -
Crops Number of crops planted (2021/2022) 2 0.93 -
Dummy variables
Sex Gender of household head (1=Male, 0=Female) - - 62.18%
Information Access to climate information (1=Yes, 0=Otherwise) - - 23.14 %
Marital status Household head if married (1= Yes, 0=Otherwise - - 69.43%
Credit Household access to credit (1=Yes, 0=Otherwise) - - 26.71%
Extension Access to extension services (Yes=1, 0=Otherwise) - - 1.8%
Off-farm Participation in off-farm activities (Yes=1, 0=Otherwise) - - 57.51%
Improved seed Adoption of improved maize variety (Yes=1, 0=Otherwise) - - 78.76%
Land tenure Land tenure system (1=Customary, 0=State) - - 100%

Crops grown by smallholder farmers

Regarding the crops that the farmers grew, the study discovered that the most common crop was maize, which was recorded in 194 crop plots. Groundnuts were reported in 99 plots, sunflower in 69 plots, and soy beans in 16 plots. ( Table 2). It was said that the other crops—cowpea, sweet potatoes, millet, cotton, and bambara nuts—were produced in small plots.

Climate-smart agriculture practices adopted by smallholder farmers

The study’s findings shed light on the adoption of various conservation agriculture techniques across the surveyed field plots. Among these practices, pot-holing (basin) emerged as the most widely implemented method, with 61 plots (17.99%) employing this technique. Closely following was multi-cropping, which was practiced on 50 plots, accounting for 14.75% of the total. Minimum tillage, a soil conservation approach, was utilized on 34 plots, representing 10.03% of the survey sample. The ripping technique, which involves creating furrows in the soil, was observed on 32 plots (9.44%). Furthermore, 18 plots (5.31%) incorporated crop rotation as a means of maintaining soil fertility and controlling pests and diseases. The application of manure, a natural fertilizer, was recorded on 11 plots (3.24%), while alley cropping, a system that combines crops with trees or shrubs, was adopted on 9 plots (2.65%) ( Table 3). It is noteworthy that the remaining conservation agriculture techniques were tested on fewer than 10 plots each, indicating their relatively limited implementation within the surveyed area.

Table 3. Crops grown by smallholder farmers.

Crops Grown Frequency Percent Cumulative
Maize 194 50.13 50.13
Soybeans 16 4.13 54.26
Groundnuts 99 25.58 79.84
Cowpea 2 0.52 80.36
Bambara nuts 2 0.52 80.88
Sunflower 69 17.83 98.71
Cotton 1 0.26 98.97
Sweet potatoes 3 0.78 99.74
Millet 1 0.26 100
Total 387 100

Number of climate smart agriculture practices adopted by smallholder farmers

The study’s findings, as presented in Table 4, shed light on the extent of conservation agriculture (CSA) practice adoption among the surveyed plots. Notably, a substantial number of plots, 167 (49.26%), did not incorporate any CSA techniques whatsoever. This highlights a significant gap in the implementation of sustainable agricultural practices within the surveyed area. On the other hand, a considerable portion of the plots, 123 (36.28%), had adopted at least one CSA practice, indicating a positive step towards embracing more environmentally friendly farming methods. Additionally, 4 plots (12.68%) had implemented two different CSA practices simultaneously, demonstrating a more comprehensive approach to sustainable agriculture. Interestingly, the data revealed that a smaller number of plots had adopted multiple CSA techniques concurrently. Specifically, four plots had incorporated three distinct CSA practices, while one plot had implemented an impressive four different CSA practices. Furthermore, another plot stood out by adopting a remarkable five separate CSA techniques. Despite these instances of multiple CSA practice adoption, the overall findings suggest that the majority of farmers within the surveyed area were either not implementing any CSA techniques or had adopted only a single practice. This observation underscores the potential for further education and awareness-raising efforts to encourage the widespread adoption of multiple sustainable agricultural practices, ultimately contributing to improved soil health, crop productivity, and environmental conservation.

Table 4. Climate-smart agriculture practices adopted by smallholder farmers.

CSA Practices Frequency Percent
Ripping 32 9.44
Basin 61 17.99
Crop rotation 18 5.31
Crop residue 2 0.59
Alley cropping 9 2.65
Multi cropping 50 14.75
Contour ploughing 6 1.77
Compost 5 1.47
Manure field 11 3.24
Zero tillage 34 10.03
Bunding 2 0.59

Quantities harvested for various crops (kg)

The survey data presented in Tables 5, 6 offers valuable insights into the crop cultivation patterns and yield outcomes among the surveyed farming community. Notably, the crops that emerged as the most prevalent choices among farmers were soybeans, maize (corn), groundnuts, and sunflowers. Across all crop types, the average harvest weight recorded was 1223.51 kg, accompanied by a substantial standard deviation of 1442.82. This variation in yields highlights the diverse factors that can influence agricultural productivity, including soil conditions, farming practices, environmental variables, and access to resources. When examining the individual crop yields, maize stood out as a prominent crop, with an impressive average harvest weight of 1766.57 kg. However, the high standard deviation of 1594.23 suggests significant variations in maize yields among farmers, potentially attributable to differences in cultivation techniques, seed quality, or localized environmental conditions. Groundnuts, a staple crop in the region, exhibited an average harvest weight of 511.08 kg, with a standard deviation of 605.07. This relatively lower yield, coupled with the substantial variation, may indicate challenges faced by farmers in optimizing groundnut production, such as pest or disease pressures, or limitations in access to appropriate inputs and knowledge. Sunflowers, a valuable oilseed crop, yielded an average harvest weight of 609.67 kg, with a standard deviation of 513.02. While the average yield appears moderate, the substantial variation observed could be attributed to factors like soil fertility, water availability, or sunflower variety selection. Notably, soybeans emerged as a crop with significant yield potential, boasting an average harvest weight of 1007.5 kg. However, the remarkably high standard deviation of 1835.615 points to substantial disparities in soybean yields among individual farmers. This variability may stem from differences in cultivation practices, access to quality seeds, or the adoption of specific agricultural techniques tailored for soybean production. These findings not only underscore the crop preferences of the surveyed farmers but also highlight the need for targeted interventions and support measures to address the observed yield variations. By identifying and addressing the underlying factors contributing to these disparities, efforts can be made to enhance agricultural productivity, promote sustainable farming practices, and ultimately improve the livelihoods of smallholder farmers in the region.

