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. 2021 Nov 26;2021:5485671. doi: 10.1155/2021/5485671

Research on Evaluation of Green Smart Building Based on Improved AHP-FCE Method

Song Xu 1,, Yao Sun 1
PMCID: PMC8642022  PMID: 34868293

Abstract

With the accelerated pace of urbanization, green buildings and green smart buildings gradually come into people's vision and are highly valued by all sectors of society on the premise of meeting sustainable development strategy. Firstly, this paper selects 7 first-level index factors and 20 second-level index factors to establish the green smart building evaluation system. Secondly, this paper uses the analytic hierarchy process-fuzzy comprehensive evaluation (AHP-FCE) method to determine the weight of each secondary index. Finally, the feasibility of the evaluation system is verified by case analysis, and some suggestions on green smart building are put forward.

1. Introduction

A large number of buildings will be built in the construction of new urbanization. However, buildings are one of the largest energy consumers in the world. As people pay more and more attention to issues such as energy, environment, and sustainable development, the development of green smart architecture has become a new direction that conforms to the new urbanization construction. In the “Guiding Opinions on Accelerating the Establishment and Improvement of a Green Low-Carbon Circular Development Economic System” issued by China's State Council in February 2021, it is emphasized that green planning, green design, and green construction should be carried out in an all-round way; high-quality development and high-level protection should be promoted so as to ensure the realization of the goals of carbon peak and carbon neutrality [1]. In today's fast-developing construction industry, to achieve the goals of building energy conservation, environmental protection, and greenness and to provide humans with a safe, comfortable, and healthy production and living environment, the construction industry needs to shift from rapid development to high-quality development. Green smart building is a new-generation building incorporating BIM, GIS, Internet of Things, cloud computing, and other technologies. It saves resources and improves energy utilization while reducing environmental pollution and resource waste and has a great effect on alleviating the current energy shortage in my country. At present, there are relatively mature evaluation standards for the evaluation of green buildings, but there are few studies on the comprehensive evaluation of green smart buildings. Combining the smart building evaluation index factors, this paper tries to build a simple and clear green smart building evaluation system based on the green building evaluation system so as to enrich the new green building evaluation standards and promote the evaluation and development of green smart buildings.

2. Research Status

Arkin and Paciuk pointed out that intelligent buildings are increasingly using intelligent devices, materials, and sensors. Intelligent buildings should provide environments and means for the best use of buildings. They studied some contemporary intelligent buildings based on the level of system integration [2]. Green buildings are buildings related to resource efficiency, life cycle effects, and building performance; smart buildings with integrated building technology systems as the core are buildings related to building and operational efficiency, as well as enhanced management and occupant functions. Sinopoli has studied the commonalities between the two [3]. Runde and Fay pointed out that building automation requires a large number of smart devices, and modern building automation systems are composed of as many as thousands of components with many attributes and dependencies [4]. Robichaud and Anantatmula's research shows that by adding a team of professionals to the project, they can promote the completion of green building projects better and faster [5]. Chen and Huang suggested the establishment of an environmental health information management platform to provide residential users with a comfortable and healthy indoor environment [6]. Balta-Ozkan et al. defined an intelligent building as a residence equipped with a communication network, linking sensors, household appliances, and devices that can be remotely monitored, accessed, or controlled to provide services that respond to the needs of its residents. They studied the similarities and differences in the technical and economic driving factors and obstacles to the development of the smart home market in three European countries characterized by different policies and socioeconomic backgrounds [7]. Shaikh et al. conducted a comprehensive and important research on the most advanced intelligent control system for energy and comfort management of intelligent energy buildings [8]. Buckman et al. claimed in 2014 that intelligence can be used interchangeably with smart, and there is no obvious difference between the two [9]. Attoue et al. proposed the concept of smart buildings to use smart technology to reduce energy consumption and improve comfort and user satisfaction [10]. Research by To et al. found that building users tend to focus more on intelligent security systems, followed by intelligent and responsive fresh air supply, elevators, and escalators [11]. Ding and Fan pointed out that most green buildings certified by rating tools are mainly evaluated based on their design and construction. The life cycle of green buildings goes beyond these initial stages, and their full benefits become more apparent during the operation phase of the building [12]. Zhao et al. reviewed and analyzed 2,980 articles published from 2000 to 2016; the results show that green building research is concentrated in the fields of engineering, environmental science, ecology, and construction technology [13]. Apanaviciene et al. research and define the characteristics that smart buildings should meet in order to be compatible with the overall background of smart cities and introduce a new evaluation framework for smart buildings to integrate into smart cities [14]. Eini et al. proposed a real-time management system to control all aspects of smart buildings and proposed the system's performance specifications, design requirements, and operational constraints [15].

