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International Journal of Environmental Research and Public Health logoLink to International Journal of Environmental Research and Public Health
. 2020 Nov 23;17(22):8691. doi: 10.3390/ijerph17228691

Investigating a Potential Map of PM2.5 Air Pollution and Risk for Tourist Attractions in Hsinchu County, Taiwan

Yuan-Chien Lin 1,2,*, Hua-San Shih 1, Chun-Yeh Lai 1, Jen-Kuo Tai 1,3
PMCID: PMC7700626  PMID: 33238515

Abstract

In the past few years, human health risks caused by fine particulate matters (PM2.5) and other air pollutants have gradually received attention. According to the Disaster Prevention and Protection Act of Taiwan’s Government enforced in 2017, “suspended particulate matter” has officially been acknowledged as a disaster-causing hazard. The long-term exposure to high concentrations of air pollutants negatively affects the health of citizens. Therefore, the precise determination of the spatial long-term distribution of hazardous high-level air pollutants can help protect the health and safety of residents. The analysis of spatial information of disaster potentials is an important measure for assessing the risks of possible hazards. However, the spatial disaster-potential characteristics of air pollution have not been comprehensively studied. In addition, the development of air pollution potential maps of various regions would provide valuable information. In this study, Hsinchu County was chosen as an example. In the spatial data analysis, historical PM2.5 concentration data from the Taiwan Environmental Protection Administration (TWEPA) were used to analyze and estimate spatially the air pollution risk potential of PM2.5 in Hsinchu based on a geographic information system (GIS)-based radial basis function (RBF) spatial interpolation method. The probability that PM2.5 concentrations exceed a standard value was analyzed with the exceedance probability method; in addition, the air pollution risk levels of tourist attractions in Hsinchu County were determined. The results show that the air pollution risk levels of the different seasons are quite different. The most severe air pollution levels usually occur in spring and winter, whereas summer exhibits the best air quality. Xinfeng and Hukou Townships have the highest potential for air pollution episodes in Hsinchu County (approximately 18%). Hukou Old Street, which is one of the most important tourist attractions, has a relatively high air pollution risk. The analysis results of this study can be directly applied to other countries worldwide to provide references for tourists, tourism resource management, and air quality management; in addition, the results provide important information on the long-term health risks for local residents in the study area.

Keywords: air pollution potential map, PM2.5, spatial analysis, tourist attractions, risk analysis, GIS

1. Introduction

Air pollution is a topic of concern worldwide; it affects the atmospheric and ecological environment and poses a serious threat to the health of humans. Owing to the rapid development of the modern industrial society, global climate change, and increasing environmental awareness of people, air pollution has received increasing attention. According to the Disaster Prevention and Protection Act of Taiwan’s Government enforced on 22 November 2017, “suspended particulate matter” has officially been acknowledged as a disaster-causing hazard.

Haze is caused by extremely small dry particles in the air, which impair visibility. Suspended particulate matter can be classified according to the particle diameter. Particles with sizes of less than 10 μm are PM10, and those with sizes of less than 2.5 μm are PM2.5. The different particle sizes have different effects on the human body; PM2.5 is smaller than PM10 and can therefore penetrate the human cilia and mucus, reach the bronchi and alveoli and then the walls of the bronchioles, and finally interfere with the gas exchange in the lungs. In addition, PM2.5 is more easily suspend in air, does not settle easily, and interacts with other air pollutants [1,2]. Once inhaled by a human, PM2.5 can reach the depth of the lungs and even penetrate the alveoli and enter the cardiovascular system. As blood circulates throughout the entire body, the harm to human health and ecology is more severe than that from other suspended particulate matter [3,4,5,6]. Many researchers have further pointed out that airborne fine particulate matter can directly or indirectly lead to chronic respiratory diseases, cardiovascular diseases, cancer, neurotoxicity, and even dementia diseases [7,8,9,10,11]. In addition, the long-term exposure to high-concentrations of air pollutants is even more harmful [12,13,14]. Therefore, analyzing the long-term spatial distributions of air pollution hazards (particularly PM2.5) will provide valuable information for protecting the health and safety of residents.

Over the past few years, China has repeatedly experienced extremely hazardous PM2.5 concentrations [15,16]. For example, on 19 October 2016, 11 provinces in China were severely affected by air pollutants. Moreover, many cities in western Taiwan are affected by both transboundary and local pollutants, and their air quality is very poor. As Taiwan’s geographical location is close to the southeast of China, it is also the main route for the cold high pressure traveling from China in winter; the transboundary pollutants from China may affect Taiwan’s air quality and the atmospheric circulation. In addition, local or regional sources of pollutants, such as transportation vehicles and factories, produce airborne particulate matter [17,18,19].

The spatial analysis of disaster potentials is a very important part of risk assessments. As assessing the risk of hazards is crucial for a timely evacuation, the analysis of disaster potentials has become very common. The Water Resources Agency of the Ministry of Economic Affairs of Taiwan and researchers have published and applied several generations of flood potential maps for many years [20,21]. In addition, in the Taiwan Central Geological Survey, researchers developed and applied soil liquefaction potential maps [22,23,24]. However, potential disasters caused by suspended particulate matter and the spatial characteristics of air pollution in the past have not been comprehensively investigated; i.e., no potential map of PM2.5 has been drawn before. In addition, a pollution potential map of various regions would provide valuable information.

Tourist attractions are important gathering places for people, particularly on holidays. Most visitors wish to relax and expect high air quality. Many researchers have studied the relationship between areas of interest and air quality; in particular, they have investigated the integration of low-cost air quality monitoring Internet of Things systems and air quality big data models [25,26,27,28,29,30]. Over the past few years, some Chinese researchers have analyzed the air pollution characteristics of certain specific tourist attractions [31,32]. However, the relationship between the overall tourist attractions and air quality has not been studied.

Hsinchu County in Taiwan has diversified industry, with equal emphasis on agriculture, industry, technology, businesses, and leisure tourism. In addition, Hsinchu County is adjacent to Hsinchu City and Hsinchu Science Park. The population and industry are developing rapidly, and large numbers of people enter Hsinchu County’s major tourism and recreation areas every holiday season. Therefore, high air quality around tourist attractions is very important. A previous study of the characteristics of air pollutants in Hsinchu has shown that the PM2.5, total PAHs (Polycyclic Aromatic Hydrocarbons), and BaPeq (benzo(a)pyrene equivalent) mass concentrations during the seasons had the following order: winter > autumn > spring > summer with significant seasonal variations [33]. Some early studies focused on the impacts of the large and dense high-tech industries in the Hsinchu Science Park on health and the environment [34,35,36]; in addition, the researchers considered the emissions of toxic compounds such as VOCs (Volatile Organic Compounds) and arsenical emissions; however, there have been few relevant studies in the past decade.

Therefore, the objective of this study was to investigate the exposure risks of tourist attractions based on the potential map of PM2.5 calculated by the exceedance probability and spatial estimation methods. In this study, the Hsinchu County area was taken as an example. Historical data of PM2.5 concentrations from the Taiwan Environmental Protection Administration (TWEPA) were used to analyze spatially the air pollution hazard potential of PM2.5 concentrations in Hsinchu County based on geographic information system (GIS) statistics. The potential threat of PM2.5 concentrations exceeding a certain standard was spatially investigated with the exceedance probability method; furthermore, the air pollution risk levels of areas with tourist attractions in Hsinchu County were determined. The analysis results of this study can be directly applied to other countries worldwide; they provide references for tourists, tourism resource management, and air quality management, and important information on the long-term health risks for local residents in the study area.

