A Stochastic Exposure Model Integrating Random Forest and Agent-Based Approaches: Evaluation for Pm2.5 in Jiangsu, China

31 Pages Posted: 16 Feb 2022

See all articles by Qi Zhou

Qi Zhou

Nanjing University

Xin Wang

Nanjing University

Ye Shu

Nanjing University

Li Sun

Nanjing University

Zhou Jin

Nanjing University

Zongwei Ma

Nanjing University - State Key Laboratory of Pollution Control and Resource Reuse

Miaomiao Liu

Nanjing University

Jun Bi

Nanjing University - State Key Laboratory of Pollution Control and Resource Reuse

Patrick L. Kinney

Boston University - School of Public Health

Abstract

This research proposes an Activity Pattern embedded Air Pollution Exposure Model (AP2EM), based on survey data of when, where, and how people spend their time and indoor/outdoor ratios for microenvironments. AP2EM integrates random forest and agent-based approaches to simulate the stochastic exposure to outdoor fine particulate matter (PM2.5) along with indoor and in-vehicle PM2.5 of outdoor origin. The R2 of the linear regression between the model's calculations and personal measurement was 0.65, which was more accurate than the commonly-used aggregated exposure (AE) model and the outdoor exposure (OE) model. The population-weighted PM2.5 exposure estimated by the AP2EM was 36.7 μg/m3 in Jiangsu, China, during 2014-2017. The OE model overestimated exposure by 54.0%, and the AE model underestimated exposure by 6.5%. These misestimate reflect ignorance of traditional studies on effects posed from time spent indoors (~85%) and doing low respiratory rate activities (~93%), problems of biased sampling, and neglecting low probability events. The proposed AP2EM treats activity patterns of individuals as chains and uses stochastic estimates to model activity choices, providing a more comprehensive understanding of human activity and exposure characteristics. Overall, the AP2EM is applicable for other air pollutants in different regions and benefits China's air pollution control policy designs.

Keywords: Stochastic exposure estimates, PM2.5, Activity chain theory

Suggested Citation

Zhou, Qi and Wang, Xin and Shu, Ye and Sun, Li and Jin, Zhou and Ma, Zongwei and Liu, Miaomiao and Bi, Jun and Kinney, Patrick L., A Stochastic Exposure Model Integrating Random Forest and Agent-Based Approaches: Evaluation for Pm2.5 in Jiangsu, China. Available at SSRN: https://ssrn.com/abstract=4012425 or http://dx.doi.org/10.2139/ssrn.4012425

Qi Zhou

Nanjing University ( email )

Nanjing
China

Xin Wang

Nanjing University ( email )

Nanjing
China

Ye Shu

Nanjing University ( email )

Nanjing
China

Li Sun

Nanjing University ( email )

Nanjing
China

Zhou Jin

Nanjing University ( email )

Nanjing
China

Zongwei Ma

Nanjing University - State Key Laboratory of Pollution Control and Resource Reuse ( email )

Miaomiao Liu (Contact Author)

Nanjing University ( email )

Nanjing
China

Jun Bi

Nanjing University - State Key Laboratory of Pollution Control and Resource Reuse ( email )

Nanjing
China

Patrick L. Kinney

Boston University - School of Public Health ( email )

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