Long et al. [16] started from the concept of intelligent buildings and indoor ecological environment and introduced the use of passive methods such as energy-saving windows and building exterior sunshades and the use of active methods such as displacement ventilation and cold radiation ceilings to improve the indoor environment of smart buildings. After analyzing the concept and characteristics of green building and intelligent building as well as their development status at home and abroad, Yin et al. [17] put forward the harmonious and unified view of “human, building and nature” in order to achieve the purpose of saving energy and resources, harmless, pollution-free and recyclable, harmonious and sustainable development of society. Through a large number of investigations, combined with engineering construction practices, Duan [18] integrated a variety of green building evaluation systems to develop a green construction evaluation standard for construction projects. Wang and Zhou [19] studied in depth the green building evaluation system proposed by the American LEED company and the “Green Building Evaluation Standards” issued by China and combined the two standards for comparative analysis, then constructed a simple evaluation system using AHP method. Liu and Peng [20] based on the in-depth understanding of green building and real estate development, combined green building and real estate to build a green real estate development evaluation index system, adopted AHP-FCE method to establish a green real estate evaluation model, and combined with index weights put forward policy recommendations for realizing green real estate development. Xiong et al. [21] comparatively analyzed domestic and foreign green building evaluation systems, and on this basis, they built a green intelligent building evaluation system based on the 2014 version of green building evaluation standards, established a five-level evaluation standard, and determined the weights of evaluation indicators and a comprehensive evaluation model. Wang et al. [22, 23] analyzed and studied the influence of EBI, FCS, and AIOT technologies on the building automation system of modern green intelligent buildings. The application of these technologies further enhanced and improved the control level, use functions, and service efficiency of green intelligent buildings. These technologies lay the foundation for the real realization of the “green” and “intelligence” of buildings and create conditions for the further transformation of intelligent buildings into super-intelligent buildings and smart buildings.

Based on academic research at home and abroad, scholars have continuously studied green buildings and intelligent buildings. The evaluation objects focused on green intelligent buildings mainly include “four savings and one environmental protection,” intelligent equipment, technology, environment, materials, and management. These evaluation systems have laid the foundation for the development of green smart buildings. Under the policy background of green economy and sustainable development, we have established a green smart building evaluation system, including safety and durability, health and comfort, convenience of life, resource conservation, environmental livability, smart, innovation and characteristic indicators and then used the analytic hierarchy process-fuzzy comprehensive evaluation (AHP-FCE) method to determine the weight of each secondary indicator and established a five-level evaluation standard.

3. Modeling Steps of Improved Analytic Hierarchy Process-Fuzzy Comprehensive Evaluation (AHP-FCE) Method

3.1. Establish a Set of Evaluation Indicators

We need to build a judging evaluation index system for the goal. Generally speaking, the fuzzy comprehensive discriminant model includes three levels of indicators, namely, the target level, the criterion level, and the plan level factor set. The evaluation object U is a collection of evaluation indicators, which is hierarchical. The first-level indicators can be established as (Ui),  i=1,2,3, ⋯, n, so the index system is

U=U1,U2,,Un. (1)

The secondary indicators can be established as (Uij), so

Ui=Ui1,Ui2,,UiNi,i=1,2,,n, (2)

N i is the number of secondary indicators included in Ui.

3.2. Establish Evaluation Grade

V=V1,V2,,VK, (3)

where Vj( j=1,2, ⋯, K) is the classification of different grades.

3.3. Construct Fuzzy Relation Matrix

3.3.1. Construct Judgment Matrix U∗

U=u11u12u1nu21u22u2nun1un2unn, (4)

where uij=0, the  i  factor  Ui  is  not as  important  as the  j factor  Uj,1, the  i  factor Ui  and  the  j  factor  Uj  are equally  important,2, the  i  factor  Ui  is  more  important  then the  j factor  Uj,.

For the fuzzy relation matrix, also known as the membership matrix, it is necessary to establish not only the comment set, but also the membership set of grade factors. In this way, after quantitative analysis, the specific position of each factor that may affect the evaluation object in the grade can be determined so as to form the fuzzy relation matrix P:

PUki,j=pijk,  k=1,2,,n,i=1,2,,Nk,j=1,2,,K, (5)

where pijk=vijk/M, where vijk  is the number of experts who believe that Uki is affiliated to Vj among all experts. M is the total number of experts.