2. Materials and Methods

2.1. Study Area

The terrain of Hsinchu County is mainly composed of flat land, hills, and mountains. There are 13 administrative districts (towns and cities), and its development industries are diverse; they can be mainly classified into agriculture, industry (including science and high technology), commerce, and leisure tourism (Figure 1). Zhubei City is an important town in terms of commerce, economics, and politics; its industries develop high-tech electronics (such as in the Taiyuan Science and Technology Park). The inflow of industrial capital into Zhudong town comprises real estate capital and high-tech manufacturing capital. Like those of Zhubei City, its industries comprise mainly commerce and industry (such as the Industrial Technology Research Institute). The Hukou and Baoshan Townships have the most developed industries and are the production bases for the technology and manufacturing industries, such as the Hsinchu Industrial Park of the Industrial Development Bureau, the Ministry of Economic Affairs in Hukou Township, and high-tech companies such as Taiwan Semiconductor Manufacturing Company and other high-tech factories in Baoshan Township. Baoshan Reservoir and Baoshan Second Reservoir are important water resources for the Hsinchu Science Park. Moreover, the Emei and Wufeng Townships focus on agriculture (tea, oranges, peaches, and sweet persimmons). The Xinfeng, Xinpu, Qionglin, and Beipu Townships exhibit agricultural activities and the establishment of regional industrial zones for the industrial development. Guanxi town, Jianshi Township, and Hengshan Township focus mainly on agriculture and the development of tourism and leisure industries (such as Guanxi Grass, Neiwan Old Street, orchard sightseeing, and visits to the Taiwanese aboriginal people).

Figure 1.

Figure 1

Main industry types of 13 townships and cities in Hsinchu County.

To minimize the impacts of disasters, the disaster characteristics of local key industries are studied based on disaster potential data. The results should be sent to the local governmental agencies and key industries (such as the industrial and agricultural management units) in Hsinchu County as an important reference for disaster prevention. More importantly, improvements in areas with higher risks should be prioritized. The main disaster types faced in Hsinchu County can be roughly distinguished according to the topography. The administrative areas on flat land, such as the Zhudong, Hukou, and Xinpu Townships, may experience floods and droughts, and the mountainous administrative areas, such as the Jianshi and Wufeng Townships, can predominantly suffer from landslides or mudflows; in addition, the area close to the sea may face tsunamis. Owing to the development of industrial areas, the Hukou, Baoshan, and Qionglin Townships may suffer man-made disasters caused by toxic chemicals and air pollutants. The industrial characteristics and major and minor risks in the 13 towns and cities in Hsinchu County are summarized in Table 1.

Table 1.

Main industrial characteristics and potential disaster risks of 13 townships and cities in Hsinchu County.

District Industry Type Major Risk Minor Risk Other Risks
Zhubei City Commerce and industry Floods and droughts Toxic chemicals Tsunamis
Zhudong Township Commerce and industry Floods and droughts Landslides/mudflows
Hukou Township Industry Floods and droughts Toxic chemicals Air pollution
Baoshan Township Industry Landslides/mudflows Toxic chemicals Floods and droughts
Emei Township Agriculture Landslides/mudflows Floods and droughts
Wufeng Township Agriculture Landslides/mudflows Floods and droughts
Xinfeng Township Agriculture and industry Floods and droughts Toxic chemicals Air pollution or tsunamis
Qionglin Township Agriculture and industry Floods and droughts Landslides/mudflows Toxic chemicals
Beipu Township Agriculture and industry Landslides/mudflows Floods and droughts
Xinpu Township Agriculture and industry Floods and droughts Landslides/mudflows Toxic chemicals
Guanxi Township Agriculture and leisure tourism Floods and droughts Landslides/mudflows
Jianshi Township Agriculture and leisure tourism Landslides/mudflows Floods and droughts
Hengshan Township Agriculture and leisure tourism Landslides/mudflows Floods and droughts

2.2. Framework of Risk Analysis

The potential refers to the frequency or probability of the occurrence of disasters in an area; the determined potential can be used as a reference for future risk assessments. In this study, the hourly data of PM2.5 concentrations measured by the TWEPA in Taiwan in 2017 were used, and spatial interpolation was applied to estimate the hourly PM2.5 concentration of each grid point in the county. Subsequently, the probability that the PM2.5 concentration of each grid point exceeds the standard value statistically was calculated. The air quality index that corresponds to the unhealthy PM2.5 concentration for sensitive groups (35.4 μg/m3) was used as the concentration standard. This probability can be represented based on the exceedance probability of older data, which represents the spatial distribution of the potential of PM2.5. The analysis process is shown in Figure 2.

Figure 2.

Figure 2

Flow chart of the construction of an air pollution potential map and risk analysis.

After determining the spatial distribution of the air pollution potentials, the air pollution risk levels in various tourist areas in Hsinchu County were examined. As shown in Figure 2, the PM2.5 concentrations are based on data from the TWEPA’s Taiwan-wide air quality-monitoring stations from 2017; in addition, radial basis function (RBF) spatial interpolation was used to estimate the grid-like PM2.5 concentrations in the Hsinchu County area, and the exceedance probability method was applied to calculate the probability that the PM2.5 concentration of each grid point exceeds the standard. Finally, the potential air pollution risks in the areas of the major tourist attractions in Hsinchu County were examined. The PM2.5 concentration standard used in this study is based on the air quality index, which considers six levels: good, normal, unhealthy for sensitive groups, unhealthy for all people, very unhealthy, and hazardous. When the “unhealthy for sensitive groups” degree has been reached, it is generally recommended that residents reduce outdoor activities and prolonged vigorous exercise. Therefore, the PM2.5 concentration standard (35.4 μg/m3) corresponding to the “unhealthy air quality for sensitive groups” degree was used as the threshold. In this study, the analysis results of the probability that the PM2.5 concentration exceeds the standard were classified into eight levels. In addition, most areas of the Jianshi and Wufeng Townships are too far from the TWEPA’s air quality monitoring station (15 km from the monitoring station) and mainly in high mountainous terrain; thus, they were not included in the calculations.

2.3. Data Collection

First, the hourly PM2.5 concentrations collected by 76 air quality-monitoring stations of the TWEPA in Taiwan in 2017 were collected. The 327 datasets from areas with tourist attractions originate from the official open data website of the Hsinchu County Government, which were collected in 2019 (https://www.hsinchu.gov.tw/OpenDataDetail.aspx?n=902&s=272).

2.4. Spatial Analysis of Data

The PM2.5 concentrations throughout Taiwan were estimated with the data from the monitoring stations and RBF spatial interpolation method [37,38,39]. The RBF interpolation is one of the most precise interpolation methods. The interpolation function must pass through the observation value of each station and generate a smooth surface. RBF interpolation is a mesh-free method, constructing high-order accurate interpolants of unstructured data. It takes the form of a weighted sum of radial basis functions. In addition, the RBF interpolation method uses a symmetric function centered at each observation point and calculates the change in the distance from the observation point to obtain the weight of each function:

[φ(x0x0)φ(xnx0)φ(x0xn)φ(xnxn)][w0wn]=[f(x0)f(xn)] (1)

where φ is a centrosymmetric function and wn the weight of each function; the interpolation function f(xn) can be obtained by solving the equations.

