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Article

Estimating Particulate Matter Emission from Dust Sources Using ZY-3 Data and GIS Technology—A Case Study in Zhengzhou City, China

1
School of Water Conservancy Engineering, Zhengzhou University, Zhengzhou 450001, China
2
School of Software, Zhengzhou University, Zhengzhou 450001, China
3
School of Civil Engineering, Zhengzhou University, Zhengzhou 450001, China
4
Henan Institute of Geological Survey, Zhengzhou 450001, China
5
School of Ecology and Environment, Zhengzhou University, Zhengzhou 450001, China
*
Author to whom correspondence should be addressed.
Atmosphere 2021, 12(6), 660; https://doi.org/10.3390/atmos12060660
Submission received: 6 April 2021 / Revised: 5 May 2021 / Accepted: 19 May 2021 / Published: 21 May 2021
(This article belongs to the Section Air Quality)

Abstract

:
With the rapid development of the social economy in China, numerous Chinese cities are facing high levels of particulate matter (PM) pollution problems. In this study, high-resolution ZY-3 images and GIS techniques were used to establish the emission inventory of total suspended particle (TSP), particulate matter 10 (PM10) and particulate matter 2.5 (PM2.5) from fugitive dust sources in May 2016, and a spatial grid of 3 km × 3 km resolution was established to demonstrate the spatial distribution of PM emission. Results showed that the total emissions of TSP, PM10 and PM2.5 in Zhengzhou city were 237.5 kt·a−1, 103.7 kt·a−1 and 22.4 kt·a−1, respectively. Construction dust source was the main fugitive dust emission source in Zhengzhou city—the TSP, PM10 and PM2.5 emission of which account for 76.42%, 89.68% and 88.39%, respectively, of the total emission, followed by road dust source and soil dust source. PM emission was higher in Zhongyuan, Huiji, Jinshui and Zhengdong New District, while Zhongmou, Xingyang, Dengfeng and other remote areas had low PM emissions. Compared to other Chinese cities or regions, the PM emission from the construction dust source was at a high level in Zhengzhou city, while the PM emissions from the soil dust source and road dust source were at moderate levels.

1. Introduction

With the rapid industrialization and urbanization of Chinese cities, air pollution has been recognized to be one of the most serious environmental problems [1]. Haze weather frequently occurs in autumn and winter, and air quality has become a major concern in many developed cities [2,3,4,5]. This serious air pollution issue not only restricts the sustainable development of the regional economy but also brings negative influences on human health [6]. Particulate matter (PM), a major component of atmospheric pollutants, has received much attention in the field of atmospheric environment research [7,8,9]. There are various sources of PM emission, of which fugitive dust source is one of the most common sources in urban areas [10]. Fugitive dust is generated from a variety of exposed surfaces, including bare grounds, construction sites, and roads; it can be divided into soil dust, construction dust and road dust according to the sources of emissions [11,12]. Studies have shown that about 20 percent of PM2.5 emission was derived from fugitive dust sources in most of the developed Chinese cities [13]. For example, the contribution rates of PM2.5 and PM10 emissions from fugitive dust sources account for 41.8% and 60.0%, respectively, in Nanchong [14], 22.1% and 28.7% in Qingdao [15], and 30% and 42% in Tianjin [16]. Thus, a good understanding of the characteristics and distributions of PM emission from fugitive dust sources is crucial for developing effective mitigation strategies for PM pollution control in urban areas.
Previous studies have made great efforts on the estimation of PM emission. The emission factor method, a traditional approach for establishing emission inventory, has been widely used before the rapid development of remote sensing technology. The traditional method is effective but requires a mass of field investigation and statistical data, and it is more and more difficult to develop emission inventories with the expansion of the research region [17,18,19]. The rapid development of remote sensing technology (RS) and geographic information system (GIS) provides an efficient approach for estimating and demonstrating PM emission from fugitive dust sources. According to the specific spectral characteristics of ground objects, different PM emission sources can be identified clearly with RS images. In addition, the powerful spatial analysis function of GIS can provide an accurate representation of the spatial distribution of PM emission for a certain region. In recent years, the combination of RS and GIS techniques has been gradually used for establishing pollutant emission inventories from different sources. However, the existing research has focused more on the PM emission from industrial and vehicle sources [20,21,22], while the PM emission from fugitive dust sources has received far less attention. In addition, moderate and low-resolution RS data, such as MODIS and Landsat, were usually adopted for PM emission estimation because they are easy to acquire [23,24,25], but these data were insufficient in establishing accurate PM emission inventories at city scale since these moderate and low-resolution images could not provide detailed ground information.
In this study, based on the high-resolution RS data from the ZY-3 satellite and the Technical Guideline for Compiling Emission Inventory of Particulate Matter from Dust Sources, an RS–GIS-based approach was used to establish PM emission inventory from fugitive dust sources at the city scale. The fugitive dust sources of PM emission were identified accurately from the high-resolution ZY-3 images, and a grid model of 3 km × 3 km resolution was established to demonstrate and analyze the spatial distribution of PM emission from fugitive dust sources. It is expected that the results of this study could provide scientific reference for atmospheric pollution prevention and control.