3.4. Calculate Weight Using Improved AHP Method

AHP analytic hierarchy process is a multiobjective decision analysis method that combines qualitative and quantitative analysis methods. The improved analytic hierarchy process in this article is based on the traditional analytic hierarchy process, draws lessons from the methods in Ba's academic achievements [24], and makes changes in the strategy of constructing the judgment matrix. The previous nine-scale method is replaced by a more concise three-scale method, which makes it easier for experts to understand. Judging and scoring is more intuitive. The improved AHP method improves the accuracy of judgment, and the consistency check step can be omitted after using the optimal transfer matrix, which reduces the computational workload [25, 26].

Then, we solve the element hij in the judgment matrix H:

hij=rirjkm1rmaxrmin+1,rirj,rjrikm1rmaxrmin+11ri<rj,, (6)

where ri=∑j=1nuij,  rmax=max(ri), km=rmax/rmin.

Let E=[eij]n×n, where

qij=log  hij,dij=1nk=1nqikqjk,eij=10dij. (7)

Calculate Mi, the product of each row element of matrix E constructed above, then calculate its nth root. The result is as follows:

Wi=Min=Πeijn. (8)

Normalize the vector W to get Wi′: Wi′=(wi/∑i=1nwi); finally, we can get the weight vector W of n elements:

W=W1,W2,,Wn. (9)

4. Green Smart Building Evaluation Index System Based on Improved AHP-FCE Method

To build a more systematic and comprehensive evaluation system for green smart building projects, it is necessary to select the first and second indicators and the corresponding scoring rules, and the indicators should be relatively independent so as to avoid the appearance of redundant and miscellaneous indicators. At the same time, in order to facilitate the understanding of calculations and applications, the construction of the index system should also be simple and easy to implement. Following the principles of systemicity, dynamics, and relative independence, combined with China's latest “Green Building Evaluation Standard” (GB/T50378-2019) and the group standard “Smart Building Evaluation Standard” issued by China Building Energy Conservation Association in 2021, we have built an evaluation index system for green smart buildings in Table 1.

Table 1.

Green smart building evaluation system.

Target layer First-level indicators Secondary indicators Judging rules
Green smart building evaluation
U
Safety and durability U1 Safety U11 Reasonably improve the seismic performance of buildings
Personnel safety protection measures
Products or accessories with safety functions
Antislip measures for indoor and outdoor floors
People and vehicles are divided and the traffic system is sufficiently illuminated
Durability U12 Improve building adaptability
Improve the durability of building components
Improve the durability of building structure materials
Reasonable use of decoration building materials
Health and comfort U2 Indoor air quality U21 Control the concentration of major indoor air pollutants
Decoration building materials meet national standards
Water quality U22 Direct drinking water, landscape water, and other water quality meet national standards
Water storage facilities such as pools meet sanitary requirements
Permanent identification of water supply and drainage pipeline equipment
Acoustic environment and light environment U23 Optimize the indoor acoustic environment of the main room
The main room divider has good sound performance
Make full use of natural light
Indoor hot and humid environment U24 Good indoor hot and humid environment
Improve natural ventilation effect
Improve indoor thermal comfort
Convenience of life U3 Mobility and barrier-free U31 The site has convenient transportation
Public areas meet all-age design requirements
Service facilities U32 Provide convenient public services
Open urban green spaces, squares, and other venues
Reasonably set up fitness venues and spaces
Property management U33 Formulate energy-saving, water-saving, and material-saving greening plans
The average daily water consumption of the building meets the national standard
Regularly evaluate the building operation effect
Establish a green education publicity and practice mechanism
Save resources U4 Land saving and land use U41 Economical and intensive use of land
Reasonable development and utilization of underground space
Reasonable parking design
Energy-saving and energy utilization U42 Optimizing the thermal performance of building envelope
Energy efficiency of heating and air conditioning system is better than national standard
Reduce energy consumption of heating and air conditioning systems
Adopt energy-saving equipment and energy-saving measures
Take measures to reduce building energy consumption
Reasonable use of renewable resources
Water-saving and water resources utilization U43 Use higher-efficiency sanitary appliances
Use water-saving equipment for irrigation and cooling water
Comprehensive utilization of rainwater to make landscape water
Use nontraditional water sources
Wood-saving and green building materials U44 Integrated design and construction of civil engineering and decoration
Reasonable selection of building structure materials and components
Industrialized interior parts are selected for building decoration
Use recyclable and reusable materials
Choose green building materials
Livable environment U5 Site ecology and landscape U51 Reasonable layout of buildings and landscapes
Planning surface and roof stormwater runoff
Reasonably set up green land
Reasonably arrange outdoor smoking areas
Set up green rainwater infrastructure
Outdoor physical environment U52 The environmental noise inside the venue is better than the national standard
Building and lighting design to avoid light pollution
Comfortable and natural ventilation
Reduce heat island strength
Smart U6 Smart security U61 Equipped with public safety smart warning function
Video surveillance with detection function
Set up an emergency response system
Computer room engineering and its own protective measures specification
Effective display of video security monitoring system
Fire and security have linkage function and work normally
The security system has the ability to prevent damage
The security system uses a dedicated transmission network
Smart architecture and platform U62 Support the deployment of IoT application services
The platform can centrally monitor and manage each subsystem
The platform follows the principle of modular construction
The platform supports secondary development
Realize equipment life cycle monitoring and management
With the docking function of smart building operation and maintenance platform
The platform can intelligently analyze data
Specific applications such as data sharing
Smart operation U63 Has a smart parking management system
Has a smart property management system
Realize smart home with IoT technology
With personnel positioning indoor navigation service
Complete information query and release system
Wireless network coverage on demand
Access to smart platform for main electrical building equipment
With office automation system
Has a building energy metering management platform
Set up an automatic remote metering system
Set up air quality monitoring and release system
Set up an online monitoring system for water quality and water supply and drainage
Innovation and characteristics U7 Improvement and innovation U71 Further reduce the energy consumption of heating and air conditioning systems
Architectural style design and inheritance of architectural culture
Increase the green capacity of the site
Reasonable selection of abandoned sites
Structural system and building components meet requirements
Apply BIM technology
Reduce carbon emission intensity per unit area
Green construction and management
Use of insurance products for potential defects in construction project quality
Characteristics U72 Obtain the green building logo
Meet the requirements of the national grid
Set equipment monitoring health index
Meet the individual needs of different acquaintances
Apply big data artificial intelligence and other technologies

