Mimicking atmospheric photochemical modeling with a deep neural network

背景(考古学) 环境科学 臭氧 空气质量指数 大气化学 气象学 污染 空气污染 大气科学 化学 地质学 生态学 生物 物理 古生物学 有机化学
作者
Jia Xing,Shuxin Zheng,Siwei Li,Lin Huang,Xiaochun Wang,James T. Kelly,Yafei Wang,Chang Liu,Carey Jang,Yun Zhu,Jia Zhang,Jiang Bian,Tie-Yan Liu,Jiming Hao
出处
期刊:Atmospheric Research [Elsevier]
卷期号:265: 105919-105919 被引量:7
标识
DOI:10.1016/j.atmosres.2021.105919
摘要

Fast and accurate prediction of ambient ozone (O3) formed from atmospheric photochemical processes is crucial for designing effective O3 pollution control strategies in the context of climate change. The chemical transport model (CTM) is the fundamental tool for O3 prediction and policy design, however, existing CTM-based approaches are computationally expensive, and resource burdens limit their usage and effectiveness in air quality management. Here we proposed a novel method (noted as DeepCTM) that using deep learning to mimic CTM simulations to improve the computational efficiency of photochemical modeling. The well-trained DeepCTM successfully reproduces CTM-simulated O3 concentration using input features of precursor emissions, meteorological factors, and initial conditions. The advantage of the DeepCTM is its high efficiency in identifying the dominant contributors to O3 formation and quantifying the O3 response to variations in emissions and meteorology. The emission-meteorology-concentration linkages implied by the DeepCTM are consistent with known mechanisms of atmospheric chemistry, indicating that the DeepCTM is also scientifically reasonable. The DeepCTM application in China suggests that O3 concentrations are strongly influenced by the initialized O3 concentration, as well as emission and meteorological factors during daytime when O3 is formed photochemically. The variation of meteorological factors such as short-wave radiation can also significantly modulate the O3 chemistry. The DeepCTM developed in this study exhibits great potential for efficiently representing the complex atmospheric system and can provide policymakers with urgently needed information for designing effective control strategies to mitigate O3 pollution.
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