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Integration of Remote Sensing and Social Sensing Data in a Deep Learning Framework for Hourly Urban PM2.5 Mapping

机译:每小时城市PM2.5映射深入学习框架中遥感和社会传感数据的集成

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摘要

Fine spatiotemporal mapping of PM2.5 concentration in urban areas is of great significance in epidemiologic research. However, both the diversity and the complex nonlinear relationships of PM2.5 influencing factors pose challenges for accurate mapping. To address these issues, we innovatively combined social sensing data with remote sensing data and other auxiliary variables, which can bring both natural and social factors into the modeling; meanwhile, we used a deep learning method to learn the nonlinear relationships. The geospatial analysis methods were applied to realize effective feature extraction of the social sensing data and a grid matching process was carried out to integrate the spatiotemporal multi-source heterogeneous data. Based on this research strategy, we finally generated hourly PM2.5 concentration data at a spatial resolution of 0.01°. This method was successfully applied to the central urban area of Wuhan in China, which the optimal result of the 10-fold cross-validation R2 was 0.832. Our work indicated that the real-time check-in and traffic index variables can improve both quantitative and mapping results. The mapping results could be potentially applied for urban environmental monitoring, pollution exposure assessment, and health risk research.
机译:PM2.5在城市地区浓度的细时空映射在流行病学研究中具有重要意义。然而,PM2.5的多样性和复杂的非线性关系,影响因素对准确映射构成挑战。为了解决这些问题,我们创新了与遥感数据和其他辅助变量的社交传感数据,可以将自然和社会因素带入建模;同时,我们使用深入的学习方法来学习非线性关系。应用地理空间分析方法来实现社会传感数据的有效特征提取,并进行网格匹配过程,以集成时空多源异构数据。基于该研究策略,我们最终在0.01°的空间分辨率下产生每小时PM2.5浓度数据。该方法成功应用于中国武汉市中心城区,10倍交叉验证R2的最佳结果为0.832。我们的工作表明,实时办理登机手续和流量指数变量可以改善定量和映射结果。绘图结果可能适用于城市环境监测,污染暴露评估和健康风险研究。

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