Remarks: Innovation and characteristics are the corresponding improvement of U1–U6 index factors.

5. Empirical Analysis

Xiang'an Zhengrong Mansion is located at the intersection of Shamei Road and Xiang'an South Road. It was built by XM Zhengpeng Real Estate Co., Ltd. The total construction area of the project is 114,307.13 square meters, covering an area of 27,595.52 square meters, the greening rate is 30%, and the plot ratio is 2.8. The planned properties include commercial streets, landscape gardens, and basketball courts. The project is surrounded by Xiangshan Park and Shamei Park. The environment is beautiful, and it is close to the subway entrance and exit, making travel very convenient.

5.1. Building Evaluation System Based on Improved AHP-FCE Model

Next, we use the improved AHP-FCE method to comprehensively evaluate the green wisdom project level of Xiang'an Zhengrong Mansion in combination with the 7 primary index factors and 20 secondary index factors listed in Table 1.

5.2. Construction of Judgment Matrix and Single-Layer Weight Calculation

According to the green smart building evaluation index system established in Table 1, the hierarchical structure is constructed by combining the interrelationships between the indicators. Experts from the green smart building and real estate industries are invited to compare and score each factor. A judgment matrix is constructed, and the corresponding weights are calculated. The results are as follows:

U=1220202012010200100022221212012010222212120000001. (10)

Calculate according to the steps of the improved fuzzy comprehensive evaluation method, and get the weights of each criterion layer (first-level indicators):

WU=WU1,WU2,WU3,WU4,WU5,WU6,WU7,=0.1481,0.0607,0.0253,0.3451,0.0607,0.3451,0.0151. (11)

Using the same method and principle, construct the judgment matrix of the index layer (secondary indicators) against the criterion layer:

Safety and durability indicators U1=(U11, U12), U1=1201.

Health and comfort indicators U2=(U21, U22, U23, U24), U2=1200010022102221.

Convenience of life indicators U3=U31,U32,U33,  U3=100212201.

Save resources indicators U4=(U41, U42, U43, U44), U4=1000212220122001.

Livable environment indicators U5=(U51, U52), U5=1201.

Smart indicators U6=(U61, U62, U63), U6=100210221.

Innovation and characteristics indicators U7=(U71, U72), U7=1111.

Calculate according to the improved method, and get the weight of each indicators layer (secondary indicators):

Safety and durability index weight WU1=(0.7500,  0.2500).

Health and comfort index weight WU2=(0.1178,  0.0550,  0.2634,  0.5638).

Convenience of life index weight WU3=(0.1047,  0.6370,  0.2583).

