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Self-adaptive spatial-temporal network based on heterogeneous data for air quality prediction

机译:基于空气质量预测的异构数据的自适应空间网络

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摘要

With the development of society and the rise of people's environmental awareness, air pollution is receiving increased public attention. Accurate air quality prediction can provide useful information for government decision-making and residents' activities. However, accurately predicting future air quality remains a challenging task because of the complex spatial-temporal dependencies of air quality. Previous studies failed to explicitly model these spatial-temporal dependencies. In this paper, we propose a self-adaptive spatial-temporal network (SA-STNet) to efficiently and effectively capture the spatial-temporal dependencies of air quality. In order to effectively aggregate spatial information, we employ a self-adaptive graph convolution module that can learn the latent spatial correlations of air quality automatically. In the temporal dimension, we utilise three independent components to capture the recent, daily-periodic, and weekly-periodic temporal dependencies of air quality, respectively. In addition, our model exploits rich external complementary information by means of a features extraction component. A parametric-matrix-based fusion architecture is used to combine the outputs of different components into a joint representation which is used for generating the final prediction results. Extensive experiments carried out on real-world datasets demonstrate the outstanding performance of our model compared with baselines and state-of-the-art methods.
机译:随着社会的发展和人民环境意识的兴起,空气污染正在受到增加的公众关注。准确的空气质量预测可以为政府决策和居民的活动提供有用的信息。然而,由于空气质量的复杂空间依赖性,准确预测未来的空气质量仍然是一个具有挑战性的任务。以前的研究未能显式模拟这些空间依赖性。在本文中,我们提出了一种自适应空间 - 时间网络(SA-StNET),以有效地捕获空气质量的空间时间依赖性。为了有效地聚合空间信息,我们采用自适应图形卷积模块,可以自动学习空气质量的潜在空间相关性。在时间维度中,我们利用三个独立的组件分别捕获最近,每日周期性和每周定期的空气质量的时间依赖性。此外,我们的模型通过特性提取组件利用丰富的外部补充信息。基于参数 - 矩阵的融合架构用于将不同组件的输出组合到用于产生最终预测结果的关节表示。在现实世界数据集上进行的广泛实验展示了与基线和最先进的方法相比我们模型的出色表现。

著录项

  • 来源
    《Connection Science》 |2021年第3期|427-446|共20页
  • 作者单位

    Chongqing Univ Coll Comp Sci Chongqing Peoples R China|Chongqing Key Lab Software Theory & Technol Chongqing Peoples R China;

    Chongqing Univ Coll Comp Sci Chongqing Peoples R China|Chongqing Key Lab Software Theory & Technol Chongqing Peoples R China;

    Chongqing Univ Coll Comp Sci Chongqing Peoples R China|Chongqing Key Lab Software Theory & Technol Chongqing Peoples R China;

    Chongqing Univ Coll Comp Sci Chongqing Peoples R China|Chongqing Key Lab Software Theory & Technol Chongqing Peoples R China;

    Chongqing Univ Coll Comp Sci Chongqing Peoples R China|Chongqing Key Lab Software Theory & Technol Chongqing Peoples R China;

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

    Air quality prediction; spatial-temporal dependencies; deep learning; graph convolutional network;

    机译:空气质量预测;空间依赖性;深度学习;图卷积网络;

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