The RBF interpolation method has a good effect on flat surfaces (for concentration diffusion, for instance). In this study, Taiwan was divided into approximately 32,000 grid points, the hourly PM2.5 concentration of each grid point was estimated with the RBF interpolation method, and the probabilities that the grid points exceed the concentration standard were determined; and finally, we cut and selected the study area of Hsinchu County; ESRI ArcGIS was used to calculate and draw the exceedance probability map. In this study, the exceedance probability of the hourly air pollution concentration was defined as the probability that the hourly data (of an entire year) exceed a certain concentration standard. The air quality index that corresponds to the unhealthy PM2.5 concentration for sensitive groups (35.4 μg/m3) was used as the concentration standard:

PE=NENall (2)

where PE is the exceedance probability, NE the number of times in which the hourly data exceed a certain concentration standard in one year, and Nall the total number of hourly data of one year. The research data were analyzed with Python and ESRI ArcGIS.

3. Results

3.1. Analysis of Air Pollution Potential

The PM2.5 concentration is greatly affected by meteorological factors; therefore, the data were investigated according to the different seasons (spring: March–May; summer: June–August; autumn: September–November; winter: December–February). The results are shown in Figure 3. The gray area is too far from the air quality station and was therefore excluded. The analysis results show that the pollution potential in spring (Figure 3a) and winter (Figure 3d) is higher; the probability that the standard concentration in all towns and cities is exceeded is 9.5%, particularly in spring when the Xinfeng and Hukou Townships have probabilities of more than 18%; the probability decreases from the northwest plain area to the southeast mountainous area. The pollution potential in summer and autumn is relatively low; the probability that the standard is exceeded in autumn is generally only approximately 5%. The potential in the northern area of Hsinchu County adjacent to Taoyuan City is higher. In summer, the probability does not exceed 1%, and the probability of pollution in the area near Zhudong Station is slightly higher. Figure 4 and Table 2 show the detailed boxplots and basic statistics of the exceedance probabilities of the 13 townships and cities in Hsinchu County, respectively.

Figure 3.

Figure 3

Distribution of PM2.5 potential in the study area in Hsinchu County in different seasons. Overall, 76 air quality-monitoring stations of the Taiwan Environmental Protection Administration (TWEPA) across the whole of Taiwan were used for spatial estimation, and we extracted the region of Hsinchu County for further analysis. (a) PM2.5 potential map in spring. (b) PM2.5 potential map in summer. (c) PM2.5 potential map in fall. (d) PM2.5 potential map in winter.

Figure 4.

Figure 4

Boxplot of exceedance probabilities of 13 townships and cities in Hsinchu County.

Table 2.

Basic statistics of exceedance probabilities of 13 townships and cities in Hsinchu County.

District Entire Year Spring Summer Fall Winter
Mean ± Standard Deviation (%)
Zhubei City 7.6 ± 0.4 12.1 ± 0.8 0.1 ± 0.1 4.9 ± 0.6 13.2 ± 0.6
Zhudong Township 6.8 ± 0.3 11.4 ± 0.7 0.5 ± 0.3 4.4 ± 0.3 11.1 ± 0.6
Hukou Township 8.9 ± 0.6 16.8 ± 1.7 0.3 ± 0.1 5.8 ± 0.5 12.9 ± 0.3
Baoshan Township 6.5 ± 0.2 10.2 ± 0.4 0.2 ± 0.1 4.2 ± 0.3 11.7 ± 0.5
Emei Township 6.4 ± 0.1 9.9 ± 0.2 0.3 ± 0.1 4.5 ± 0.2 10.9 ± 0.4
Wufeng Township 5.9 ± 0.2 9.6 ± 0.4 0.4 ± 0.1 4.2 ± 0.2 9.5 ± 0.3
Xinfeng Township 9.0 ± 0.4 16.6 ± 1.5 0.2 ± 0.1 6.3 ± 0.4 13.1 ± 0.3
Qionglin Township 7.2 ± 0.1 12.1 ± 0.3 0.7 ± 0.2 4.6 ± 0.2 11.6 ± 0.3
Beipu Township 6.5 ± 0.3 10.6 ± 0.6 0.5 ± 0.1 4.5 ± 0.1 10.5 ± 0.4
Xinpu Township 7.7 ± 0.2 13.2 ± 0.7 0.3 ± 0.1 4.8 ± 0.4 12.5 ± 0.2
Guanxi Township 7.3 ± 0.4 11.8 ± 0.8 0.7 ± 0.1 5.0 ± 0.2 11.8 ± 0.5
Jianshi Township 6.2 ± 0.2 9.8 ± 0.4 0.5 ± 0.1 4.4 ± 0.3 10.1 ± 0.3
Hengshan Township 6.8 ± 0.2 11.2 ± 0.5 0.8 ± 0.1 4.6 ± 0.1 10.8 ± 0.3

3.2. Risk Analysis of Areas with Tourist Attractions

The spatial distribution map of the PM2.5 potential was overlaid on a map of the various tourist areas in Hsinchu County; the most severe spring PM2.5 potential was chosen, as shown in Figure 5, Table 3 and Table 4. The results show that the probability that the standard is exceeded is greater than 18%; the areas with the most severe air pollution potential level (level 6) have three important tourist attractions: the Caixiang Trail, Xiansheng Temple, and Hukou Armored New Village (Village B). The areas of level 5 (16% to 18% chance of exceeding the standard) and level 4 (14% to 16% chance of exceeding the standard) potential—slightly higher potential—have 11 and 7 tourist attractions, respectively. The 11 tourist attractions with level 5 potential are Rongyuanpu Farm, Laohukou Catholic Church Cultural Center, Renhe Trail, Yao Art Street and Bicycle Taro, Hanqing Trail, Hukou Old Street, Xinfeng Sanyuan Temple, Yongning Temple, Chifu Wangye Temple, Hongmaogang Ecological Recreation Area, and Xinfengpuyuan Temple. Another 114 tourist areas are at level 3 (exceeding rates of 12% to 14%), and 124 tourist areas are at level 2 (exceeding rates of 10% to 12%); these locations still exhibit rates greater than 10% in spring (Table A1). These areas encounter a higher risk of air pollution with excessive PM2.5 concentrations. The highest air pollution potentials of the tourist attractions with levels 5 and 6 in Hsinchu County are shown in Table 4; they are located in the Hukou and Xinfeng Townships. As many tourist areas in Hsinchu County are located in hilly or mountainous areas, they are less exposed to PM2.5. Only the scenic spots in the Hukou and Xinfeng Townships experience relatively high PM2.5 concentrations. The detailed PM2.5 air pollution potential of each tourist attraction in Hsinchu County is shown in Appendix A.

Figure 5.

Figure 5

Distribution of PM2.5 potential in tourist areas in Hsinchu County in spring in 2017.

Table 3.

Levels of air pollution potential and numbers of affected tourist attractions.

Level of Air Pollution Potential Exceedance Probability Number of Tourist Attractions
0 (mild) Below 5% 34
1 5% to 10% 34
2 10% to 12% 124
3 12% to 14% 114
4 14% to 16% 7
5 16% to 18% 11
6 18% to 20% 3
7 (severe) More than 20% 0

Table 4.

Highest air pollution potentials of tourist attractions—levels 5 and 6—in Hsinchu County.