Table 5. Number of climate smart agriculture practices adopted by smallholder farmers.

No._CSA_Adopted/Plot Freq. Percent Cum.
0 167 49.26 49.26
1 123 36.28 85.55
2 43 12.68 98.23
3 4 1.18 99.41
4 1 0.29 99.71
5 1 0.29 100
Total 339 100

Table 6. Quantities of crops harvested.

Variable Obs Mean Std. Dev. Min Max
All Crops 339 1223.51 1442.82 50 9450
Maize 173 1766.57 1594.23 165 9450
Groundnuts 85 511.08 605.07 50 3450
Sunflower 61 609.6721 513.0212 50 2800
Soya beans 14 1007.5 1835.615 200 7245

Productivity of various crops (Yield (kg) per hectare)

The study’s findings shed light on the crop productivity levels observed among the surveyed farming communities. Considering the overall yield across all crop types, the average yield per hectare stood at an impressive 1316.60 kg, although the substantial standard deviation of 1214.13 suggests significant variations in individual yields ( Table 7). Focusing specifically on maize, a crucial staple crop, the mean yield per hectare was calculated to be 1682.52 kg. However, the high standard deviation of 1325.87 indicates substantial disparities in maize yields among farmers, potentially influenced by factors such as soil fertility, farming practices, and environmental conditions. Groundnuts, another important crop in the region, exhibited an average yield of 822.90 kg per hectare, accompanied by a standard deviation of 547.88. This variation in yields could be attributed to challenges faced by farmers in optimizing groundnut production, including pest or disease pressures, access to quality inputs, or knowledge gaps. Sunflower cultivation yielded an average of 962.79 kg per hectare, with a relatively lower standard deviation of 437.38, suggesting more consistent yields among farmers. This could be a result of better-adapted cultivation practices or more uniform environmental conditions suitable for sunflower growth. Soybeans, a valuable crop with growing demand, recorded an average yield of 808.40 kg per hectare. The standard deviation of 426.74 indicates moderate variations in soybean yields, which could be influenced by factors such as seed quality, planting techniques, or soil management practices. These findings not only provide insights into the productivity levels of various crops but also highlight the need for targeted interventions and support measures to address the observed yield variations. By identifying and addressing the underlying factors contributing to these disparities, efforts can be made to enhance agricultural productivity, promote sustainable farming practices, and ultimately improve the livelihoods of smallholder farmers in the region.

Table 7. Productivity of various crops (yield (kg) per hectare).

Yield per hectare (Kg) Obs Mean Std. Dev. Min Max
All Crops 339 1316.60 1214.13 106.67 11630.67
Maize 173 1682.54 1325.87 119.00 11630.67
Groundnuts 85 822.9003 547.8818 106.6667 2500
Sunflower 61 962.7869 437.3807 300 2000
Soya beans 14 808.4048 426.7391 200 1740

Impact of climate-smart practices on crop productivity among smallholder farmers

The study examined the impact of Climate-Smart Agriculture (CSA) techniques on the crop yields of smallholder farmers. It was found that farmers who adopted CSA practices experienced a 20.20% higher crop yield compared to those who did not adopt these practices ( Table 8). The difference was statistically significant, with a p-value of 0.027 ( p < 0.05). These results suggest that the adoption of CSA practices leads to increased crop yields.

Table 8. Impact of climate-smart practices on crop productivity among smallholder farmers.

Treatment-effects estimation          Number of Obs = 194
Estimator: propensity-score matching      Matches: requested = 1
Outcome model: matching           min = 1
Treatment model: logit             max = 2
log_yield Coef. AI Robust Std. Err. Z P>z [95% Conf. Interval]
ATE
CSA_Practice
(Adopters vs Non_Adopters) .2019652 .0911943 2.21 0.027 ** .0232276–.3807028

Where, CSA = climate-smart agriculture, ATE = average treatment effect, Significance codes:

***

<1%,

**

<5% and

*

<10%; Author’s calculation using Stata 15MP.

Impact of climate-smart practices on maize productivity among smallholder farmers

The study utilized propensity score matching analysis to specifically assess the impact of CSA on maize productivity ( Table 9). The findings indicated that CSA adoption led to a 21.50% increase in maize yield compared to non-adoption. This significant increase in maize yield, with a p-value of 0.035 ( p < 0.05), demonstrates the positive effect of CSA practices on maize productivity.

Table 9. Impact of climate-smart practices on maize productivity among smallholder farmers.

Treatment-effects estimation          Number of Obs = 194
Estimator: propensity-score matching      Matches: requested = 1
Outcome model: matching           min = 1
Treatment model: logit            max = 1
log_yield Coef. AI Robust Std. Err. Z P>z [95% Conf. Interval]
ATE
CSA_Practice
(Adopters vs Non_Adopters) 0.215012 0.101795 2.11 0.035 ** 0.015496–0.414527

Where, CSA = climate-smart agriculture, ATE = average treatment, Significance codes:

***

<1%,

**

<5% and

*

<10%; Authors’calculation using Stata 15MP.