2. Materials and Methods

2.1. Study Area

Zhengzhou City, the capital of Henan Province, is a new first-tier city with an area of 7446 km2. The geographic location is between 112°42′~114°14′ E and 34°16′~34°58′ N (Figure 1). The city is characterized by the north temperate continental monsoon climate. According to the meteorological data and the Statistical Yearbook of Henan province in 2016, the mean temperature of Zhengzhou was 15.9 °C, the annual average precipitation was 684.3 mm, and the average wind speed was 2.6 m/s.
As a fast-growing city in the central area of China, Zhengzhou city is facing serious air pollution issues along with the rapid economic development and expansion of the urban area. Previous research has pointed out that the maximum mass concentration of PM10 and PM2.5 in Zhengzhou city was averagely 3.7 and 5.8 times greater than the national standard from 2014 to 2017 [26]. An investigation conducted by the Ministry of Environment Protection of China showed that the air quality of Zhengzhou city was at the 7th from the bottom among 74 major cities of China; the percentage of the days exceeding the national air quality standard was more than 70% for both PM10 and PM2.5 in 2016. For better implementation of the action plan for the prevention and control of atmospheric pollution issued by the State Council of China, it is urgent to obtain more information about PM emission characteristics to enhance the pertinence and effectiveness of the prevention and control of atmospheric pollution.

2.2. Data Processing and Spatial Mapping

Data used in this study come from different sources, including RS image, meteorological data, statistical data, monitoring experiment data, and the Technical Guideline for Compiling Emission Inventory of Particulate Matter from Dust Sources, which was issued by the Ministry of Environment Protection of China (MEP) (hereafter referred to as “Guideline”).
Remote sensing data were acquired from the Chinese resource satellite ZY-3. ZY-3 is China’s first three linear array stereo mapping satellite, the maximum spatial resolution of which is 2.1 m. Since the launch of the satellite in January of 2012, images from ZY-3 have been widely used in land surveying, territorial mapping, and ground information extraction [27,28]. Before identifying the distribution of dust emission sources in Zhengzhou city, the original ZY-3 image was spliced and clipped based on the administrative map, then the RS data sets were ortho-rectified based on the 1:50,000-scale topographic map with an accuracy of 0.5 pixels. The preprocessing work of RS images was operated in ENVI 5.3.
A field investigation was conducted to evaluate whether the types of ground objects identified by RS are consistent with the results of the field survey. We randomly selected 50 samples of each type of ground object (bare ground, construction site, and road) for the accuracy test; results showed that the visual interpretation performed well with an overall accuracy of 96%. After manual identification, every piece of emission source was extracted as a shapefile, which contains information including name, location, length, area and other association attributes. Then, shapefiles of each category of dust sources were overlaid to calculate the emission of TSP, PM10 and PM2.5 from soil dust source, construction dust source and road dust source with the formulas proposed in “Guideline”. Finally, a grid map of 3 km × 3 km resolution was established using the spatial analysis function.