Number Name District Longitude Latitude Level of Air Pollution Potential
1 Caixiang Trail Hukou Township 121.02028 24.891221 6
2 Xiansheng Temple Hukou Township 121.047989 24.902892 6
3 Hukou Armored New Village (Village B) Hukou Township 121.047808 24.904483 6
4 Rongyuanpu Farm Hukou Township 121.0442 24.8754 5
5 Laohukou Catholic Church Cultural Center Hukou Township 121.05516 24.87657 5
6 Renhe Trail Hukou Township 121.058497 24.877032 5
7 Yao Art Street and Bicycle Taro Hukou Township 121.0575 24.8773 5
8 Hanqing Trail Hukou Township 121.05192 24.877399 5
9 Hukou Old Street Hukou Township 121.052612 24.877742 5
10 Xinfeng Sanyuan Temple Xinfeng Township 120.9979 24.8999 5
11 Yongning Temple Xinfeng Township 120.985265 24.90248 5
12 Chifu Wangye Temple Xinfeng Township 120.9764 24.9102 5
13 Hongmaogang Ecological Recreation Area Xinfeng Township 120.976365 24.910229 5
14 Xinfengpuyuan Temple Xinfeng Township 120.977599 24.924916 5

3.3. Analysis of Population Density and Air Pollution Exposure Risk

Moreover, the PM2.5 potential spatial distribution map was investigated based on the population density of each township in Hsinchu County (Table 5) to analyze the long-term air pollution exposure risks for residents. According to Figure 6, the population density is correlated with the PM2.5 potential distribution. The Pearson correlation coefficient between the PM2.5 potential and population density in towns throughout the year is 0.44. If it is explored according to the season, the correlation coefficients between the PM2.5 potential and population density in spring, summer, autumn, and winter are 0.36, −0.46, 0.34, and 0.64, respectively. Zhubei City (3885.10 persons per square kilometer), Zhudong town (1811.10 persons per square kilometer), Hukou Township (1325.41 persons per square kilometer), and Xinfeng Township (1226.25 persons per square kilometer) have higher population densities than the remaining areas and therefore higher PM2.5 potentials. A high population density reflects the degree of development and traffic in the city. According to Figure 7, the main industrial areas of Hsinchu County are mostly concentrated in these towns and villages and the main source of pollution. Owing to the prevailing northeast monsoon conditions in winter, these areas have higher pollution risks. Although many tourist attractions are not located in the areas with high air pollution potentials, many residents live in areas with relatively high air pollution potentials for a long time.

Table 5.

Population density of each township in Hsinchu County in 2020.

District Population Density (Persons/km2)
Zhubei City 3885.10
Zhudong Township 1811.10
Hukou Township 1325.41
Baoshan Township 224.58
Emei Township 118.33
Wufeng Township 20.02
Xinfeng Township 1226.25
Qionglin Township 491.86
Beipu Township 185.33
Xinpu Township 462.87
Guanxi Township 230.21
Jianshi Township 18.09
Hengshan Township 196.89

Figure 6.

Figure 6

PM2.5 potential distribution and population density of each township in Hsinchu County.

Figure 7.

Figure 7

Map of industrial areas and air quality stations.

4. Discussion

The change in and accumulation, diffusion, and transmission of PM2.5 concentrations are greatly affected by the meteorological conditions or weather patterns [40,41,42]. The analysis results of the air pollution potentials in Figure 3 are consistent with the general air pollution season in Taiwan (winter and spring). The main reason is that the main prevailing wind in Taiwan in winter and spring is the northeast monsoon; thus, the western half is not affected because of the mountains. The leeward places are likely to experience accumulations of pollutants, particularly central and southwestern Taiwan [41,43,44]. Furthermore, the northeast monsoon tends to bring foreign pollutants from west China into this area [45]. Therefore, the Xinfeng and Hukou areas in Hsinchu County have the highest pollution potentials in winter and spring. In addition, Hsinchu Industrial Park lies in the Xinfeng and Hukou area, and the northern region is close to major stationary pollution sources, such as Taoyuan Youth Industrial Park, Pingjhen Industrial Park, and Yongan Industrial Park (Figure 7). Zhubei City and Hsinchu Science Park in the south are densely populated areas with long-term traffic congestion and are the main sources of mobile pollution in Hsinchu County and Hsinchu City [34,35,36,46]. Both spring and winter are high-pollution seasons, but spring exhibits more evident pollution sources (Figure 3).

In order to further compare the PM2.5 potential distribution in different years, in addition to Figure 5 showing 2017, Figure 8 shows the dynamic distributions of PM2.5 potential in tourist areas in Hsinchu County in spring in 2018 and 2019. They show spatial distributions similar to 2017, and Xinfeng and Hukou also have the highest potential. However, it is obvious that the overall probability of PM2.5 exceeding the standard has been declining in the entire region in recent years. In addition to the influences of meteorological conditions in different years, it may be due to the implementation of government policies and the increase in people’s awareness of environmental protection.

Figure 8.

Figure 8

Dynamic distribution of PM2.5 potential in tourist areas in Hsinchu County in spring in (a) 2018 (b) 2019.

Moreover, Xinpu, Guanxi, Qionglin, Baoshan, Emei, and Beipu are dominated by hilly land; this less densely populated area exhibits agricultural, industrial, and touristic activities; thus, the air quality is evidently better than in other areas in all seasons. The Hengshan, Jianshi, and Wufeng Townships have mostly mountainous terrain, and the populations are sparser; consequently, they have the best air quality. In addition, because the west side of Hsinchu is adjacent to the sea and the east side exhibits mostly hilly terrain, the topographical effect is affected by the prevailing wind and major sources of emissions in the air pollution season [47]. Therefore, air pollutants in Hsinchu accumulate easily in the relatively flat plains, such as in Xinfeng and Hukou, which is consistent with the results of this study. Some researchers have investigated the impacts of terrain effects on air pollution [48], particularly the basin effects [49,50]; some researchers have used geostatistical models to estimate the PM2.5 concentrations [51]. Fortunately, most of the tourist areas in Hsinchu County are located in areas with lower PM2.5 air pollution potentials, and the areas with higher air pollution potentials are mostly those with industrial and technological activities. Nevertheless, the areas with high pollution potentials have higher population densities. A high population density leads to more emission sources. Some researchers have used the spatial econometric model to investigate the relationship between the population density and air pollution in Chinese cities; they have discovered a significant positive correlation between the population density and PM2.5 concentration [52,53], which is consistent with the results of this study.

5. Conclusions

In this study, an air pollution potential map was constructed. The results show that the potentials of different seasons are quite different. The most severe air pollution seasons are spring and winter, whereas summer exhibits the best air quality. Xinfeng and Hukou Townships in Hsinchu County have the highest potential (approximately 18%). Hukou Old Street, which is the most famous tourist attraction, has a relatively high pollution risk. The population density is positively correlated with the PM2.5 potential distribution in most seasons, except for summer. In this study, the hazard potential levels of PM2.5 concentrations exceeding a certain standard were investigated; the exceedance probability and the air pollution potential levels of various tourist areas in Hsinchu County were examined. However, the information on tourist attractions considered in this research study is limited and based on only few important attractions. The air pollution potential map can be combined with more detailed tourist attraction maps in the future. In addition, the map can be applied to investigate the impacts of pollution on schools, elderly people, hospitals, and nurseries to determine their potential long-term exposure risks. Although the study area in Hsinchu County has only three important tourist attractions with the most severe air pollution potential levels (level 6), there are still many schools and residents in these areas.

In the future, a map for the entire country will be constructed; the proposed framework can be directly applied to other countries worldwide. In addition, the spatial and temporal changes in the air pollution potential during different years can be analyzed, and the air pollution data of one year can be expanded to more than five or ten years. In addition to reducing the possibility of being more extreme in certain years, understanding the temporal changes in the spatial distribution of the pollution potentials is more effective for assessing dynamic risks. In addition to providing a reference for tourists, the results provide information on the long-term health risks for local residents in the study area.