Factors affecting smallholder farmers’ adoption of climate-smart agricultural

The study employed logistic regression analysis to examine the factors influencing the adoption of Climate-Smart Agricultural (CSA) practices among farmers. The findings revealed that age played a pivotal role, with older farmers being more inclined to embrace sustainable agricultural methods. Specifically, the results indicated a statistically significant positive relationship between age and the adoption of CSA practices, with a p-value of 0.0000 ( p < 0.001). Farmers within the age groups of 40-55 years and above 55 years were found to have a higher rate of adopting CSA practices in the study area. Interestingly, the research uncovered an inverse correlation between prior farming experience and the willingness to implement climate-smart farming techniques. Contrary to expectations, farmers with more years of experience in the agricultural sector were less likely to adopt CSA practices, a finding that was statistically significant at a p-value of 0.0000 ( p < 0.001). Income level was also identified as a significant factor, with a positive relationship between higher income and the adoption of CSA practices. This relationship was statistically significant at a p-value of 0.0640 ( p < 0.1) ( Table 10). This finding aligns with Zakaria et al. (2020), who demonstrated that factors such as experience in rice cultivation, access to media and training, and perceived decrease in rainfall quantity positively influenced the adoption of climate-smart agricultural technologies. Conversely, larger farm sizes, greater distances between farmers’ homes and farm sites, location, and reported temperature rises were found to hinder the adoption of these technologies. While the present study highlighted age and income as facilitators of CSA adoption, it contrasted with previous research by Saha et al. (2019), which identified factors like education, occupation, family size, farm size, climate change adaptation techniques, cattle ownership, market accessibility, information access, training, organizational affiliations, and climate change perceptions as influential determinants. This suggests that while higher income levels facilitate the adoption of CSA practices, other factors such as farm size, accessibility, and perceived climatic changes can pose challenges to the adoption of these technologies.

Table 10. Factors affecting smallholder farmers’ adoption of climate-smart agricultural practices.

Logistic regression                   Number of Obs = 194
                           Wald chi 2(10) = 27.34
                           Prob > chi 2 = 0.0112
Log pSeudolikelihood = -204.0124             Pseudo R 2 = 0.0965
CSA_Practice Coef. Robust Std. Err. z P>z [95% Conf. Interval]
Age 0.085697 *** 0.0222 3.8600 0.0000 0.0422–0.1292
Gender 0.017260 * 0.4056 0.4400 0.0660 0.7776–0.8122
Marital_status -0.178756 0.1399 -1.2800 0.2010 -0.4530–0.0955
Education -0.051048 0.0387 -1.3200 0.1870 -0.1270–0.0249
Farming_experience 0.087116 *** 0.0200 -4.3600 0.0000 -0.1263–-0.0480
Household_size -0.027906 0.0658 -0.4200 0.6720 -0.1569–0.1011
Income 0.000035 * 0.0000 1.8500 0.0640 0.0000–0.0001
Fertilizer 0.000727 0.0007 1.1200 0.2630 -0.0005–0.0020
Farm_size -0.02006 ** 0.0449 -0.4500 0.0050 -0.1082–0.0680
Livestockqt 0.006734 * 0.0083 0.8100 0.0180 -0.0230–0.0095
Credit_access -0.150782 0.2405 -0.6300 0.5310 -0.6221–0.3205
Access_to_climate_inform -0.44108 ** 0.5920 -0.7500 0.0060 -1.6014–0.7192
Extension_services -0.018090 0.2964 -0.0600 0.9510 -0.5989–0.5628
_cons -0.416121 1.0016 -0.4200 0.6780 -2.3792–1.5470

Significance codes:

***

<1%,

**

<5% and

*

<10%; Author’s calculation using Stata 15MP.

This study revealed several intriguing findings regarding the factors influencing the adoption of climate-smart agricultural practices among farmers. Gender played a significant role, with a p-value of 0.0660 ( p < 0.1), indicating that the gender of the farmer had a notable impact on the likelihood of embracing sustainable farming methods.

Interestingly, farm size exhibited an inverse relationship with the adoption of climate-smart practices, as evidenced by the negative significant effect observed at a p-value of 0.0050 ( p < 0.01). This suggests that farmers with larger landholdings were less inclined to implement these environmentally-friendly agricultural techniques.

On the other hand, livestock quantity emerged as a positive driving force, exerting a significant influence on the adoption of climate-smart agriculture with a p-value of 0.0180 ( p < 0.1). Farmers with more substantial livestock holdings were more likely to adopt these sustainable practices, potentially due to the perceived benefits or increased resources associated with livestock ownership.

Notably, access to climate information had an unexpected negative impact on the adoption of climate-smart agriculture, with a p-value of 0.0060 ( p < 0.01). This counterintuitive finding raises questions about the effectiveness of climate information dissemination and the potential barriers that may hinder its translation into practical implementation. These findings align with the research conducted by Kurgat et al. (2020), which highlighted female ownership of farm assets, farm location, and household resources as critical determinants of climate-smart agricultural adoption in Tanzania. Similarly, Aryal et al. (2018) concluded that various factors, including household characteristics, market access, and primary climate hazards, influenced the probability and level of implementing different climate-smart practices among smallholder farmers. However, in contrast, a study by Abegunde et al. (2019) found that marital status, education level, fertilizer use, credit access, and access to extension services did not significantly impact the adoption of climate-smart agricultural practices. This divergence in findings underscores the complex interplay of factors influencing the embracement of sustainable agricultural methods and the potential variations across different contexts and regions.

Factors affecting smallholder farmers’ crop productivity

To identify the variables influencing agricultural yield, the study conducted a Cobb-Douglas production analysis ( Table 11). The findings demonstrated that income has a positive and significant effect on agricultural productivity; specifically, productivity increases by 0.002% as farmers’ income levels rise. This relationship is statistically significant, with a p-value of 0.0040 ( p < 0.01). According to a study by Urgessa (2015), the land-labor ratio, the use of pesticides and fertilizers, the amount of manure used, and household size are the main factors affecting agricultural labour and crop productivity. WenJing et al. (2021) examined income disparities across household quartiles and found that while middle-class and upper-middle-class households may benefit more from renting out their farmland, households with high on-farm incomes are less likely to expand their farm size through farmland rental. Fertilizer use significantly improved crop productivity, with crop yield increasing by 0.12% for every unit increase in fertilizer use. This relationship was statistically significant, with a p-value of 0.0000 ( p < 0.001). Additionally, Du et al. (2020) demonstrated that long-term applications of synthetic fertilizers and manure enhance soil productivity and crop yields.

