4.5 Article

Evaluation of Different Machine Learning Approaches to Forecasting PM2.5 Mass Concentrations

期刊

AEROSOL AND AIR QUALITY RESEARCH
卷 19, 期 6, 页码 1400-1410

出版社

TAIWAN ASSOC AEROSOL RES-TAAR
DOI: 10.4209/aaqr.2018.12.0450

关键词

Air pollution; Machine learning; Neural networks; Deep learning; Prediction

资金

  1. Strategic Priority Research Program of the Chinese Academy of Sciences [XDA19030301]

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With the rapid growth in the availability of data and computational technologies, multiple machine learning frameworks have been proposed for forecasting air pollution. However, the feasibility of these complex approaches has seldom been verified in developing countries, which generally suffer from heavy air pollution. To forecast PM2.5 concentrations over different time intervals, we implemented three machine learning approaches: multiple additive regression trees (MART), a deep feedforward neural network (DFNN) and a new hybrid model based on long short-term memory (LSTM). By capturing temporal dependencies in the time series data, the LSTM model achieved the best results, with RMSE = 8.91 mu g m(-3) and MAE = 6.21 mu g m(-3). It also explained 80% of the variability (R-2 = 0.8) in the PM2.5 concentrations and predicted 75% of the pollution levels, proving that this methodology can be effective for forecasting and controlling air pollution.

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