Acknowledgments

In addition, we are thankful for the cooperation of the Research Center for Hazard Mitigation and Prevention of the National Central University, the Fire Bureau, Hsinchu County Government, and the National Science and Technology Center for Disaster Reduction (NCDR). The ESRI ArcGIS tool and Python and its modules served as powerful tools in our data analysis.

Appendix A

Table A1.

Detailed air pollution potential of each tourist attraction in Hsinchu County.

Number Name District Longitude Latitude The Level of Air Pollution Potential
1 Caixiang trail Hukou Township 121.02028 24.891221 6
2 Xiansheng Temple Hukou Township 121.047989 24.902892 6
3 Hukou Armored New Village (Village B) Hukou Township 121.047808 24.904483 6
4 Rongyuanpu Farm Hukou Township 121.0442 24.8754 5
5 Laohukou Catholic Church Cultural Center Hukou Township 121.05516 24.87657 5
6 Renhe Trail Hukou Township 121.058497 24.877032 5
7 Yao Art Street and Bicycle Taro Hukou Township 121.0575 24.8773 5
8 Hanqing Trail Hukou Township 121.05192 24.877399 5
9 Hukou Old Street Hukou Township 121.052612 24.877742 5
10 Xinfeng Sanyuan Temple Xinfeng Township 120.9979 24.8999 5
11 Yongning Temple Xinfeng Township 120.985265 24.90248 5
12 Chifu Wangye Temple Xinfeng Township 120.9764 24.9102 5
13 Hongmaogang Ecological Recreation Area Xinfeng Township 120.976365 24.910229 5
14 Xinfengpuyuan Temple Xinfeng Township 120.977599 24.924916 5
15 Golden World Leisure Farm Xinpu Township 121.022115 24.853193 4
16 Pinewood Brick and Tile Exhibition Hall Xinfeng Township 120.990757 24.868983 4
17 Hukou Tourist Tea Garden Hukou Township 121.0779 24.8729 4
18 Xinfeng Golf Course Xinfeng Township 120.976496 24.882496 4
19 Zaixing Golf Course Hukou Township 121.091008 24.883679 4
20 Xinfeng Wetland Xinfeng Township 120.9719 24.9072 4
21 Xinfeng Seawall Xinfeng Township 120.97 24.9075 4
22 Yuquanshan Puzhao Temple Zhudong Township 121.082939 24.732835 3
23 Luliaokeng Trail Qionglin Township 121.116898 24.733726 3
24 Forest Park Trail Zhudong Township 121.084495 24.73457 3
25 Tree Qilin Cultural Center Zhudong Township 121.095789 24.735623 3
26 Touqianxi Ecological Park Zhudong Township 121.099787 24.736033 3
27 Five Harmony Temple Qionglin Township 121.1201 24.7364 3
28 Zhudong Central Market Zhudong Township 121.091482 24.736809 3
29 Ruanqiao Rainbow Village Zhudong Township 121.091482 24.736809 3
30 Zhudong Forestry Exhibition Hall Zhudong Township 121.093314 24.736851 3
31 Zhudong Forestry Exhibition Hall Zhudong Township 121.093314 24.736851 3
32 Ue Pine Wood Bamboo East Branch Office Zhudong Township 121.0932 24.7373 3
33 Draw a new page Zhudong Township 121.094026 24.737928 3
34 Zhudong Railway Station Zhudong Township 121.094831 24.738177 3
35 Zhudong City Bike Path Zhudong Township 121.094742 24.738245 3
36 Flower World Play Cloth Workshop Zhudong Township 121.08613 24.738522 3
37 Xiao Rusong Art Park Zhudong Township 121.088201 24.739425 3
38 Xiao Rusong Former Residence Complex Zhudong Township 121.088201 24.739425 3
39 Huangcheng Bamboo Curtain Cultural Center Zhudong Township 121.091755 24.739675 3
40 Ganlu Temple Zhudong Township 121.080823 24.744548 3
41 Juqing Zhudong Township 121.0856 24.745265 3
42 Mingguan Art Museum Zhudong Township 121.080119 24.745529 3
43 Duanmu Shiitake Mushroom Farm Qionglin Township 121.140157 24.747489 3
44 Luliaokeng Mushroom Farm Qionglin Township 121.1402 24.7475 3
45 Zhubei. Zhudongtou Qianxi Bicycle Path Qionglin Township 121.094635 24.749005 3
46 Jiujiu Health Tomato Museum Qionglin Township 121.095419 24.751802 3
47 Xionglin Luliaokeng Bell Room Qionglin Township 121.140648 24.758295 3
48 Fulin Farm Qionglin Township 121.090064 24.761744 3
49 Feifeng Wenchang Qionglin Township 121.091294 24.762308 3
50 Shiming Tomato Farm Guanxi Township 121.173188 24.765512 3
51 Wenlin Court Qionglin Township 121.0826 24.7733 3
52 Deng Yuxian Music and Culture Memorial Park Qionglin Township 121.085126 24.773326 3
53 Zhiliaowo Papermaking Workshop Qionglin Township 121.082624 24.780282 3
54 Jin Yong DIY Tomato Farm Guanxi Township 121.180745 24.782149 3
55 Jin Guangfu Mansion Guanxi Township 121.176841 24.78657 3
56 Luo Wu College Guanxi Township 121.175658 24.787931 3
57 Guanxi Windward Museum Guanxi Township 121.183708 24.788557 3
58 Guanxi Taiwan Black Tea Company Guanxi Township 121.175753 24.791305 3
59 Taiwan Red Tea Cultural Center Guanxi Township 121.175753 24.791305 3
60 Guanxi Donganqiao Guanxi Township 121.178174 24.791512 3
61 Instant burned grass, natural ancient flavor [Agricultural good companion 1. Guanxi Town Farmers’ Association Tour] Guanxi Township 121.176829 24.791634 3
62 Guanxi Niulan River Bicycle Path Guanxi Township 121.180862 24.792248 3
63 Guanxi Catholic Church Guanxi Township 121.176419 24.794329 3
64 Xinbao Tourist Orchard Xinpu Township 121.085477 24.796986 3
65 Pinglin Hiking Trail Guanxi Township 121.14066 24.80115 3
66 Mingdeng Ancient Road Guanxi Township 121.187 24.802 3
67 Guanxi Town Farmers’ Association Xiancao Processing Factory Guanxi Township 121.162535 24.8029 3
68 Yuanhe Temple Guanxi Township 121.135645 24.803515 3
69 Daluo Strawberry Farm Guanxi Township 121.160606 24.803821 3
70 Fukuda Strawberry Farm Guanxi Township 121.160099 24.804235 3
71 Gaoping Tomato Farm Guanxi Township 121.152527 24.805734 3
72 Gillian Strawberry Farm Guanxi Township 121.144999 24.805949 3
73 Lu Ji Farm Guanxi Township 121.144999 24.805949 3
74 Shiquan Farm Guanxi Township 121.144999 24.805949 3
75 Da Asah Valley Orchid Farm Guanxi Township 121.140345 24.809045 3
76 Xiangzhangyuan Leisure Farm Xinpu Township 121.080152 24.810143 3
77 Agen Strawberry Farm Guanxi Township 121.116085 24.816814 3
78 Shuangyuan Leisure Farm Zhubei City 121.0357 24.8239 3
79 Leofoo Village Theme Park Guanxi Township 121.180728 24.824679 3
80 Yunhai Leisure Tea Factory Guanxi Township 121.162268 24.824891 3