Table 11. Factors affecting smallholder farmers’ crop productivity.

Linear regression                    Number of Obs = 194
                           F(9, 179) = 11.05
                           Prob > F = 0.0000
                           R-squared = 0.6441
                           Root MSE = 0.74495
log_yield Coef. Robust Std. Err. t P>t [95% Conf. Interval]
Age -0.00192 0.0051 -0.3700 0.7090 -0.0120–0.0082
Gender 0.03854 0.1126 0.3400 0.7320 -0.1830–0.2601
Marital_status 0.00755 * 0.0379 0.8410 0.0220 -0.0821–0.0670
Education 0.00980 * 0.0122 0.8000 0.0420 -0.0338–0.0142
Farming_experie~e 0.00434 0.0049 0.8800 0.3770 -0.0053–0.0140
Household_size 0.02308 ** 0.0181 1.2800 0.0012 -0.0586–0.0124
Income 0.00002 ** 0.0000 2.9400 0.0040 0.0000–0.0000
Fertilizer 0.00123 *** 0.0002 8.1300 0.0000 0.0009–0.0015
Farm_size -0.06518 *** 0.0145 -4.4900 0.0000 -0.0938–-0.0366
Livestockqt 0.00863 *** 0.0018 4.7900 0.0000 0.0051–0.0122
CSA_Practice 0.13490 * 0.0747 1.8100 0.0720 -0.0120–0.2818
Credit_access -0.11707 0.0741 -1.5800 0.1150 -0.2629–0.0287
Access_to_climate Inform -0.15234 0.1974 -0.7700 0.4410 -0.5408–0.2361
Extension_services 0.04293 0.0846 0.5100 0.6120 -0.1236–0.2094
__cons 7.19355 0.3095 23.2400 0.0000 6.5845–7.8026

Significance codes:

***

<1%,

**

<5% and

*

<10%; Author’s calculation using Stata 15MP.

The study unveiled a complex interplay of factors influencing crop productivity among smallholder farmers. Notably, farm size exhibited an inverse relationship, with larger landholdings leading to a 6.52% decrease in crop yields. This counterintuitive finding may be attributed to factors such as resource constraints, management challenges, or diminishing returns associated with larger land areas. In contrast, livestock quantity emerged as a significant driver of crop productivity, with each additional unit of livestock owned contributing to an 0.86% increase in crop yields. This statistically significant effect, with a p-value of 0.0001 ( p<0.001), highlights the synergistic relationship between livestock and crop cultivation. Livestock not only provide valuable manure and animal draught power but also serve as a source of income that can be reinvested in technologies that enhance crop production capabilities ( Anderson, 1989; Beedy et al., 2010). Remarkably, the adoption of climate-smart agricultural (CSA) practices was found to have a profoundly favorable impact on crop productivity. When an additional farmer implemented these sustainable farming methods, the average yield among farmers improved by a staggering 13.49%, a statistically significant effect with a p-value of 0.0720 ( p < 0.1). This finding underscores the potential of CSA practices to boost crop yields and contribute to overall agricultural productivity while promoting environmental sustainability. Corroborating these results, the study by Mujeyi et al. (2021) also demonstrated that the adoption of climate-smart agriculture significantly contributed to increased crop yields among smallholder farmers operating within an integrated crop-livestock system. This alignment across different research contexts reinforces the potential benefits of embracing sustainable agricultural practices and highlights the importance of an integrated approach. Furthermore, the study explored the impact of demographic characteristics on crop productivity. While marital status and the education level of the household head exhibited modest contributions of 0.07% and 0.098%, respectively, household size played a more significant role, contributing 0.2% to smallholder farmers’ crop productivity. These findings resonate with the research conducted by Serote et al. (2021), which highlighted the influence of smallholder farmers’ household demographics and institutional characteristics on the adoption of climate-smart agriculture and, consequently, crop productivity. This convergence of results across multiple studies underscores the complex interplay of factors that shape agricultural outcomes and the potential for targeted interventions to enhance productivity and sustainability. By addressing key drivers such as farm size, livestock integration, adoption of climate-smart practices, and demographic considerations, policymakers and development organizations can develop tailored strategies to support smallholder farmers in achieving improved crop yields while promoting environmental resilience.

3.2.1 Climate-smart practices impact on crop productivity

The study aimed to assess the impact of implementing Climate-Smart Agricultural (CSA) practices on crop productivity among smallholder farmers in the Nyimba district of Zambia. Additionally, it sought to identify the factors influencing the adoption of CSA practices and crop production among smallholder farmers in the region. The data analysis revealed that the crop yields of smallholder farmers who adopted CSA practices were 20.20% higher than those of non-adopters. Furthermore, the study found that smallholder farmers who adopted CSA practices experienced a 21.50% increase in maize yield compared to those who did not adopt these practices. These findings clearly demonstrate that the implementation of climate-smart farming methods can significantly boost crop productivity for smallholder farmers. By adopting CSA practices, smallholder farmers have the potential to substantially increase their crop yields, thereby enhancing their agricultural productivity and food security.