2.3. Methodology

2.3.1. The RS–GIS Approach

Figure 2 shows the technical procedures of the RS–GIS-based approach for PM estimation. Firstly, different spectral bands were enhanced with the band math function in ENVI 5.3 to enhance the spectral characteristics of bare grounds, construction sites, and roads in the preprocessed RS images. Secondly, the location, boundary, area and other information of these dust emission sources was obtained from the enhanced high-resolution RS image by experienced researchers. Then, the TSP, PM10, PM2.5 emissions from each source were calculated based on the meteorological data, statistical data, experiment data, and the formulas proposed in “guideline”. Finally, the distribution of PM emission was demonstrated in a grid of 3 km × 3 km resolution in ArcGIS 10.2.

2.3.2. Soil Dust

Soil dust is generated from the bare ground such as uncultivated farmland, exposed mountains, tidal flats, dry river valleys and unhardened spaces. The influence factors of emission from soil dust include particle size distribution of surface soil, surface roughness, vegetation coverage, unsheltered field width and meteorological conditions. Bare ground in this study mainly refers to the farmland without cultivation in the surrounding urban areas and the open land without hardening or greening.
The formulas for calculating emission of PM from soil dust source are as follows:
W S i = E S i × A S
E S i = D i × C × ( 1 η ) × 10 4
where W S i is the total PMi emission, t/a; E S i is the PMi emission coefficient, t/(m2·a); A S is the area of soil dust source, m2, which was obtained from RS data; D i is the dust emission factor of PMi, t/(104 m2·a); η is the dust removal efficiency by pollution control technology, %. Since only the dust emission of the exposed ground was considered in this study, the removal efficiency of the exposed ground control efficiency was set to 0.
D i = k i × I w e × f × L × V
C = 0.504 × u 3 / P E 2
where k i is the percentage of PMi in soil dust. The recommended values of TSP, PM10 and PM2.5 are 1, 0.30 and 0.05, respectively; I w e is the soil wind erosion index, which is 331 for TSP, 99 for PM10 and 17 for PM2.5 according to the soil texture of Zhengzhou city. f is the ground roughness factor, the value of which is 0.5; L is the unshielded width factor, and the value is 1.0; V is the vegetation coverage factor, and the value is 0.9. Values of the parameters, including k i , I w e , f , L and V , are based on the recommended value in “Guideline”. C is the climatic factor, u is the annual average wind speed, m/s; P E is the Thomthwaite Precipitation Index (evaporation index), and the P E formula is as follows:
P E = 100 × p / [ 0.5949 + 0.1189 × T a 365 ]
where p is the annual precipitation, mm; T a is the annual average temperature, °C.

2.3.3. Construction Dust

Construction dust is generated from the construction process including building construction, equipment installation, decoration engineering and renovation projects. It is mainly affected by factors such as the construction area, construction time and PM emission coefficient. The calculation formulas for PM emission from construction dust source are as follows:
W C i = E C i × A C × T
E C i = 2.69 × 10 4 × ( 1 η )
where W C i is the total PMi emission of the construction dust, t/a; E C i is the average PMi emission coefficient of the entire construction zone, t/(m2·month); A C is the area of the construction zone, m2, which was obtained from RS data; T is the period of construction activities, which is generally calculated by the number of construction days/30 (according to the survey, the average construction days in Zhengzhou city were 179 d); η is the removal efficiency by pollution control technology, %, which is determined by the “Guideline” according to the control technology of construction dust.

2.3.4. Paved Road Dust

Road dust refers to the dust generated from paved roads and entering the ambient air under dynamic conditions (wind power, motor vehicle rolling, crowd activities, etc.). The paved roads can be divided into four categories including national roads, provincial roads, township roads and county roads. The calculation formulas of PM emission from each category of the paved roads are as follows:
W R i = E R i × L R × N R × ( 1 n r / 365 ) × 10 6
E R i = k i × ( s L ) 0.91 × W 1.02 × ( 1 η )
where W R i i is the total emission of PMi from road dust, t/a; E R i is the average emission coefficient of PMi from different categories of paved roads, g/VKT; L R is the length of road, km, which was obtained from RS data; n r is the number of dust-free days (note that days with precipitation exceeding 0.25 mm/d were recognized as dust-free days according to the meteorological data); k i is the particle size multiplier of PMi, the recommended value is 3.23 g/km (TSP), 0.62 g/km (PM10) and 0.15 g/km (PM2.5) on the basis of the “Guideline”; η is the removal efficiency by pollution control technology, %, which is taken as 0 because there were no control measures on most roads except for several main roads in central urban area; N R is the average traffic flow on the road during a certain period, vehicle/a; s L is road dust load, g/m2; W is the average vehicle weight, t. In this study, a 10-day-long monitoring experiment was carried out on each category of paved roads to obtain traffic flow ( N R ) and the road dust load ( L ), the average vehicle weight ( W ) and other traffic information were estimated according to the observation data. Emission parameters of different levels of roads are shown in Table 1.