Save resources index weight WU4=(0.0550,  0.5638,  0.2634,  0.1178).

Livable environment index weight WU5=(0.7500,  0.2500).

Smart index weight WU6=(0.1047,  0.2583,  0.6370).

Innovation and characteristics index weight WU7=(0.5000,  0.5000).

5.3. Calculation of the Composite Weight of Each Layer Element to the Target Layer

Through the above calculation and evaluation results, the weight of each indicator for comprehensive evaluation of green smart building project is obtained, as shown in Table 2.

Table 2.

Weights of comprehensive evaluation indicators of green smart building project.

Target layer First-level indicators First-level weight Secondary indicators Secondary weight Weights
U U i W i U ij W j W ij  = WiWj
Green smart building evaluation system U Safety and durability U1 0.1481 Safety U11 0.7500 0.1111
Durability U12 0.2500 0.0370
Health and comfort U2 0.0607 Indoor air quality U21 0.1178 0.0072
Water quality U22 0.0550 0.0033
Acoustic environment and light environment U23 0.2634 0.0160
Indoor hot and humid environment U24 0.5638 0.0342
Convenience of life U3 0.0253 Mobility and barrier-free U31 0.1047 0.0026
Service facilities U32 0.6370 0.0161
Property management U33 0.2583 0.0065
Save resources U4 0.3451 Land saving and land use U41 0.0550 0.0190
Energy-saving and energy utilization U42 0.5638 0.1946
Water-saving and water resources utilization U43 0.2634 0.0909
Wood-saving and green building materials U44 0.1178 0.0407
Livable environment U5 0.0607 Site ecology and landscape U51 0.7500 0.0455
Outdoor physical environment U52 0.2500 0.0152
Smart U6 0.3451 Smart security U61 0.1047 0.0361
Smart architecture and platform U62 0.2583 0.0891
Smart operation U63 0.6370 0.2198
Innovation and characteristics U7 0.0151 Improvement and innovation U71 0.5000 0.0076
Characteristics U72 0.5000 0.0076

The weight distribution of indicators in Table 1 is shown in Figures 1 and 2. The main indicators that affect the evaluation of green smart buildings are save resources (U4, weight is 0.3451) and smart (U6, weight is 0.3451), followed by safety and durability (U1, weight is 0.1481). The main indicator that affects safety and durability (U1) is safety (U11, weight is 0.7500); the main indicator that affects health and comfort (U2) is indoor hot and humid environment (U24, weight is 0.5638); the main indicator that affects convenience of life (U3) is service facilities (U32, weight is 0.6370); the main indicator that affects save resources (U4) is energy-saving and energy utilization (U42, weight is 0.5638); the main indicator that affects livable environment (U5) is site ecology and landscape (U51, weight is 0.7500); the main indicator that affects smart (U6) is smart operation (U63, weight is 0.6370); the main indicators that affect innovation and characteristics (U7) are improvement and innovation (U71, weight is 0.5000) and characteristics (U72, weight is 0.5000).

Figure 1.

Figure 1

The weighting diagram of the criterion layer indicators.

Figure 2.

Figure 2

The weighting diagram of scheme layer indicators. (a) Weights of U11U12. (b) Weights of U21U24. (c) Weights of U31U33. (d) Weights of U41U44. (e) Weights of U51U52. (f) Weights of U61U63. (g) Weights of U71U72.

The overall ranking of indicator weights is shown in Figure 3. Among all the impact indicators, the most important is smart operation (U63), followed by energy-saving and energy utilization (U42), followed by safety (U11), water-saving and water resources utilization (U43), and smart architecture and platform (U62).

Figure 3.

Figure 3

Comparison of weights of indicators.

5.4. Determine the Set of Evaluation Criteria

The evaluation standard set of green and smart building projects selects the five-star evaluation system in the “Smart Building Evaluation Standards,” which are one-star, two-star, three-star, four-star, and five-star. Use V to denote the set of evaluation criteria; then they are as follows:

V=V1,V2,V3,V4,V5,=onestar, twostar, threestar, fourstar, fivestar,=020,2050,5070,7090,90100. (12)

5.5. Fuzzy Comprehensive Evaluation of Criterion Level

According to the actual situation of the project, this paper consulted a 10-member expert group composed of experts in the construction, environmental protection, and real estate industries by collecting relevant information and using questionnaire surveys and collected the expert group's review opinions on green and smart building projects. The fuzzy evaluation matrix is as follows:

