Investigation of the Impact of Land-Use Distribution on PM 2.5 in Weifang: Seasonal Variations
Chengming Li,
Kuo Zhang,
Zhaoxin Dai,
Zhaoting Ma and
Xiaoli Liu
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Chengming Li: Chinese Academy of Surveying and Mapping, Beijing 100830, China
Kuo Zhang: College of Mining Engineering, North China University of Science and Technology, Qinhuangdao 063210, China
Zhaoxin Dai: Chinese Academy of Surveying and Mapping, Beijing 100830, China
Zhaoting Ma: Chinese Academy of Surveying and Mapping, Beijing 100830, China
Xiaoli Liu: Chinese Academy of Surveying and Mapping, Beijing 100830, China
IJERPH, 2020, vol. 17, issue 14, 1-20
Abstract:
As air pollution becomes highly focused in China, the accurate identification of its influencing factors is critical for achieving effective control and targeted environmental governance. Land-use distribution is one of the key factors affecting air quality, and research on the impact of land-use distribution on air pollution has drawn wide attention. However, considerable studies have mostly used linear regression models, which fail to capture the nonlinear effects of land-use distribution on PM 2.5 (fine particulate matter with a diameter less than or equal to 2.5 microns) and to show how impacts on PM 2.5 vary with land-use magnitudes. In addition, related studies have generally focused on annual analyses, ignoring the seasonal variability of the impact of land-use distribution on PM 2.5 , thus leading to possible estimation biases for PM 2.5 . This study was designed to address these issues and assess the impacts of land-use distribution on PM 2.5 in Weifang, China. A machine learning statistical model, the boosted regression tree (BRT), was applied to measure nonlinear effects of land-use distribution on PM 2.5 , capture how land-use magnitude impacts PM 2.5 across different seasons, and explore the policy implications for urban planning. The main conclusions are that the air quality will significantly improve with an increase in grassland and forest area, especially below 8% and 20%, respectively. When the distribution of construction land is greater than around 10%, the PM 2.5 pollution can be seriously substantially increased with the increment of their areas. The impact of gardens and farmland presents seasonal characteristics. It is noted that as the weather becomes colder, the inhibitory effect of vegetation distribution on the PM 2.5 concentration gradually decreases, while the positive impacts of artificial surface distributions, such as construction land and roads, are aggravated because leaves drop off in autumn (September–November) and winter (December–February). According to the findings of this study, it is recommended that Weifang should strengthen pollution control in winter, for instance, expand the coverage areas of evergreen vegetation like Pinus bungeana Zucc. and Euonymus japonicus Thunb, and increase the width and numbers of branches connecting different main roads. The findings also provide quantitative and optimal land-use planning and strategies to minimize PM 2.5 pollution, referring to the status of regional urbanization and greening construction.
Keywords: land-use distribution; PM 2.5; boosted regression tree model; seasonal variations (search for similar items in EconPapers)
JEL-codes: I I1 I3 Q Q5 (search for similar items in EconPapers)
Date: 2020
References: View references in EconPapers View complete reference list from CitEc
Citations: View citations in EconPapers (7)
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