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A novel method for identifying hotspots and forecasting air quality through an adaptive utilization of spatio-temporal information of multiple factors

机译:一种新的方法,用于通过自适应利用多因素的时空信息来识别热点和预测空气质量

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摘要

Air pollution exerts serious impacts on human health and sustainable development. The accurate forecasting of air quality can guide the formulation of mitigation strategies and reduce exposure to air pollution. It is beneficial to explicitly consider both spatial and temporal information of multiple factors, e.g., the meteorological data, in the forecasting of air pollutant concentrations. The temporal information of relevant factors collected at a location should be considered for forecasting. In addition, these factors recorded at other locations may also provide useful information. Existing methods utilizing the spatio-temporal information of these relevant factors are usually based on some very complicated frameworks. In this study, we propose a novel and simple spatial attention-based long short-term memory (SA-LSTM) that combines LSTM and a spatial attention mechanism to adaptively utilize the spatio-temporal information of multiple factors for forecasting air pollutant concentrations. Specifically, the SA-LSTM employs gated recurrent connections to extract temporal information of multiple factors at individual locations, and the spatial attention mechanism to spatially fuse the temporal information extracted at these locations. This method is effective and applicable to forecast any air pollutant concentrations when spatio-temporal information of relevant factors has to be utilized. To validate the effectiveness of the proposed SA-LSTM, we apply it to forecast the daily air quality in Hong Kong, a high density city with peculiar cityscapes, by using the air quality and meteorological data. Empirical results demonstrate that the proposed SA-LSTM outperforms the conventional models with respect to one-day forecast accuracy, especially for extreme values. Moreover, the attention weights learned by the SA-LSTM can identify hotspots of the air pollution process for reducing computational complexity of forecasting and provide a better understanding of the underlying mechanism of air pollution.
机译:空气污染对人类健康和可持续发展产生严重影响。准确的空气质量的预测可以指导分配缓解策略,减少空气污染暴露。在预测空气污染物浓度的预测中,明确地考虑多个因素的空间和时间信息是有益的,例如气象数据。应考虑在某个地点收集的相关因子的时间信息进行预测。此外,在其他地点记录的这些因素还可以提供有用的信息。利用这些相关因素的时空信息的现有方法通常基于一些非常复杂的框架。在这项研究中,我们提出了一种新颖且简单的空间关注的长短期记忆(SA-LSTM),其结合了LSTM和空间注意机制,以自适应地利用多种因素的时空信息来预测空气污染物浓度。具体地,SA-LSTM采用所门控经常性连接,以提取各个位置处的多个因素的时间信息,以及空间注意机制在空间熔断在这些位置提取的时间信息。该方法有效且适用于预测必须利用相关因素的时空信息时的任何空气污染物浓度。为了验证拟议的SA-LSTM的有效性,我们将其应用于香港的日常空气质量,通过使用空气质量和气象数据,预测香港的日常空气质量,高密度城市。实证结果表明,所提出的SA-LSTM在定期预测精度方面优于传统模型,特别是对于极端值。此外,SA-LSTM学到的注意重量可以识别空气污染过程的热点,以降低预测的计算复杂性,并更好地了解空气污染的潜在机制。

著录项

  • 来源
    《Science of the total environment》 |2021年第10期|143513.1-143513.13|共13页
  • 作者单位

    School of Mathematics and Statistics Xi'an Jiaotong University Xi'an Shaanxi 710049 China Institute of Future Cities The Chinese University of Hong Kong Shatin Hong Kong China;

    Institute of Future Cities The Chinese University of Hong Kong Shatin Hong Kong China Department of Geography and Resource Management The Chinese University of Hong Kong Shatin Hong Kong China;

    School of Mathematics and Statistics Xi'an Jiaotong University Xi'an Shaanxi 710049 China;

    Institute of Future Cities The Chinese University of Hong Kong Shatin Hong Kong China Department of Geography and Resource Management The Chinese University of Hong Kong Shatin Hong Kong China;

    Department of Mathematics and Information Science Faculty of Science Chang'an University Xi'an ShaanXi 710064 China;

    Institute of Future Cities The Chinese University of Hong Kong Shatin Hong Kong China Department of Geography and Resource Management The Chinese University of Hong Kong Shatin Hong Kong China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Air pollution; Attention mechanism; Long short-term memory;

    机译:空气污染;注意机制;长期短期记忆;

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