81 Xiaolixi Bicycle Path Xinpu Township 121.087924 24.825068 3
82 Yuanxin Persimmon Guanxi Township 121.1168 24.8254 3
83 Guannanyangtang Tang House Guanxi Township 121.114123 24.82637 3
84 Xinpu Liu Family Ancestral Hall Xinpu Township 121.075093 24.827271 3
85 Xinpu Zhu Family Temple Xinpu Township 121.076351 24.827356 3
86 Xinpu Pan House Xinpu Township 121.075982 24.827584 3
87 Sky, People, Things, I-Whole People Xinpu Xinpu Township 121.071 24.828 3
88 Zhaomen Agricultural Recreation Area Xinpu Township 121.071278 24.828042 3
89 Xinpu Elementary School Principal Dormitory Xinpu Township 121.079223 24.828081 3
90 Happy childhood Xinpu Township 121.079138 24.828126 3
91 Zhu Jincheng Studio Xinpu Township 121.036754 24.82826 3
92 Wow, delicious persimmon! Xinpu Township 121.074935 24.828382 3
93 Xinpu Chen’s Ancestral Hall Xinpu Township 121.076451 24.828393 3
94 Xinpu Fan Family Temple Xinpu Township 121.07597 24.828541 3
95 Xinpu Lin Family Temple Xinpu Township 121.0761 24.8292 3
96 Comic Art Square Xinpu Township 121.073196 24.829343 3
97 Yiyuan Hakka Cuisine Guanxi Township 121.122728 24.830801 3
98 New farmers market Xinpu Township 121.087698 24.831114 3
99 Sansheng Temple Xinpu Township 121.098799 24.831432 3
100 Flying Dragon Hiking Trail Xinpu Township 121.098799 24.831432 3
101 Persimmon Dyeing Workshop Xinpu Township 121.079142 24.833894 3
102 Zhubei Tianhou Temple Zhubei City 121.011231 24.835694 3
103 Shaotanwo Old Road Xinpu Township 121.049186 24.837801 3
104 Wu Zhuoliu’s Former Residence Xinpu Township 121.109831 24.838011 3
105 Xinpu Shangfangliao Liu House Xinpu Township 121.04949 24.838082 3
106 Chunhe Farm Xinpu Township 121.039527 24.838179 3
107 The happy persimmon feeling blown by the wind Xinpu Township 121.076663 24.840959 3
108 Barbarian’s Fortune Land Zhubei City 120.997423 24.841493 3
109 Fengshanxi Fangliao Village Bicycle Path Xinpu Township 121.0442 24.8416 3
110 Zhubei Citizen Farm Zhubei City 120.998011 24.842051 3
111 Xinpu Baozhong Pavilion Xinpu Township 121.036271 24.843354 3
112 Jinhan Dried Persimmons, Arrow Bamboo Nest, Orchard, Zhulan Garden” Rural Regeneration Tour of Daping Community, Xinpu 1 Xinpu Township 121.078579 24.844258 3
113 Drying Persimmon in Jinhan Farm Xinpu Township 121.078578 24.84426 3
114 Shangpinxiang Orchard Xinpu Township 121.069021 24.84437 3
115 Li Village Farm Xinpu Township 121.0715 24.84738 3
116 Zhaomen Trail Group-Huaizu Trail Xinpu Township 121.105264 24.848389 3
117 Fuming New Farm Xinpu Township 121.101378 24.849639 3
118 Lin Family Orchard Xinpu Township 121.101759 24.851476 3
119 Gou Bei Kiln Studio Zhubei City 120.985133 24.852155 3
120 Nanping, Beipingli Bicycle Path Xinpu Township 121.0864 24.8525 3
121 Bamboo Garden Xinpu Township 121.101963 24.852972 3
122 Crossing the Borders and Traveling in the North Country Scenery ~ Winter’s Jingu Farm Xinpu Township 121.105574 24.854441 3
123 Fuxiang Cactus Succulent Botanical Garden Xinpu Township 121.092191 24.855623 3
124 Liujiazhuang Braised Chicken Xinpu Township 121.105662 24.856742 3
125 Zhoujiazhuang Sightseeing Farm (Recreation Inn) Xinpu Township 121.1042 24.857374 3
126 Red Dragon Fruit Sightseeing Orchard Zhubei City 120.96128 24.858706 3
127 Chenjia Farm Xinpu Township 121.103731 24.860894 3
128 Zhaomen Trail Group-Guannan Trail Xinpu Township 121.1037 24.8609 3
129 Wind movement, Jinghai, Xiange Zhubei City 120.963966 24.861473 3
130 Zhubei‧Binhai Recreation Area Zhubei City 120.946333 24.865234 3
131 Tiande Temple Xinfeng Township 120.9797 24.8675 3
132 Zhubei Coastal Forest Conservation Area Zhubei City 120.95143 24.87045 3
133 Lianhua Temple Zhubei City 120.961164 24.876555 3
134 Fengqi Sunset Zhubei City 120.961164 24.876555 3
135 Zhubei Lotus Temple Wetland Zhubei City 120.9612 24.8766 3
136 Sakura Forest Leisure Farm Wufeng Township 121.092207 24.63246 2
137 Liangshan Tribe Wufeng Township 121.1236 24.6451 2
138 Shangrui Orange Garden Zhudong Township 121.1151 24.6626 2
139 Beipu Cold Spring Beipu Township 121.072811 24.663056 2
140 Shangping Old Street Zhudong Township 121.093986 24.66359 2
141 Youdian Grass Ecological Farm Beipu Township 121.05329 24.67397 2
142 Huisen Natural Leisure Farm Beipu Township 121.0545 24.6744 2
143 Riding a Dragon Hengshan Township 121.150594 24.68251 2
144 Dashanbei Leisure Farm Hengshan Township 121.150594 24.68251 2
145 Emei Catholic Church Emei Township 121.021722 24.688162 2
146 Emei Catholic Church Emei Township 121.021722 24.688162 2
147 Mingsheng Ecological Leisure Farm Beipu Township 121.041911 24.688309 2
148 Emei Lake Scenic Area Emei Township 121.019586 24.688769 2
149 Dangui Temple Emei Township 121.021527 24.688846 2
150 Emei Elementary School Emei Township 121.020109 24.688953 2
151 Dahu Mountain Forest Beipu Township 121.087718 24.690279 2
152 Bamboo Yucha Reed Sweet Potato Beipu Township 121.041675 24.692211 2
153 Summer Garden Organic Farm Zhudong Township 121.102428 24.69276 2
154 King Kong Temple Beipu Township 121.044 24.6928 2
155 North Point Suspension Bridge Jianshi Township 121.202652 24.696684 2
156 Maike Tianyuan Leisure Farm Beipu Township 121.042268 24.697066 2
157 Beipu Jiang Family Temple Beipu Township 121.056501 24.697733 2
158 Xiaomi decorative artwork Jianshi Township 121.205046 24.698166 2
159 Deng Nanguang Image Memorial Hall Beipu Township 121.058038 24.698537 2
160 Deng Nanguang Image Memorial Hall Beipu Township 121.058038 24.698537 2
161 Beipu Zhongshu Church Beipu Township 121.057879 24.698851 2
162 Dashanbei Leshantang Hengshan Township 121.139447 24.699327 2
163 Chen Yongbin Woodworking DIY Studio Beipu Township 121.04361 24.699473 2
164 Xiuluan Park Beipu Township 121.0601 24.6996 2
165 Beipu Old Street, Nanpu Village Bicycle Path Beipu Township 121.057392 24.6997 2
166 Green World Leisure Farm Beipu Township 121.072648 24.699712 2
167 Beipu Citian Temple Beipu Township 121.058449 24.699739 2
