Deep Learning for Prediction of the Air Quality Response to Emission Changes

Efficient prediction of the air quality response to emission changes is a prerequisite for an integrated assessment system in developing effective control policies. Yet, representing the nonlinear response of air quality to emission controls with accuracy remains a major barrier in air quality-relat...

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Veröffentlicht in:Environmental science & technology 2020-07, Vol.54 (14), p.8589-8600
Hauptverfasser: Xing, Jia, Zheng, Shuxin, Ding, Dian, Kelly, James T, Wang, Shuxiao, Li, Siwei, Qin, Tao, Ma, Mingyuan, Dong, Zhaoxin, Jang, Carey, Zhu, Yun, Zheng, Haotian, Ren, Lu, Liu, Tie-Yan, Hao, Jiming
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Sprache:eng
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Zusammenfassung:Efficient prediction of the air quality response to emission changes is a prerequisite for an integrated assessment system in developing effective control policies. Yet, representing the nonlinear response of air quality to emission controls with accuracy remains a major barrier in air quality-related decision making. Here, we demonstrate a novel method that combines deep learning approaches with chemical indicators of pollutant formation to quickly estimate the coefficients of air quality response functions using ambient concentrations of 18 chemical indicators simulated with a comprehensive atmospheric chemical transport model (CTM). By requiring only two CTM simulations for model application, the new method significantly enhances the computational efficiency compared to existing methods that achieve lower accuracy despite requiring 20+ CTM simulations (the benchmark statistical model). Our results demonstrate the utility of deep learning approaches for capturing the nonlinearity of atmospheric chemistry and physics and the prospects of the new method to support effective policymaking in other environment systems.
ISSN:0013-936X
1520-5851
DOI:10.1021/acs.est.0c02923