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Pushing the spatio-temporal resolution limit of urban air pollution maps

机译:推动城市空气污染图的时空分辨率极限

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Up-to-date information on urban air pollution is of great importance for health protection agencies to assess air quality and provide advice to the general public in a timely manner. In particular, ultrafine particles (UFPs) are widely spread in urban environments and may have a severe impact on human health. However, the lack of knowledge about the spatio-temporal distribution of UFPs hampers profound evaluation of these effects. In this paper, we analyze one of the largest spatially resolved UFP data set publicly available today containing over 25 million measurements. We collected the measurements throughout more than a year using mobile sensor nodes installed on top of public transport vehicles in the city of Zurich, Switzerland. Based on these data, we develop land-use regression models to create pollution maps with a high spatial resolution of 100m × 100 m. We compare the accuracy of the derived models across various time scales and observe a rapid drop in accuracy for maps with subweekly temporal resolution. To address this problem, we propose a novel modeling approach that incorporates past measurements annotated with metadata into the modeling process. In this way, we achieve a 26% reduction in the root-mean-square error—a standard metric to evaluate the accuracy of air quality models—of pollution maps with semi-daily temporal resolution. We believe that our findings can help epidemiologists to better understand the adverse health effects related to UFPs and serve as a stepping stone towards detailed real-time pollution assessment.
机译:关于城市空气污染的最新信息对于健康保护机构评估空气质量并及时向公众提供建议非常重要。特别是,超细颗粒(UFP)在城市环境中广泛传播,可能对人类健康产生严重影响。但是,缺乏关于UFPs的时空分布的知识妨碍了对这些影响的深刻评估。在本文中,我们分析了当今最大的空间分辨UFP数据集之一,该数据集包含超过2500万个测量值。我们使用安装在瑞士苏黎世市公共交通车辆顶部的移动传感器节点,在一年多的时间内收集了测量数据。基于这些数据,我们开发了土地利用回归模型,以创建具有100m×100 m的高空间分辨率的污染图。我们在各个时间尺度上比较了衍生模型的准确性,并观察到具有亚周时间分辨率的地图的准确性迅速下降。为了解决这个问题,我们提出了一种新颖的建模方法,该方法将过去标注有元数据的测量结果纳入建模过程。通过这种方式,我们将具有半每日时间分辨率的污染图的均方根误差(评估空气质量模型准确性的标准指标)降低了26%。我们相信我们的发现可以帮助流行病学家更好地了解与UFP相关的不良健康影响,并且可以成为详细实时污染评估的垫脚石。

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