  • Safety and durability index matrix:
    PU1=0.20.40.20.10.10.20.50.20.10. (13)
  • Health and comfort index matrix:
    PU2=0.10.60.10.10.10.30.40.3000.40.60000.20.50.300. (14)
  • Convenience of life index matrix:
    PU3=0.40.50.1000.10.50.4000.30.40.300. (15)
     Save resources index matrix:
    PU4=0.10.50.20.10.10.10.60.20.100.30.40.3000.20.60.200. (16)
  • Livable environment index matrix:
    PU5=0.10.50.30.100.20.60.200. (17)
  • Smart index matrix:
    PU6=0.20.50.10.200.40.40.2000.20.60.200. (18)
  • Innovation and characteristics index matrix:
    PU7=0.50.50000.30.60.100. (19)

According to the steps of the improved AHP method, the calculated weight vector W of each evaluation index is established, the fuzzy evaluation matrix is established, and the comprehensive evaluation vector of the criterion layer (first-level indexes) is calculated according to the formula Y=W × P.

Comprehensive evaluation vector of safety and durability index:

YU1=WU1×PU1=0.7500,0.2500×0.20.40.20.10.10.20.50.20.10=0.2000,0.4250,0.2000,0.1000,0.0750. (20)

Comprehensive evaluation vector of health and comfort index:

YU2=WU2×PU2=0.1178,0.0550,0.2634,0.5638×0.10.60.10.10.10.30.40.3000.40.60000.20.50.300=0.2464,0.5326,0.1974,0.0118,0.0118. (21)

Comprehensive evaluation vector of convenience of life index:

  YU3=WU3×PU3=0.1047,0.6370,0.2583×0.40.50.1000.10.50.4000.30.40.300  =0.1831,0.4742,0.3428,0.0000,0.0000. (22)

Comprehensive evaluation vector of save resources index:

YU4=WU4×PU4=0.0550,0.5638,0.2634,0.1178×0.10.50.20.10.10.10.60.20.100.30.40.3000.20.60.200=0.1645,0.5418,0.2263,0.0619,0.0055. (23)

Comprehensive evaluation vector of livable environment index:

  YU5=WU5×PU5=0.7500,0.2500×0.10.50.30.100.20.60.200=0.1250,0.5250,0.2750,0.0750,0.0000. (24)

Comprehensive evaluation vector of smart index:

YU6=WU6×PU6=0.1047,0.2583,0.6370×0.20.50.10.200.40.40.2000.20.60.200=0.2517,0.5379,0.1895,0.0209,0.0000. (25)

Comprehensive evaluation vector of innovation and characteristics index:

YU7=WU7×PU7=0.5000,0.5000×0.50.50000.30.60.100=0.4000,0.5500,0.0500,0.0000,0.0000. (26)

5.6. Fuzzy Comprehensive Evaluation of Target Layer

Using the relevant calculation rules of the fuzzy comprehensive evaluation, and according to the calculation results of the fuzzy comprehensive evaluation of the criterion layer (first-level indexes), construct the target layer fuzzy evaluation matrix of this project; then, the target layer fuzzy evaluation matrix is

PU=0.20000.42500.20000.10000.07500.24640.53260.19740.01180.01180.18310.47420.34280.00000.00000.16450.54180.22630.06190.00550.12500.52500.27500.07500.00000.25170.53790.18950.02090.00000.40000.55000.05000.00000.0000. (27)

According to formula Y=W × P, the comprehensive evaluation vector of the target layer is

YU=WU×PU=0.1481,0.0607,0.0253,0.3451,0.0607,0.3451,0.0151  ×0.20000.42500.20000.10000.07500.24640.53260.19740.01180.01180.18310.47420.34280.00000.00000.16450.54180.22630.06190.00550.12500.52500.27500.07500.00000.25170.53790.18950.02090.00000.40000.55000.05000.00000.0000=0.2064,0.5200,0.2112,0.0487,0.0137. (28)

According to the principle of the maximum degree of membership, the comprehensive evaluation level of the green smart building project can be determined. The maximum comprehensive evaluation value of the green intelligent building project in this case is 0.5200, which belongs to the twostar level of the set of evaluation criteria. Then, we use the formula S=Y × GT to calculate the comprehensive evaluation value of the green smart building project and obtain the quantified comprehensive evaluation result, where the value of the quantified evaluation standard set G is the median value of the corresponding value in the evaluation standard set V. So, the quantified comprehensive score S is

S=YU×GT=0.2064,0.5200,0.2112,0.0487,0.0137×10,35,60,80,95T=38.1330. (29)

5.7. Analysis of Evaluation Results

Through the above calculations, it is shown that the project developed by XM Zhengpeng Real Estate Co., Ltd., is a two-star building. According to the quantified comprehensive evaluation calculation result, the comprehensive score of the overall evaluation of the project is corresponding to the two-star level. If you score according to the judging rules rules in Table 1, you can get consistent results. However, the judging rules' scoring method needs to determine the weight or value of the rules, which also increases the workload of the experts for scoring. The improved AHP-FCE method can reduce the corresponding workload and improve work efficiency.

