Super Learner 앙상블을 활용한 PM2.5 예측

PM2.5 is one of the air pollutants, the most of which are generated through chemical reactions involving emissions from fossil fuels, exhaust gases, and factories. Given PM2.5’s negative impact on society and health, the importance of prediction is increasing in response to growing public interest....

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Bibliographic Details
Published in한국대기환경학회지(국문) Vol. 39; no. 6; pp. 1038 - 1049
Main Authors 박지수(Ji-su Park), 송유정(Yu-jeong Song), 서명석(Myoung-Seok Suh), 김찬수(Chansoo Kim)
Format Journal Article
LanguageKorean
Published 한국대기환경학회 01.12.2023
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ISSN1598-7132
2383-5346
DOI10.5572/KOSAE.2023.39.6.1038

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Summary:PM2.5 is one of the air pollutants, the most of which are generated through chemical reactions involving emissions from fossil fuels, exhaust gases, and factories. Given PM2.5’s negative impact on society and health, the importance of prediction is increasing in response to growing public interest. In this study, we aimed to predict the concentration of PM2.5 in Jung-gu, Seoul, using machine learning methods. We collected data on various air pollutants (SO2, O3, NO2, CO, PM10) that are known to be potential factors affecting PM2.5 levels. We employed seven different machine learning algorithms as base learners and utilized the Super Learner, which combines the predictions obtained from the weight averaging of the seven algorithms. The results indicated that ensemble models, such as Random Forest, Gradient Boosting, and eXtreme Gradient Boosting, exhibited superior predictive performance compared to other base learners. However, most base learners struggled to accurately predict the high concentrations of PM2.5 during the test period. In contrast, the Super Learner delivers more accurate predictions for high-concentration observations, ultimately improving prediction results compared to the base learners. KCI Citation Count: 0
Bibliography:https://doi.org/10.5572/KOSAE.2023.39.6.1038
ISSN:1598-7132
2383-5346
DOI:10.5572/KOSAE.2023.39.6.1038