CN

陈明

Lecturer (higher education)

Gender:Male

Status:Employed

Department:School of Architecture and Urban Planning

Education Level:Postgraduate (Doctoral)

Degree:Doctoral Degree in Engineering

Discipline:Landscape Architecture

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Paper Publications

PCA-based identification of built environment factors reducing PM2.5 pollution in neighborhoods of five Chinese megacities

Release time:2022-04-27 Hits:

Indexed by:Journal paper

First Author:Chen Ming

Correspondence Author:Dai Fei

Journal:Atmosphere

Included Journals:SCI

Volume:13

Issue:1

Key Words:PM2.5; principal component analysis; green space; gray space; neighborhood

Date of Publication:2022-01-12

Impact Factor:2.686

Abstract:Air pollution, especially PM2.5 pollution, still seriously endangers the health of urban residents in China. The built environment is an important factor affecting PM2.5; however, the key factors remain unclear. Based on 37 neighborhoods located in five Chinese megacities, three relative indicators (the range, duration, and rate of change in PM2.5 concentration) at four pollution levels were calculated as dependent variables to exclude the background levels of PM2.5 in different cities. Nineteen built environment factors extracted from green space and gray space and three meteorological factors were used as independent variables. Principal component analysis was adopted to reveal the relationship between built environment factors, meteorological factors, and PM2.5. Accordingly, 24 models were built using 32 training neighborhood samples. The results showed that the adj_R2 of most models was between 0.6 and 0.8, and the highest adj_R2 was 0.813. Four principal factors were the most important factors that significantly affected the growth and reduction of PM2.5, reflecting the differences in green and gray spaces, building height and its differences, relative humidity, openness, and other characteristics of the neighborhood. Furthermore, the relative error was used to test the error of the predicted values of five verification neighborhood samples, finding that these models had a high fitting degree and can better predict the growth and reduction of PM2.5 based on these built environment factors

Links to published journals:https://doi.org/10.3390/atmos13010115

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