Several studies have investigated the impact of Climate-Smart Agricultural (CSA) practices on crop productivity, food security, and soil quality. Abegunde et al. (2022) conducted a study on the effect of CSA on household food security among 327 smallholder farmers in Nigeria, using binary and multinomial logistic regression models. Their findings revealed that the adoption of CSA practices significantly and favorably affected household food security. Additionally, agricultural revenue and income from non-farm sources positively influenced household food security. In a similar vein, Mossie (2022) assessed the impact of CSA technology, specifically wheat row planting, on productivity in Southern Ethiopia using propensity score matching. The study found that row planting had a favorable and significant effect on productivity, with adopters producing 1368 kg of wheat per hectare more than non-adopters, highlighting the positive impact of this CSA practice on yield. Tadesse et al. (2021) examined the impact of CSA practices in Ethiopia on soil carbon, crop productivity, and fertility. Their results demonstrated a 30–45% higher yield under CSA practices compared to the control ( p < 0.05). Furthermore, CSA interventions slightly increased soil pH and significantly increased plant-available total nitrogen and phosphorus by 2.2–2.6 and 1.7–2.7 times, respectively, compared to the control. This study highlights the potential of CSA practices to enhance crop yield and nutrient availability, contributing to the resilience of resource-poor farmers in the face of climate change. Kichamu-Wachira et al. (2021) also reported similar findings on the positive effects of CSA practices on crop yields, soil carbon, and nitrogen pools in Africa. Their study concluded that CSA practices represent an advanced agricultural technology compared to conventional farming, enhancing food production while promoting climate mitigation and soil quality. Moreover, Amadu et al. (2020) found that 53% of CSA adopters among 808 smallholder farmers’ households in southern Malawi experienced increased maize yields during the drought year of 2016. Similarly, Fentie and Beyene (2019) revealed a significant positive impact of CSA adoption on crop yield per hectare using a propensity score matching model. These studies collectively highlight the potential of CSA practices to enhance crop productivity, food security, and soil quality, contributing to the resilience of smallholder farmers in the face of climate change and variability.

Conclusion

The study shows that a number of factors, including the amount of education held by farmers, the size of their households, the use of fertiliser, the age and gender of the household head, their farming experience, whether or not they own livestock, their annual household income, the size of their farmland, their access to climate-related information, and their level of farming experience, all have a significant impact on the adoption of climate-smart agriculture practices and crop productivity among smallholder farmers in Zambia’s Nyimba district. These elements work together to influence the decision-making procedures, methods for allocating resources, and ability of smallholder farmers to apply sustainable farming practices. It is advised to improve educational and training programs geared towards smallholder farmers, emphasising climate-smart techniques, sustainable land management practices, and efficient resource utilisation, to address the obstacles and promote adopting climate-smart agriculture practices. Furthermore, farmers will be able to make educated decisions and modify their agricultural methods if information relating to climate change is made timely and accessible through improved channels of distribution. Improving smallholder farmers’ access to vital resources is critical to promoting the adoption of climate-smart practices and raising crop yield. These resources include enhanced seed varieties, financial facilities, and agricultural inputs. Encouraging diversification techniques, like combining crop farming with animal raising, can boost household income and resilience.

In addition, it is critical to improve agricultural extension services by offering smallholder farmers information, guidance, and technical assistance, especially concerning climate-smart agricultural methods and sustainable land management. Achieving successful adoption also requires addressing gender gaps by empowering women farmers through decision-making processes, education, and resource availability. Farmer organisations and cooperatives can be formed to improve access to resources and markets, information exchange, and group action. To sum up, further support for sustainable agricultural development can be provided by creating and enacting laws and policies that promote the use of climate-smart farming methods. Examples of these include tax breaks, subsidies, and payments for ecosystem services.

Ethics and consent

The study was approved by the University of Zambia Directorate of Research and Graduate Studies (NASREC) on March 18, 2024, and is registered under NASREC IRB No. 00005465 (IORG No. 0005376). The principal researcher provided a written consent form for research participants to participate in the household survey, conforming to the research ethics guidelines of the University of Zambia and Haramaya University.

Author contributions

Authors contributed in the following ways: “Conceptualization, C.P. and F.S.; methodology, C.P.; software, C.P.; validation, S.C., F.S.; formal analysis, C.P.; investigation, C.P.; resources, S.M.; data curation, C.P.; writing—original draft preparation, C.P.; writing—review and editing, S.M.; supervision, F.S. and S.C. All authors have read and agreed to the published version of the manuscript.” Authorship must be limited to those who have contributed substantially to the work reported.

Acknowledgments

The authors express their sincere gratitude for the invaluable funding support provided by the World Bank through the African Centre of Excellence for Climate Smart Agriculture and Biodiversity Conservation Management. This generous financial assistance played a crucial role in making this important work possible, enabling the researchers to undertake their vital endeavors and contribute to the advancement of knowledge in this critical domain.

Funding Statement

The author(s) declared that no grants were involved in supporting this work.

[version 1; peer review: 1 approved with reservations

Data availabity statement

Underlying data

Zenodo: Adoption of Climate-Smart Agricultural Practices and Its Impact on Crop Productivity: A Case Study of Smallholder Farmers in Nyimba District, Zambia [Data set]. Zenodo. https://doi.org/10.5281/zenodo.11258819 ( Chavula, P., et al., 2024)

This project contains the following underlying data:

Data are available under the terms of the Creative Commons Attribution 4.0 International