168 Beipu Township “Farmers Direct Sales Station” Beipu Township 121.055402 24.70079 2
169 Erliao Shenmu Beipu Township 121.056389 24.702038 2
170 Wuzhi Shan Scenic Area Beipu Township 121.056389 24.702038 2
171 Neiwan Old Street Hengshan Township 121.1322 24.7025 2
172 Sharing and glory Jianshi Township 121.199393 24.70343 2
173 Huazhouyuan Puppet Theater Hengshan Township 121.180842 24.704501 2
174 Jianshiyan Jianshi Township 121.201251 24.705095 2
175 Da Ba Jianshan Jianshi Township 121.201251 24.705095 2
176 Aboriginal Cultural Relics Museum of Jianshi Township Jianshi Township 121.201251 24.705095 2
177 Neiwan Station Hengshan Township 121.182277 24.705331 2
178 Xiaojiao’s Cheering Paradise Hengshan Township 121.182277 24.705331 2
179 Riverbank Hot Springs Hengshan Township 121.175728 24.705483 2
180 Water Moon Bay Wonderland Hengshan Township 121.180002 24.705915 2
181 Neiwan Police Station Hengshan Township 121.182453 24.706254 2
182 Neiwan Catholic Church Hengshan Township 121.18067 24.706336 2
183 Guangji Temple Hengshan Township 121.181782 24.706458 2
184 Jack and the Magic Bean Hengshan Township 121.169889 24.706619 2
185 Inner Bay Suspension Bridge Hengshan Township 121.180469 24.706837 2
186 Ancient Trojan Horse Road Hengshan Township 121.183028 24.707095 2
187 Tenren Rock House Hengshan Township 121.1665 24.7105 2
188 Toyota Village, Baishi Lake Bicycle Path Hengshan Township 121.166472 24.710547 2
189 Watermelon Manor Cultural Education Park Beipu Township 121.059063 24.715161 2
190 Watermelon Manor Beipu Township 121.059063 24.715161 2
191 Fengxiang Waterfall Recreation Area Hengshan Township 121.142277 24.715778 2
192 Youluo Valley Hengshan Township 121.142277 24.715778 2
193 Hexin, Hexing, everyone agrees Hengshan Township 121.15353 24.716795 2
194 Hexing Station Hengshan Township 121.15353 24.716795 2
195 Fugui Station Hengshan Township 121.15346 24.717244 2
196 Inspiration Pumping Truck Hengshan Township 121.121782 24.717573 2
197 Cihuitang Zhudong Township 121.074723 24.721329 2
198 Boss Leisure Farm Hengshan Township 121.131424 24.726749 2
199 Shishang Hot Spring Jianshi Township 121.222791 24.730172 2
200 Baoshan Golf Course Baoshan Township 120.943582 24.73083 2
201 Wax Candle Art House Baoshan Township 120.960506 24.730999 2
202 Jianshih Lavender Cottage Jianshi Township 121.233957 24.733288 2
203 Fusha Osaki Trail Hengshan Township 121.1658 24.735299 2
204 Petite Teresa Church Baoshan Township 120.9689 24.7356 2
205 Baoshan Sugar Factory Bicycle Road Line Baoshan Township 120.970236 24.735987 2
206 Wetland farm Qionglin Township 121.14539 24.736695 2
207 Songtao Tianyuan Leisure Farm Baoshan Township 121.020534 24.736961 2
208 Baoshan Reservoir and Baoshan Second Reservoir Baoshan Township 121.038856 24.738962 2
209 Nine Dragon Temple Baoshan Township 120.974491 24.747297 2
210 Xuyang Golf Course Guanxi Township 121.183553 24.747565 2
211 Shahuli Art Village Baoshan Township 121.044635 24.750122 2
212 Lord Guanxi Golf Course Guanxi Township 121.197329 24.752341 2
213 Blonde Pitaya Farm Guanxi Township 121.169523 24.752877 2
214 Double-vitality-hope Zhudong Township 121.055347 24.765024 2
215 Goyulang Tribe Guanxi Township 121.241998 24.766027 2
216 Huashan Leisure Farm Guanxi Township 121.178748 24.766915 2
217 Mountain Creek Golf Course Guanxi Township 121.211636 24.767379 2
218 Zhudong Dazhen Zhudong Township 121.056815 24.767488 2
219 Jin Geum Shan Yimin Temple Guanxi Township 121.22436 24.767702 2
220 Guanxi Bat Cave Guanxi Township 121.224211 24.767959 2
221 Shenjing Village Tea Garden District Baoshan Township 120.999394 24.76848 2
222 Baohu Suspension Bridge. Bihu Suspension Bridge Baoshan Township 120.999394 24.76848 2
223 Geumsan Shiitake Farm Guanxi Township 121.229277 24.770571 2
224 Two monuments at Zhudongtou Zhudong Township 121.029867 24.780819 2
225 Sleepy bear Zhudong Township 121.030683 24.781257 2
226 Li Yi Golf Course Guanxi Township 121.190366 24.783718 2
227 Jin Guangcheng Cultural Center Guanxi Township 121.212456 24.788457 2
228 Xionglin. Six bicycle lanes Qionglin Township 121.074692 24.790157 2
229 Shiniu Mountain Trail Guanxi Township 121.253322 24.793516 2
230 Mercy Farm Guanxi Township 121.231258 24.798199 2
231 Lonely Odoby Zhubei City 121.03933 24.807568 2
232 The birth of new Gila Zhubei City 121.03933 24.807568 2
233 Hsinchu High Speed Rail Station Zhubei City 121.040226 24.808196 2
234 Zhubei Tongdetang Zhubei City 121.047616 24.809173 2
235 Zhubei Liuzhanglilin Family Shrine Zhubei City 121.0222 24.8107 2
236 Zhubei Six Zhangli Doctor Zhubei City 121.02444 24.810887 2
237 Four-sided view Zhubei City 121.035146 24.811017 2
238 Xinwawu Hakka Culture Preservation Area Zhubei City 121.026943 24.811667 2
239 Zhubei Liuzhangli Zhongxiao Hall (No. 13 Dongpingli) Zhubei City 121.025204 24.811753 2
240 Zhubei Liuzhangli asked the auditorium Zhubei City 121.02511 24.811791 2
241 Chubei Quanzhou Chuo Fenyang Hall Zhubei City 121.017008 24.816685 2
242 Bodhi Love Zhubei City 121.031998 24.820934 2
243 Zhubei Stadium Zhubei City 121.022673 24.821273 2
244 Litou Mountain Trail Xinpu Township 121.045586 24.821301 2
245 Zhubei Liuzhangli Zhongxiao Hall (No. 18, Dongpingli) Zhubei City 121.0142 24.8221 2
246 Zhubei County Fuyuan Zhubei City 121.015146 24.824672 2
247 Lianhua Temple Zhubei City 121.025643 24.825271 2
248 Zhubei Lianhua Temple Zhubei City 121.025643 24.825271 2
249 Time story Zhubei City 121.01073 24.826267 2
250 Hsinchu County Government Zhubei City 121.0129 24.8269 2
251 Zhubei Guangming Commercial District Zhubei City 121.019572 24.828918 2
252 Collection, Fenghua Zhubei City 121.012496 24.830096 2
253 Hsinchu County Art Museum Zhubei City 121.012496 24.830096 2
254 Hsinchu County History Museum Zhubei City 121.012496 24.830096 2
255 Hsinchu County History Museum Zhubei City 121.012496 24.830096 2
256 Dingfeng Bee Farm Zhubei City 120.992908 24.833797 2