6. Conclusions and Recommendations

From the analysis of the evaluation results, it can be seen that smart and green building sustainability have become the core of modern green buildings. The main indicators that have an impact on the development of green smart buildings include safety and durability indicators, health and comfort indicators, convenience of life indicators, save resources indicators, livable environment indicators, smart indicators, and innovation and characteristics indicators. Under the premise of these seven indicators, a fuzzy comprehensive evaluation model for green smart building projects was established, and this evaluation system was verified through corresponding cases, which further enriched the green smart building evaluation system.

In order to promote the implementation of my country's green and smart building strategy and improve the level of green economy development, the following points should be given priority: (1) Firstly, we should focus on save resources. Green smart buildings are the inevitable trend of future development. Scientific management and advanced green and clean environmental protection technologies should be used in their development so as to improve energy efficiency, reduce building energy consumption, and improve people's quality of life. Therefore, local governments should vigorously support the development of green buildings, further increase research on the development of green building products, and promulgate relevant policies for support and subsidies in order to accelerate the upgrading of the green and smart building industry. (2) Secondly, in terms of smart, it is necessary to make full use of the Internet of Things, 5G, big data, cloud computing, artificial intelligence, and other technologies to create an economical, safe, reliable, efficient, convenient, and green ecological living environment through automatic sensing, ubiquitous connection, timely transmission, and information integration. While strengthening the utilization of green and smart building resources, qualified enterprises should be encouraged to explore and innovate more advanced management systems and smart management. (3) In terms of safety and durability, attention should be paid to the safety and durability of buildings to avoid “fragile buildings.” Starting from the full life cycle of the building, improve the seismic performance of the building and the durability of structural components, and ensure the safety of people's lives.

Green smart buildings are developing rapidly. We should constantly learn from experience and adjust the direction in the course of its development so as to explore an optimal development path. In the context of carbon peaks and carbon neutrality, leading companies in green smart buildings should adhere to the green, environmentally friendly, and healthy production concepts and strive to explore zero-carbon buildings to provide a “green model” for the development of the industry.

Acknowledgments

This work was supported by the Key Natural Science Research Projects in Anhui Universities (KJ2019A695),Anhui Jianzhu University Research Startup Project (2019QDZ61), Key Project of Educational Commission of Anhui Province (SK2020A0261), and Anhui Province Philosophy Social Science Project for Youths (AHSKQ2020D67).

Data Availability

The data used to support the findings of this study are included within the article.

Conflicts of Interest

The authors declare that they have no conflicts of interest regarding the publication of this work.