References

  1. Abegunde VO, Sibanda M, Obi A: The dynamics of climate change adaptation in sub-Saharan Africa: A review of climate-smart agriculture among small-scale farmers. Climate. 2019;7(11). 10.3390/cli7110132 [DOI] [Google Scholar]
  2. Abegunde VO, Sibanda M, Obi A: Effect of climate-smart agriculture on household food security in small-scale production systems: A micro-level analysis from South Africa. Cogent Social Sciences. 2022;8(1):2086343. 10.1080/23311886.2022.2086343 [DOI] [Google Scholar]
  3. Alfani F, Arslan A, McCarthy N, et al. : Climate-change vulnerability in rural Zambia: the impact of an El Niño-induced shock on income and productivity. ESA Working Paper. 2019.
  4. Ali A, Abdulai A: The adoption of genetically modified cotton and poverty reduction in Pakistan. J. Agric. Econ. 2010;61:175–192. 10.1111/j.1477-9552.2009.00227.x [DOI] [Google Scholar]
  5. Amadu FO, Miller DC, McNamara PE: Agroforestry as a pathway to agricultural yield impacts in climate-smart agriculture investments: Evidence from southern Malawi. Ecol. Econ. 2020;167(October 2018):106443. 10.1016/j.ecolecon.2019.106443 [DOI] [Google Scholar]
  6. Anderson JM: Tropical Soil Biology and Fertility Methods_Web Soils Reading.pdf. 1989;171. J. S. I. I.
  7. Aryal JP, Rahut DB, Maharjan S, et al. : Factors affecting the adoption of multiple climate-smart agricultural practices in the Indo-Gangetic Plains of India. Nat. Res. Forum. 2018;42(3):141–158. 10.1111/1477-8947.12152 [DOI] [Google Scholar]
  8. Baker M, Melino A: Duration dependence and nonparametric heterogeneity: A Monte Carlo study. J. Econom. 2000;96:357–393. 10.1016/S0304-4076(99)00064-0 [DOI] [Google Scholar]
  9. Beedy TL, Snapp SS, Akinnifesi FK, et al. : Impact of Gliricidia sepium intercropping on soil organic matter fractions in a maize-based cropping system. Agric. Ecosyst. Environ. 2010;138(3–4):139–146. 10.1016/j.agee.2010.04.008 [DOI] [Google Scholar]
  10. Caliendo M, Kopeinig S: Some practical guidance for the implementation of propensity score matching. J. Econ. Surv. 2008;22(1):31–72. 10.1111/j.1467-6419.2007.00527.x [DOI] [Google Scholar]
  11. Chavula P: A Review between Climate Smart Agriculture Technology Objectives’ Synergies and Tradeoffs. Int. J. Agric. Food Sci. 2021;5(4):748–753. 10.26855/ijfsa.2021.12.023 [DOI] [Google Scholar]
  12. Chavula P: An Overview of Challenges that Negatively Affect Agriculture Performance in Sub-Sahara Africa: Synthesis Study. 2022;6(11):261–269. [Google Scholar]
  13. Chavula P, Feyissa S, Sileshi M, et al. : Adoption of Climate-Smart Agricultural Practices and Its Impact on Crop Productivity: A Case Study of Smallholder Farmers in Nyimba District, Zambia.[Data set]. Zenodo. 2024. 10.5281/zenodo.11258819 [DOI]
  14. CIAT, & World Bank: Climate-Smart Agriculture in Zambia. CSA Country Profiles for Africa Series. 2017.
  15. Du Y, Cui B, Zhang Q, et al. : Effects of manure fertilizer on crop yield and soil properties in China: A meta-analysis. Catena. 2020;193:104617. 10.1016/j.catena.2020.104617 [DOI] [Google Scholar]
  16. Fentie A, Beyene AD: Climate-smart agricultural practices and welfare of rural smallholders in Ethiopia: Does planting method matter? Land Use Policy. 2019;85:387–396. 10.1016/j.landusepol.2019.04.020 [DOI] [Google Scholar]
  17. Gujarati DN: Basic Econometrics. International Third ed. New York: McGraw-Hill, Inc.;1995. [Google Scholar]
  18. Gumbo DJ, Dumas-Johansen M: The role of miombo woodlands in the three Rio conventions. Clim. Dev. 2021;13(2):107–114. 10.1080/17565529.2020.1729686 [DOI] [Google Scholar]
  19. Halperin J, Lemay V, Chidumayo E, et al. : Model-based estimation of above-ground biomass in the miombo ecoregion of Zambia. Forest Ecosystems. 2016;3:1–17. 10.1186/s40663-016-0077-4 [DOI] [Google Scholar]
  20. IPCC: Global warming of 1.5°C. An IPCC Special Report on the impacts of global warming of 1.5°C above pre-industrial levels and related global greenhouse gas emission pathways, in the context of strengthening the global response to the threat of climate change. Ipcc - Sr15. 2018;2(October):17–20. Reference Source [Google Scholar]
  21. Ivanova D, Barrett J, Wiedenhofer D, et al. : Quantifying the potential for climate change mitigation of consumption options. Environ. Res. Lett. 2020;15(9):93001. 10.1088/1748-9326/ab8589 [DOI] [Google Scholar]
  22. Kalinda T: Use of integrated land use assessment (ilua) use of integrated land use data for forestry and agriculture. 2008.
  23. Kichamu-Wachira E, Xu Z, Reardon-Smith K, et al. : Effects of climate-smart agricultural practices on crop yields, soil carbon, and nitrogen pools in Africa: a meta-analysis. J. Soils Sediments. 2021;21(4):1587–1597. 10.1007/s11368-021-02885-3 [DOI] [Google Scholar]
  24. Kurgat BK, Lamanna C, Kimaro A, et al. : Adoption of Climate-Smart Agriculture Technologies in Tanzania. Front. Sustain. Food Syst. 2020;4(May). 10.3389/fsufs.2020.00055 [DOI] [Google Scholar]
  25. Makate C: Local institutions and indigenous knowledge in adoption and scaling of climate-smart agricultural innovations among sub-Saharan smallholder farmers. 2019;270–287. 10.1108/IJCCSM-07-2018-0055 [DOI]
  26. Molieleng L, Fourie P, Nwafor I: Adoption of Climate Smart Agriculture by Communal Livestock Farmers in South Africa. Sustainability. 2021;13(18):10468. 10.3390/su131810468 [DOI] [Google Scholar]
  27. Montfort F, Nourtier M, Grinand C, et al. : Regeneration capacities of woody species biodiversity and soil properties in Miombo woodland after slash-and-burn agriculture in Mozambique. For. Ecol. Manag. 2021;488:119039. 10.1016/j.foreco.2021.119039 [DOI] [Google Scholar]
  28. Mossie WA: The Impact of Climate-Smart Agriculture Technology on Productivity: Does Row Planting Matter? Evidence from Southern Ethiopia. Sci. World J. 2022;2022:1–11. 10.1155/2022/3218287 [DOI] [PMC free article] [PubMed] [Google Scholar]
  29. Mujeyi A, Mudhara M, Mutenje M: The impact of climate smart agriculture on household welfare in smallholder integrated crop–livestock farming systems: evidence from Zimbabwe. Agric. Food Secur. 2021;10(1):1–15. 10.1186/s40066-020-00277-3 [DOI] [Google Scholar]
  30. Murray V, Ebi KL: IPCC special report on managing the risks of extreme events and disasters to advance climate change adaptation (SREX). J. Epidemiol. Community Health. 2012;66(9):759–760. BMJ Publishing Group Ltd. 10.1136/jech-2012-201045, PMID: [DOI] [PubMed] [Google Scholar]
  31. Newell P, Taylor O, Naess LO, et al. : Climate smart agriculture? Governing the sustainable development goals in Sub-Saharan Africa. Front. Sustain. Food Syst. 2019;3:55. 10.3389/fsufs.2019.00055 [DOI] [Google Scholar]
  32. Ngoma H, Lupiya P, Kabisa M, et al. : Impacts of climate change on agriculture and household welfare in Zambia: an economy-wide analysis. Clim. Chang. 2021;167(3):1–20. 10.1007/s10584-021-03168-z [DOI] [Google Scholar]
  33. Odubote IK, Ajayi OC: Scaling Up climate-smart agricultural (CSA) solutions for smallholder Cereals and livestock farmers in Zambia. Handbook of Climate Change Resilience. 2020; pp.1115–1136. 10.1007/978-3-319-93336-8_109 [DOI] [Google Scholar]
  34. Pindyck RS, Rubinfeld DL: Econometric Models and Economic Forecasts. New York: McGraw-Hill;1981. [Google Scholar]
  35. Policy brief:2016. December, 1–6.
  36. Ravallion M: Evaluating antipoverty programs. Handbook of development economics. Vol.4.2007; pp.3787–3846. 10.1016/S1573-4471(07)04059-4 [DOI] [Google Scholar]
  37. Saha MK, Abdul A, Biswas A, et al. : Factors Affecting to Adoption of Climate-smart Agriculture Practices by Coastal Farmers’ in Bangladesh. Am. J. Environ. Sustain. Dev. 2019;4(4):113–121. [Google Scholar]
  38. Serote B, Mokgehle S, Plooy C, et al. : Factors influencing the adoption of climate-smart irrigation technologies for sustainable crop productivity by smallholder farmers in arid areas of South Africa. Agriculture (Switzerland). 2021;11(12). 10.3390/agriculture11121222 [DOI] [Google Scholar]
  39. Sharifi A: Co-benefits and synergies between urban climate change mitigation and adaptation measures: A literature review. Sci. Total Environ. 2021;750:141642. 10.1016/j.scitotenv.2020.141642 [DOI] [PubMed] [Google Scholar]
  40. Stahlbaumer L, Janicke R, Hache I, et al. : Climate change effects on agronomic practices and livelihood. Agric. Sci. 2022;3:20. [Google Scholar]
  41. Tadesse M, Simane B, Abera W, et al. : The effect of climate-smart agriculture on soil fertility, crop yield, and soil carbon in southern ethiopia. Sustainability. 2021;13(8):4515. 10.3390/su13084515 [DOI] [Google Scholar]
  42. Timberlake J, Chidumayo E, Sawadogo L: Distribution and characteristics of African dry forests and woodlands. The dry forests and woodlands of Africa. Routledge;2010; pp.11–41. [Google Scholar]
  43. Urgessa T: The Determinants of Agricultural Productivity and Rural Household Income in Ethiopia. Ethiop. J. Econ. 2015;24(2):63–91. [Google Scholar]
  44. WenJing H, ZhengFeng Z, XiaoLing Z, et al. : Farmland Rental Participation, Agricultural Productivity, and Household Income: Evidence From Rural China. Land. 2021;10(9):1–22. [Google Scholar]
  45. Zakaria A, Alhassan SI, Kuwornu JKM, et al. : Factors Influencing the Adoption of Climate-Smart Agricultural Technologies Among Rice Farmers in Northern Ghana. Earth Syst. Environ. 2020;4(1):257–271. 10.1007/s41748-020-00146-w [DOI] [Google Scholar]
F1000Res. 2024 Oct 10. doi: 10.5256/f1000research.158112.r323712