257 Li Longquan Multi-art Space Zhubei City 120.986656 24.836262 2
258 Niupu Creek‧Mangrove Scenic Area Zhubei City 120.948543 24.851247 2
259 Tokai Organic Lime Garden Zhubei City 120.947401 24.853197 2
260 Guize Mountain Trail Wufeng Township 121.123057 24.614147 1
261 Wufeng Liangshan Camping Area Wufeng Township 121.102357 24.615732 1
262 Saixia Basdaai Festival Wufeng Township 121.0994 24.6225 1
263 Guyan Waterfall Wufeng Township 121.12403 24.624802 1
264 Bamboo Forest Health Village Cooperative Wufeng Township 121.120559 24.625633 1
265 Maibari tribe Wufeng Township 121.120672 24.625933 1
266 Fairy Lake Camping Area Wufeng Township 121.116313 24.626549 1
267 Shengying Farm and Aboriginal Rattan Weaving Wufeng Township 121.143845 24.631032 1
268 Qingquan Scenery Area Wufeng Township 121.119632 24.632065 1
269 Bailan Tribe Wufeng Township 121.119632 24.632065 1
270 Heping Tribe Recreational Agriculture Area Wufeng Township 121.119632 24.632065 1
271 Saixia Dwarf Spirit Festival Wufeng Township 121.119632 24.632065 1
272 Meihouman Waterfall Wufeng Township 121.157475 24.649665 1
273 Wan Fo An Emei Township 121.02287 24.65199 1
274 Shuilian Bridge Trail Emei Township 121.024447 24.655557 1
275 Lion Mountain Trail Emei Township 121.024447 24.655557 1
276 Tianhu Farm Jianshi Township 121.179965 24.668714 1
277 Song Yunxuan Coffee House Emei Township 120.991693 24.668766 1
278 Plum Blossom Villa Jianshi Township 121.195189 24.674083 1
279 Shiliiao Leisure Agricultural Park Emei Township 120.986031 24.675063 1
280 Emei Lake, Twelve Liao, Shishan Visitor Center Bicycle Path Emei Township 120.985319 24.6794 1
281 Little Raindrop Art Space Emei Township 120.974407 24.688101 1
282 Emei Fuxing Tea Factory (including the House of Lu Kingdom and Zeng Zhengzhang) Emei Township 120.971711 24.688161 1
283 Shen Dongning Studio Emei Township 121.0094 24.6909 1
284 Fuxing Tea Exhibition Center Emei Township 120.986019 24.69716 1
285 Dance of Youth Emei Township 120.998063 24.715319 1
286 Fengcheng Charcoal Kiln (House of Charcoal) Baoshan Township 120.997016 24.721236 1
287 Dongkeng Xinfeng Temple Baoshan Township 120.980247 24.722726 1
288 Sanfeng Farmers’ Orchard Baoshan Township 120.997522 24.724663 1
289 Dongkeng Bogong Temple Baoshan Township 120.985804 24.731756 1
290 Nun temple Baoshan Township 120.977819 24.750516 1
291 Baosheng Temple Baoshan Township 121.009258 24.750518 1
292 Sunfull Temple Baoshan Township 120.990303 24.765395 1
293 Baoshan Ecological Farm Pond Baoshan Township 120.991274 24.765525 1
294 Baxian Waterfall Wufeng Township 121.095289 24.534444 0
295 Cinsbus Giant Trees Jianshi Township 121.296087 24.54063 0
296 Town West Fort Church Jianshi Township 121.3024 24.5731 0
297 Huang Guanglai Greenhouse Honey Peach Garden (Duanmu Mushroom Garden) Jianshi Township 121.301585 24.573782 0
298 Sanmao Residence Wufeng Township 121.105808 24.573931 0
299 Qingquan Hot Spring Wufeng Township 121.105564 24.574473 0
300 Taoshan Elementary School Wufeng Township 121.106182 24.57514 0
301 Leha Mountain Farm Camping Area Wufeng Township 121.0799 24.5753 0
302 Guanwu National Forest Recreation Area Wufeng Township 121.113756 24.575489 0
303 Qingquan Catholic Church Wufeng Township 121.10381 24.576976 0
304 Yuanyang Lake Natural Ecological Conservation Area Jianshi Township 121.406221 24.577652 0
305 People have sculpture park Wufeng Township 121.107493 24.579401 0
306 Bailan Leisure Agriculture Area Wufeng Township 121.087456 24.579457 0
307 Xinguang Tribe Jianshi Township 121.3032 24.5799 0
308 Xiweng Waterfall Wufeng Township 121.1481323 24.5915394 0
309 Taoshan Tunnel Wufeng Township 121.108272 24.600923 0
310 Tianyue Farm Wufeng Township 121.095966 24.603535 0
311 Shanshang Renjia Leisure Farm Wufeng Township 121.089037 24.604624 0
312 Liying Mountain Trail Jianshi Township 121.3338 24.6526 0
313 Jianshi TAPUNG Castle (Li Wei Aiyong Supervision Office) Jianshi Township 121.322805 24.660641 0
314 Jinmei Suspension Bridge Jianshi Township 121.207775 24.670304 0
315 Natural Valley Hot Spring Jianshi Township 121.2696 24.6718 0
316 Secret Garden Coffee Garden Jianshi Township 121.251724 24.677793 0
317 Shanqing Leisure Farm Jianshi Township 121.21037 24.678877 0
318 Naluowan Leisure Farm Jianshi Township 121.243623 24.679272 0
319 Luoxing Trout Leisure Farm Jianshi Township 121.236604 24.679805 0
320 Hengshan and Ulao Bicycle Paths Jianshi Township 121.247229 24.680325 0
321 Jinping Church Jianshi Township 121.2287 24.6977 0
322 Jinping Park Jianshi Township 121.218639 24.698443 0
323 Linghai Mountain Forest Leisure Farm Jianshi Township 121.2831 24.7065 0
324 Bu Lao Ju Leisure Farm Jianshi Township 121.2693 24.7135 0
325 Lao Liu Orchard in Bawu Mountain Jianshi Township 121.279338 24.716784 0
326 Bali Forest Hot Spring Resort Jianshi Township 121.235676 24.721937 0
327 Paddy field camp Jianshi Township 121.259345 24.734987 0

Author Contributions

Conceptualization, Y.-C.L.; methodology, Y.-C.L.; software, C.-Y.L. and H.-S.S.; validation, Y.-C.L. and H.-S.S.; formal analysis, C.-Y.L. and H.-S.S.; investigation, Y.-C.L.; resources, Y.-C.L. and J.-K.T.; data curation, C.-Y.L.; writing—original draft preparation, Y.-C.L. and C.-Y.L.; writing—review and editing, Y.-C.L.; visualization, C.-Y.L. and H.-S.S.; supervision, Y.-C.L.; project administration, Y.-C.L. and J.-K.T.; funding acquisition, Y.-C.L. and J.-K.T. All authors have read and agreed to the published version of the manuscript.

Funding

We are grateful for the support funded by the Ministry of Science and Technology (Taiwan): project numbers MOST 108-2119-M-008-003, MOST 108-2636-E-008-004 (Young Scholar Fellowship Program), and MOST 108-2638-E-008-001-MY2 (Shackleton Program Grant).

Conflicts of Interest

The authors declare no conflict of interest.

Footnotes

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

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