分摊
大气污染
微粒
污染
污染物
环境科学
空气污染
人类健康
大气研究
领域(数学)
微粒污染
计算机科学
气象学
数学
化学
地理
生态学
环境卫生
有机化学
政治学
法学
生物
医学
纯数学
作者
Zezhi Peng,Bin Zhang,Li Wang,Xinyi Niu,Jian Sun,Hongmei Xu,Junji Cao,Zhenxing Shen
标识
DOI:10.1016/j.scitotenv.2023.168588
摘要
Machine learning (ML) is an artificial intelligence technology that has been used in atmospheric pollution research due to their powerful fitting ability. In this review, 105 articles related to ML and the atmospheric pollution research are critically reviewed. Applications of ML in the prediction of atmospheric pollution (mainly particulate matters) are systematically described, including the principle of prediction, influencing factors and improvement measures. Researchers can improve the accuracy of the prediction model through three main aspects, namely considering the geographical features of the study area into the model, introducing the physical characteristics of pollutants, matching and optimizing ML models. And by using interpretable ML tools, researchers are able to understand the mechanism of the model and gain in-depth information. Then, the state-of-art applications of ML in the source apportionment of atmospheric particulate matter and the effect of atmospheric pollutants on human health are also described. In addition, the advantages and disadvantages of the current applications of ML in atmospheric pollution research are summarized, and the application perspective of ML in this field is elucidated. Given the scarcity of source apportionment applications and human health research, standardized research methods and specialized ML methods are required in atmospheric pollution research to connect these two disciplines.
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