3. Results

3.1. Emission Inventory and Spatial Distribution of PM from Soil Dust Source

Bare grounds were mainly distributed in Zhongmou and Xinzheng districts with a total area of 68.97 km2 (Figure 3a). Figure 3b–d displayed the spatial distribution of TSP, PM10 and PM2.5 emission from soil dust source with a grid of 3 km × 3 km resolution. Results showed that the emissions of TSP, PM10 and PM2.5 from soil dust source were 507.40 t·a−1, 45.53 t·a−1 and 1.30 t·a−1, respectively, in Zhengzhou city. From the spatial distribution, PM emission from soil dust source was higher in Zhongmou and Xinzheng, which is consistent with the distribution characteristic of bare grounds. Soil dust emission is strongly under the influence of meteorological conditions and human activities [29]. In addition, soil texture and topography are also important factors that affect PM emission from soil dust source [30]. The airport economy zone also had high PM emission from soil dust source—the reason is that the soil type is mainly silt soil, which can be easily raised into the air by wind and human activities and, therefore, lead to a high emission coefficient. Dengfeng and Xinmi have complex mountainous terrain that decreases from north to south. Affected by topographic conditions, although the area of bare ground was not small in the two regions, the reduced effects of wind and less human activities are the main reasons for low PM emission. Xingyang, Gongyi and the central urban area of Zhengzhou had minimum PM emission from soil dust source, it is mainly due to the small area of bare grounds.

3.2. Emission Inventory and Spatial Distribution of PM from Construction Dust Source

There were 1793 plots of construction sites in Zhengzhou city with a total area of 145.25 km2, which was mainly distributed in the central urban area (Figure 4a). The emission of TSP, PM10 and PM2.5 from the construction dust source was calculated to be 181.5 kt·a−1, 93.0 kt·a−1and 19.8 kt·a−1, respectively. The spatial distribution of TSP, PM10 and PM2.5 emission indicated that PM emission from the construction dust source is closely related to the population density and the regional development degree (Figure 4b–d). Emissions of TSP, PM10 and PM2.5 were mainly distributed in districts with high developed culture and economics, including Zhongyuan, Huiji, Jinshui and Zhengdong New District. The large population and high economic development in these regions bring about lots of construction activities, which induced an urban-area-centered high PM emission circle. Zhongmou, Xingyang and Xinzheng, bordering the main urban area, also have high PM emission. It is mainly due to the influence of urban expansion and economic radiation. The low PM emission area was located at Gongyi and Dengfeng, which is far away from the main urban zone of Zhengzhou. The lack of leading industries and small stress on housing supply resulted in less construction activity, which is assumed to be the main reason for lower PM emission from construction dust source [31].