References

  • 1. http://www.gov.cn/zhengce/content/2021-02/22/content_5588274.htm, Website of the Central People’s Government of the People’s Republic of China.
  • 2.Arkin H., Paciuk M. Evaluating intelligent buildings according to level of service systems integration. Automation in Construction . 1997;6(5-6):471–479. doi: 10.1016/s0926-5805(97)00025-3. [DOI] [Google Scholar]
  • 3.Sinopoli J. How do smart buildings make a building green? Energy Engineering . 2008;105(6):17–22. doi: 10.1080/01998590809509394. [DOI] [Google Scholar]
  • 4.Runde S., Fay A. Software support for building automation requirements engineering-an application of semantic web technologies in automation. IEEE Transactions on Industrial Informatics . 2011;7(4):723–730. doi: 10.1109/tii.2011.2166784. [DOI] [Google Scholar]
  • 5.Robichaud L. B., Anantatmula V. S. Greening project management practices for sustainable construction. Journal of Management in Engineering . 2011;27(1):48–57. doi: 10.1061/(asce)me.1943-5479.0000030. [DOI] [Google Scholar]
  • 6.Chen S.-Y., Huang J.-T. A smart green building: an environmental health control design. Energies . 2012;5(5):1648–1663. doi: 10.3390/en5051648. [DOI] [Google Scholar]
  • 7.Balta-Ozkan N., Boteler B., Amerighi O. European smart home market development: public views on technical and economic aspects across the United Kingdom, Germany and Italy. Energy Research & Social Science . 2014;3:65–77. doi: 10.1016/j.erss.2014.07.007. [DOI] [Google Scholar]
  • 8.Shaikh P. H., Nor N. B. M., Nallagownden P., Elamvazuthi I., Ibrahim T. A review on optimized control systems for building energy and comfort management of smart sustainable buildings. Renewable and Sustainable Energy Reviews . 2014;34:409–429. doi: 10.1016/j.rser.2014.03.027. [DOI] [Google Scholar]
  • 9.Buckman A. H., Mayfield M., Beck S. B. M. What is a smart building? Smart and Sustainable Built Environment . 2014;3:92–104. [Google Scholar]
  • 10.Attoue N., Shahrour I., Younes R. Smart building: use of the artificial neural network approach for indoor temperature forecasting. Energies . 2018;11(2):p. 395. doi: 10.3390/en11020395. [DOI] [Google Scholar]
  • 11.To W., Lai L., Lam K., Chung A. Perceived importance of smart and sustainable building features from the users’ perspective. Smart Cities . 2018;1(1):163–175. doi: 10.3390/smartcities1010010. [DOI] [Google Scholar]
  • 12.Ding Z., Fan Z., Tam V. W. Y., et al. Green building evaluation system implementation. Building and Environment . 2018;133:32–40. doi: 10.1016/j.buildenv.2018.02.012. [DOI] [Google Scholar]
  • 13.Zhao X., Zuo J., Wu G., Huang C. A bibliometric review of green building research 2000-2016. Architectural Science Review . 2019;62(1):74–88. doi: 10.1080/00038628.2018.1485548. [DOI] [Google Scholar]
  • 14.Apanaviciene R., Vanagas A., Fokaides P. A. Smart building integration into a smart city (SBISC): development of a new evaluation framework. Energies . 2020;13(9):p. 2190. doi: 10.3390/en13092190. [DOI] [Google Scholar]
  • 15.Eini R., Linkous L., Zohrabi N., Abdelwahed S. Smart building management system: performance specifications and design requirements. Journal of Building Engineering . 2021;39102222 [Google Scholar]
  • 16.Long W. D., Pan Y. Q., Bai W. The indoor ecological environment of intelligent buildings. HVAC . 2001;4:75–78. [Google Scholar]
  • 17.Yin B. Y., Lai M., Xie F. H. The development and application of green buildings and intelligent buildings in the world and our country. Building Technology . 2006;4(10):733–735. [Google Scholar]
  • 18.Duan C. W. Establishment and research of green construction evaluation system for construction projects. Building Science . 2009;25(10):35–39. [Google Scholar]
  • 19.Wang Z. H., Zhou J. AHP-based green building evaluation system research. Construction Economy . 2013;11:79–82. [Google Scholar]
  • 20.Liu G. J., Peng S. Z. Research on the evaluation system of green real estate development based on. AHP-FCE Resource Development and Market . 2017;33(05):540–544. [Google Scholar]
  • 21.Xiong X. Y., Ma X. G., Ou Y. Q. Construction and application of a comprehensive evaluation system for green intelligent buildings. Science and Technology Management Research . 2017;37(03):95–99. [Google Scholar]
  • 22.Wang H., Zheng Y. P., Wu D. H., Li H. T., Hu L. S. Integrated design and research of building automation system for green intelligent buildings based on EBI and FCS. Journal of Central China Normal University (Natural Science Edition) . 2018;52(5):634–641. doi: 10.1016/j.cogsys.2018.08.011. [DOI] [Google Scholar]
  • 23.Wang H., Han C., Li D. D., Li H. T. Research on the latest development and application of AIoT technology in building automation systems for green and intelligent buildings. Journal of Central China Normal University (Natural Science Edition) . 2021;55(1):52–60. [Google Scholar]
  • 24.Ba Z. N., Wang Z. K., Liang J. W., Han Y. X., Wang M. S. Corrosion risk assessment of gas pipeline network in Suzhou Industrial Park. Oil & Gas Storage and Transportation . 2021;40(7):828–833+840. [Google Scholar]
  • 25.Han X. S., Fan G. Q. The application of three-scale AHP method in mine geological environment assessment——taking a coal mine in Datong City, Shanxi Province as an example. Groundwater . 2013;35(03):148–150. [Google Scholar]
  • 26.Li Z., Zhou S. G., Wang K. Improvement of analytic hierarchy process (english) Journal of Zhengzhou University (Science Edition) . 2008;1:41–46. [Google Scholar]

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Data Availability Statement

The data used to support the findings of this study are included within the article.


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