Deciphering urban traffic impacts on air quality by deep learning and emission inventory

Air pollution is a major obstacle to future sustainability, and traffic pollution has become a large drag on the sustainable developments of future metropolises. Here, combined with the large volume of real-time monitoring data, we propose a deep learning model, iDeepAir, to predict surface-level PM...

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Veröffentlicht in:Journal of environmental sciences (China) 2023-02, Vol.124, p.745-757
Hauptverfasser: Du, Wenjie, Chen, Lianliang, Wang, Haoran, Shan, Ziyang, Zhou, Zhengyang, Li, Wenwei, Wang, Yang
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container_title Journal of environmental sciences (China)
container_volume 124
creator Du, Wenjie
Chen, Lianliang
Wang, Haoran
Shan, Ziyang
Zhou, Zhengyang
Li, Wenwei
Wang, Yang
description Air pollution is a major obstacle to future sustainability, and traffic pollution has become a large drag on the sustainable developments of future metropolises. Here, combined with the large volume of real-time monitoring data, we propose a deep learning model, iDeepAir, to predict surface-level PM2.5 concentration in Shanghai megacity and link with MEIC emission inventory creatively to decipher urban traffic impacts on air quality. Our model exhibits high-fidelity in reproducing pollutant concentrations and reduces the MAE from 25.355 µg/m3 to 12.283 µg/m3 compared with other models. And identifies the ranking of major factors, local meteorological conditions have become a nonnegligible factor. Layer-wise relevance propagation (LRP) is used here to enhance the interpretability of the model and we visualize and analyze the reasons for the different correlation between traffic density and PM2.5 concentration in various regions of Shanghai. Meanwhile, As the strict and effective industrial emission reduction measurements implementing in China, the contribution of urban traffic to PM2.5 formation calculated by combining MEIC emission inventory and LRP is gradually increasing from 18.03% in 2011 to 24.37% in 2017 in Shanghai, and the impact of traffic emissions would be ever-prominent in 2030 according to our prediction. We also infer that the promotion of vehicular electrification would achieve further alleviation of PM2.5 about 8.45% by 2030 gradually. These insights are of great significance to provide the decision-making basis for accurate and high-efficient traffic management and urban pollution control, and eventually benefit people's lives and high-quality sustainable developments of cities. [Display omitted]
doi_str_mv 10.1016/j.jes.2021.12.035
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source Elsevier ScienceDirect Journals; Alma/SFX Local Collection
subjects Attention mechanism
Deep learning
New energy vehicles
PM2.5 concentration forecast
Traffic emissions
title Deciphering urban traffic impacts on air quality by deep learning and emission inventory
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