3.3. Emission Inventory and Spatial Distribution of PM from Road Dust Source

Figure 5a shows the distribution of roads in Zhengzhou city, and the total length of paved roads was 10,601.50 km, of which the lengths of the national road, provincial road, county road and township road were 396.30 km, 901.40 km, 2439.88 km and 6863.92 km, respectively. It has been calculated that the total emissions of TSP, PM10 and PM2.5 from paved roads were 55.5 kt·a−1, 10.7 kt·a−1 and 2.6 kt·a−1, respectively (Table 2). Among different levels of roads, township road has the highest PM emission, followed by the provincial road, county road and national road. One reason for this phenomenon is that the township road is more densely distributed than that of other types of road; the other reason is that the road dust load of the township road is relatively large (Table 1). As for the provincial road, although the dust load of the provincial road is small, the heavy traffic volume leads to a high emission coefficient, which resulted in the high PM emission.
The spatial characteristics of TSP, PM10 and PM2.5 emission from the road dust source in Zhengzhou city were shown in Figure 5b–d. For different levels of roads, high PM emission mainly concentrated in Zhongyuan, Huiji, Jinshui and Zhengdong New District; this is because these regions are the intersection of the Longhai Railway and the Beijing-Guangzhou Railway, and also 107 National Highway, 310 National Highway, Beijing-Hongkong-Macao Expressway and Lianhuo Expressway all pass through the area. Dense road networks and heavy traffic flow induced high PM emission from road dust source in these areas. Conversely, PM emission from paved roads was small in remote areas such as Shangjie and Dengfeng due to the sparse road networks.

3.4. Total PM Emission from Dust Sources

Table 3 shows the area or length of each dust source in different districts, and the distribution and total PM emission from dust sources are shown in Figure 6. Results showed that the total emissions of TSP, PM10 and PM2.5 from dust sources in Zhengzhou city were 237.5kt·a−1, 103.7kt·a−1 and 22.4 kt·a−1, respectively. Among various dust sources, the construction dust source was the main source of PM emission, the TSP, PM10 and PM2.5 emission of which accounted for 76.43%, 89.69% and 88.50%, respectively, of the total PM emission (Table 4).
Spatially, emissions of TSP, PM10 and PM2.5 were concentrated in Zhongyuan, Huiji, Jinshui, Zhengdong New District and other main urban areas. Zhongmou, Xingyang and Xinzheng, which border the main urban area, were also regions of high PM emission. The areas that were far away from the main urban zone had low PM emissions, such as Shangjie and Dengfeng. The main reasons for the spatial distribution characteristics include three aspects: Firstly, the majority of construction sites were distributed in the main urban area. Secondly, the dense road network and heavy traffic flow of the main urban area increased the PM emission. Moreover, although soil dust was more prevalent in the suburbs than in the urban area, due to the low PM emission coefficient of soil dust, it had little effect on the characteristic of total PM emission.

4. Discussion

4.1. Comparisons

Table 5 and Figure 7 show the comparisons between our results and the previous emission inventories that have been established in other cities of China. The results suggested that there is not much difference in PM emission from soil dust source between Zhengzhou and Wuhan in 2016 [32]. However, the PM emission from soil dust source in this study is much lower than a previous study conducted in 2013 [33], which showed that the TSP, PM10 and PM2.5 emissions in Zhengzhou were as much as 11,937 t·a−1, 3581 t·a−1, and 597 t·a−1, respectively. Part of the explanation for this discrepancy is the significant differences in climate factors between 2013 and 2016 (2013 was a drought year, with only half as much rainfall as 2016); the other reason is that Xu et al. defined a large area of the Yellow River tidal flat as bare ground. In fact, the tidal flat of the Yellow River has been used for agricultural purposes for a long time because of the fertile soil and excellent irrigation conditions. Previous studies have shown that the soil dust emission from the bare ground is 20 times as much as from cropland within the same area [34]. Thus, the overestimation of bare ground resulted in an appreciable difference between the two studies.
The PM emission from the construction dust source in Zhengzhou is a little higher than in other cities including Beijing, Wuhan, Tianjin and Nanjing. For example, TSP emission from the construction dust source in Zhengzhou is 1.26 times of Beijing and 1.89 times of Wuhan, PM10 emission is 1.32 times of Beijing and 0.98 times of Wuhan, and PM2.5 emission is 0.35 times of Beijing and 1.06 times of Wuhan [31,35]. One reason for this phenomenon is that the emission coefficient was higher in Zhengzhou city due to the deficient dust control measures in construction sites. In addition, the year 2016 is the last year for the urban village renovation project, numbers of construction projects were crashing the schedule, and the sharp increase in construction area is considered the main reason for the high PM emission from the construction dust source.
It was observed that the TSP, PM10 and PM2.5 emissions from the road dust source were high in Zhengzhou city, but compared with other cities of similar size in China, the emission inventory of road dust source obtained in this study is at a low level. Theres little doubt that the capital, Beijing, has the highest PM emission from paved roads, with TSP, PM10 and PM2.5 of 641 kt·a−1, 465 kt·a−1 and 74.7 kt·a−1, respectively. Followed by Nanjing and Wuhan, the PM emissions of which are about three times as much as Zhengzhou. The length and density of road networks are the primary factors that result in such differences [36].