Reviewer response for version 1

Rao Sabir Sattar 1

The article titled "Factors Influencing Climate-Smart Agriculture Practices Adoption and Crop Productivity among Smallholder Farmers in Nyimba District, Zambia" offers an insightful analysis into the drivers behind the adoption of climate-smart agricultural (CSA) practices and their effect on crop productivity. While the study is well-structured and addresses critical concerns of smallholder farmers in the context of climate change, there are, in my opinion, several areas of strength and opportunities for improvement.

Strengths:

The study's focus on climate-smart agriculture (CSA) adoption is highly pertinent, particularly given the increasing threats of climate change on smallholder farmers, whose livelihoods depend heavily on climate-sensitive agricultural activities. It fills a critical research gap by examining both the factors driving CSA adoption and the tangible benefits of CSA in terms of crop productivity.

The use of logistic regression and propensity score matching is appropriate and well-explained. These methods provide robust insights into the causal relationship between CSA adoption and increased crop productivity, allowing the study to demonstrate clear statistical correlations between the independent and dependent variables.

The study examines a wide array of factors influencing CSA adoption, such as education, household size, farming experience, and access to climate-related information. This thoroughness highlights the complexity of decision-making processes among smallholder farmers and presents a holistic view of the influencing factors.

The study’s findings provide actionable insights for policymakers and stakeholders. The clear demonstration of the positive impact of CSA practices on crop productivity, especially maize yields, can inform policy interventions aimed at promoting CSA in regions similar to Nyimba District. Additionally, the focus on educational level and access to information emphasizes the need for targeted extension services.

Areas for Improvement:

While the article presents a detailed account of the findings, the discussion could benefit from deeper engagement with the implications of the results. For instance, how do the identified factors interact with one another, and are there synergies or trade-offs in adopting CSA practices? Further, it would be helpful to discuss the potential barriers that may prevent broader adoption of CSA practices, beyond those identified by the logistic regression model.

The paper could strengthen its impact by better contextualizing the results within the broader literature on CSA adoption in Africa and other developing regions. A comparative analysis with other regions facing similar climate challenges would offer a more nuanced understanding of how the findings fit into the global or regional discourse on CSA.

