A temporal domain generalization method for PM2.5 concentration prediction based on adversarial training and deep variational information bottleneck

IF 3.9 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Atmospheric Pollution Research Pub Date : 2025-02-20 DOI:10.1016/j.apr.2025.102472
Miaoxuan Shan , Chunlin Ye , Peng Chen , Shufan Peng
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引用次数: 0

Abstract

Accurate prediction of PM2.5 concentration is crucial for environmental pollution control and public safety. However, PM2.5 concentration is influenced by various factors and follows a dynamic temporal distribution, potentially reducing the generalization capability of prediction models for future prediction. To address this issue, we propose a novel temporal domain generalization method modeled from a distribution perspective. This method aims to extract invariant information from dynamic and time-varying temporal distributions to improve future prediction by combining adversarial training and deep variational information bottleneck (Deep VIB). Specifically, the training data is first segmented into multiple temporal domains characterized by the largest temporal distribution differences. Deep VIB is then employed to extract fine-grained features, combined with a domain classifier to eliminate domain-specific information through adversarial training. Finally, only the trained feature extractor and predictor are applied to the prediction process. This approach enables the prediction model to simultaneously extract domain-invariant features while minimizing prediction errors, thereby enhancing its generalization capability. Experimental results from real-world data demonstrate that the proposed method outperforms state-of-the-art prediction models, achieving average improvements of 3% in mean absolute error, 7% in root mean square error, and 3% in R-square compared to the best baseline models.
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来源期刊
Atmospheric Pollution Research
Atmospheric Pollution Research ENVIRONMENTAL SCIENCES-
CiteScore
8.30
自引率
6.70%
发文量
256
审稿时长
36 days
期刊介绍: Atmospheric Pollution Research (APR) is an international journal designed for the publication of articles on air pollution. Papers should present novel experimental results, theory and modeling of air pollution on local, regional, or global scales. Areas covered are research on inorganic, organic, and persistent organic air pollutants, air quality monitoring, air quality management, atmospheric dispersion and transport, air-surface (soil, water, and vegetation) exchange of pollutants, dry and wet deposition, indoor air quality, exposure assessment, health effects, satellite measurements, natural emissions, atmospheric chemistry, greenhouse gases, and effects on climate change.
期刊最新文献
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