4.2. Source of Uncertainty

Since most of the emission parameters, such as surface roughness factor, unsheltered field width factor, and meteorological factor, do not vary much with regions in the urban-scale research, uniform values for these factors were applied in this study. However, in practice, the uniform values of parameters bring uncertainty to the calculation result of PM emission from dust sources to a certain degree [37]. Another source of uncertainty was generated from the activity level, which is related to the RS interpretation error of the bare ground, construction sites and different types of roads. To improve recognition accuracy, visual interpretation was used to extract ground information from the high-resolution RS image of the high-resolution ZY-3 satellite, and an accuracy test was conducted based on 150 samples that were randomly selected in the study area. Although the accuracy has reached a relatively high level, there would still be some inevitable omissions in the identification process, and this may result in an underestimate of the activity level of PM emission from dust sources.

5. Conclusions

This study investigated the emission of TSP, PM10 and PM2.5 from soil dust, construction dust and road dust in Zhengzhou city according to the RS–GIS-based approach and the Technical Guideline for Compiling Emission Inventory of Particulate Matter from Dust Sources that was issued by Chinas Ministry of Environmental Protection. The observations suggest that the total emission of TSP, PM10 and PM2.5 in Zhengzhou city was 237.5 kt·a−1, 103.7 kt·a−1 and 22.4 kt·a−1, respectively, in 2016. Among various PM emission sources, construction dust source was the main emission source, followed by road dust source and soil dust source. Meteorological conditions, human activities, and the regional development degree were assumed to be the main influencing factor of dust emissions. High emission of TSP, PM10 and PM2.5 concentrated in the main urban areas, including Jinshui, Zhongyuan, Erqi, and Jingkai, while Zhongmou, Xingyang, Dengfeng and other remote areas had relatively low PM emission. Compared to the previous emission inventories of other cities, the PM emission from construction dust source was at a high level in Zhengzhou city (TSP: 181.5 kt·a−1, PM10:93.0 kt·a−1, PM2.5: 19.8 kt·a−1), and the PM emissions from soil dust source (TSP: 507.40 t·a−1, PM10: 45.53 t·a−1, PM2.5: 1.30 t·a−1) and road dust source (TSP: 55.5 kt·a−1, PM10: 10.7 kt·a−1, PM2.5: 2.6 kt·a−1) were at moderate levels. It is expected that the PM emission inventory and its spatial distribution are of important value in atmospheric pollution control, and the combination of high-resolution ZY-3 data and GIS technology could provide dependable PM emission inventories in urban regions.

Author Contributions

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

Funding

This research was funded by [CMA/Henan Key Laboratory of Agrometeorological Support and Applied Technique] grant number [AMF201610] and [the National Key R&D Program of China] grant number [2017YFC0212401].