While the study hints at policy implications, the recommendations could be made more explicit. For example, based on the factors influencing CSA adoption, what specific interventions could policymakers implement to enhance adoption rates? The paper should elaborate on the role of agricultural extension services, access to credit, or other mechanisms that can facilitate the uptake of CSA practices.

Although the study is methodologically sound, a clearer discussion of its limitations would enhance transparency. For example, were there any challenges in the data collection process, or potential biases in the selection of farmers? Additionally, suggesting avenues for future research, such as longitudinal studies on the long-term impacts of CSA adoption, would strengthen the study's contribution to the field.

Is the work clearly and accurately presented and does it cite the current literature?

Partly

If applicable, is the statistical analysis and its interpretation appropriate?

Partly

Are all the source data underlying the results available to ensure full reproducibility?

Yes

Is the study design appropriate and is the work technically sound?

Yes

Are the conclusions drawn adequately supported by the results?

Yes

Are sufficient details of methods and analysis provided to allow replication by others?

Yes

Reviewer Expertise:

livelihood vulnerability, climate change adaptation, extension methods

I confirm that I have read this submission and believe that I have an appropriate level of expertise to confirm that it is of an acceptable scientific standard, however I have significant reservations, as outlined above.

F1000Res. 2024 Oct 26.
chavula petros 1

Dear Reviewers,

I have thoroughly reviewed your previous comments and have addressed each one accordingly. I look forward to receiving any further feedback at your earliest convenience.

Best regards,

F1000Res. 2024 Aug 10. doi: 10.5256/f1000research.158112.r305606

Reviewer response for version 1

Ibsa Dawid 1

1. Is the work clearly and accurately presented and does it cite the current literature? The work is not clearly accurate, not briefly presented and it’s bulky, not hit the target. Partly……, why because now we are in 2024, but the authors cited even ten years back reference, the climate change is the current issue so it’s appropriate if the author use the recent literatures not more than the last five years.

2.  Is the study design appropriate and is the work technically sound?

Partly, some steps are there but they are not fully designed appropriately.

3. Are sufficient details of methods and analysis provided to allow replication by others?

No, the methods and analysis provided are not sufficient.

4.  ….is the statistical analysis and its interpretation appropriate?

Not applicable. The statistical analysis is not applicable, for example a Cobb-Douglas production analysis……for what purpose the author used this analysis in the document? I did not seen it. The propensity sore matching is not well interpreted by with the steps. The formula for all the existing steps should be discussed.

5. Are all the source data underlying the results available to ensure full reproducibility?

No, the results presented do not seem to be fully consistent with the study's objectives, and they are not described in sufficient detail. The outcomes from Tables 10 and 11 are not clearly articulated, and there appear to be some inaccuracies in the model's results. It seems that the author may lack sufficient statistical experience, as there is difficulty in distinguishing which values are significant and which are not. The values in the tables are listed as they appear in the model, but it would be more effective if the results were first described, then compared with previous findings.

Regarding Tables 10 and 11, while they seem to address the study's objectives, the results are not adequately explained. For instance, the values indicated in the tables may not align with established scientific standards. For example, in Table 11, the variable "household size" shows a t-value of 1.2800 and a p-value of 0.0012. It's unclear how these calculations were performed, as the conclusion drawn—that the variable significantly influenced farmers' crop productivity—does not seem accurate. Additionally, the interpretation of other variables may also require reconsideration.

As a note, a variable is generally considered to have a significant influence if its t-value or z-value is greater than 1.65 at a 10% significance level.

6. Are the conclusions drawn adequately supported by the results?

No, the conclusions drawn do not seem to be fully supported by the study's results. For example, the authors conclude that all variables significantly influenced CSA practices and crop production. However, this does not align with the results presented in Table 10, where gender, farm size, livestock, and access to climate information did not significantly influence the adoption of CSA. Despite this, the authors concluded that these variables were significant and influenced adoption decisions.

Similarly, in Table 10, the farm size shows a z-value of -0.4500 and a p-value of 0.0050, which raises questions about the conclusions drawn. A more robust justification would be helpful here. The same concern applies to the results in Table 11, where variables such as marital status, education, and household size were not shown to significantly influence crop productivity based on the results, which contradicts the conclusions made by the authors.

Not Approved: I have read this submission. I believe I have an appropriate level of expertise to state that I do not consider it to be of an acceptable scientific standard, for reasons outlined above.

Is the work clearly and accurately presented and does it cite the current literature?

Partly

If applicable, is the statistical analysis and its interpretation appropriate?

Not applicable

Are all the source data underlying the results available to ensure full reproducibility?

No

Is the study design appropriate and is the work technically sound?

Partly

Are the conclusions drawn adequately supported by the results?

No

Are sufficient details of methods and analysis provided to allow replication by others?

No

Reviewer Expertise:

Climate-Smart Agriculture and Agricultural Economics

I confirm that I have read this submission and believe that I have an appropriate level of expertise to state that I do not consider it to be of an acceptable scientific standard, for reasons outlined above.

Associated Data

    This section collects any data citations, data availability statements, or supplementary materials included in this article.

    Data Citations

    1. Chavula P, Feyissa S, Sileshi M, et al. : Adoption of Climate-Smart Agricultural Practices and Its Impact on Crop Productivity: A Case Study of Smallholder Farmers in Nyimba District, Zambia.[Data set]. Zenodo. 2024. 10.5281/zenodo.11258819 [DOI]

    Data Availability Statement

    Underlying data

    Zenodo: Adoption of Climate-Smart Agricultural Practices and Its Impact on Crop Productivity: A Case Study of Smallholder Farmers in Nyimba District, Zambia [Data set]. Zenodo. https://doi.org/10.5281/zenodo.11258819 ( Chavula, P., et al., 2024)

    This project contains the following underlying data:

    Data are available under the terms of the Creative Commons Attribution 4.0 International


    Articles from F1000Research are provided here courtesy of F1000 Research Ltd

    RESOURCES