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in that study are available on request from the corresponding author.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Geographic location and administrative district of Zhengzhou city.
Figure 1. Geographic location and administrative district of Zhengzhou city.
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Figure 2. Technical procedures of the RS–GIS approach for establishing PM emission inventory.
Figure 2. Technical procedures of the RS–GIS approach for establishing PM emission inventory.
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Figure 3. Spatial distribution of PM emission from soil dust source.
Figure 3. Spatial distribution of PM emission from soil dust source.
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Figure 4. Spatial distribution of PM emission from construction dust source.
Figure 4. Spatial distribution of PM emission from construction dust source.
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Figure 5. Spatial distribution of PM emission from road dust source.
Figure 5. Spatial distribution of PM emission from road dust source.
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Figure 6. Spatial distribution of total PM emission from dust sources.
Figure 6. Spatial distribution of total PM emission from dust sources.
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Figure 7. PM emission from dust sources in different cities or regions of China.
Figure 7. PM emission from dust sources in different cities or regions of China.
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Table 1. Emission parameters of different levels of paved roads.
Table 1. Emission parameters of different levels of paved roads.
Road TypeNational
Road
Provincial
Road
County
Road
Township Road
Traffic flow (vehicles/day)757964321500850
Dust load (g/m2)0.270.330.521.57
Average weight (t)8.806.904.702.80
TSP emission coefficient (g/VKT)9.028.458.6413.92
PM10 emission coefficient (g/VKT)1.731.621.662.67
PM2.5 emission coefficient (g/VKT)0.420.390.400.65
Table 2. Emission of TSP, PM10 and PM2.5 from road dust source.
Table 2. Emission of TSP, PM10 and PM2.5 from road dust source.
TypeLength (km)TSP (t/a)PM10 (t/a)PM2.5 (t/a)
State road396.307958.071527.56369.57
Provincial road901.4014,387.842761.75668.17
County road2439.889285.821782.42431.23
Township road6863.9223,857.194579.401107.92
Total10,601.5055,488.9310,651.132576.89
Table 3. Area or length of each dust source in different districts.
Table 3. Area or length of each dust source in different districts.
DistrictsBare Ground (km2)Construction Sites (km2)Roads (km)
Urban Area0.19103.136996.99
New High-Tech Zone0.1411.6250.89
Economic Development Zone0.487.8475.27
Airport Economy Zone3.622.9187.99
Zhengdong New Zone2.1414.67134.64
Gongyi City1.310.29531.14
Dengfeng City2.760.15426.18
Xinzheng City15.521.74657.29
Xinmi City3.390.44326.53
Xingyang City3.211.31593.68
Zhongmou County36.211.16720.90
Table 4. Total emission of TSP, PM10 and PM2.5 from dust sources.
Table 4. Total emission of TSP, PM10 and PM2.5 from dust sources.
Dust SourcesSoil DustConstruction DustRoad DustTotal
TSPTotal annual emission (t·a−1)507.40181,547.2555,488.93237,543.58
percentage %0.2176.4323.36100
PM10Total annual emission (t·a−1)45.5393,047.6510,651.13103,744.31
percentage %0.04489.6910.27100
PM2.5Total annual emission (t·a−1)1.3019,842.702576.8922,420.89
percentage %0.00688.5011.49100
Table 5. The comparation between this study and the previous emission inventories.
Table 5. The comparation between this study and the previous emission inventories.
City/
Region
Soil Dust (kt a−1)Construction Dust (kt a−1)Road Dust (kt a−1)
TSPPM10PM2.5TSPPM10PM2.5TSPPM10PM2.5
Beijing---144.070.614.7641.0465.074.7
Tianjin---77.443.029.2---
Zhengzhou11.93.60.6------
Nanjing---144.070.614.7---
Wuhan3.8 × 10−13.45 × 10−20.9 × 10−395.846.99.6157.014.011.6
Pearl River Delta------2760.0529.0128.0
This study5.1 × 10−14.6 × 10−21.3 × 10−3181.593.019.855.510.72.6
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Yang, H.; Song, X.; Du, L.; Zhang, Q.; Cui, J.; Yin, S. Estimating Particulate Matter Emission from Dust Sources Using ZY-3 Data and GIS Technology—A Case Study in Zhengzhou City, China. Atmosphere 2021, 12, 660. https://doi.org/10.3390/atmos12060660

AMA Style

Yang H, Song X, Du L, Zhang Q, Cui J, Yin S. Estimating Particulate Matter Emission from Dust Sources Using ZY-3 Data and GIS Technology—A Case Study in Zhengzhou City, China. Atmosphere. 2021; 12(6):660. https://doi.org/10.3390/atmos12060660

Chicago/Turabian Style

Yang, Huan, Xuan Song, Liping Du, Qi Zhang, Jian Cui, and Shasha Yin. 2021. "Estimating Particulate Matter Emission from Dust Sources Using ZY-3 Data and GIS Technology—A Case Study in Zhengzhou City, China" Atmosphere 12, no. 6: 660. https://doi.org/10.3390/atmos12060660

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