Mining Public Datasets for Modeling Intra-City PM2.5 Concentrations at a Fine Spatial Resolution.

Yijun Lin, Dimitrios Stripelis, Yao-Yi Chiang, José Luis Ambite, Rima Habre, Fan Pan, Sandrah P Eckel
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Abstract

Air quality models are important for studying the impact of air pollutant on health conditions at a fine spatiotemporal scale. Existing work typically relies on area-specific, expert-selected attributes of pollution emissions (e,g., transportation) and dispersion (e.g., meteorology) for building the model for each combination of study areas, pollutant types, and spatiotemporal scales. In this paper, we present a data mining approach that utilizes publicly available OpenStreetMap (OSM) data to automatically generate an air quality model for the concentrations of fine particulate matter less than 2.5 μm in aerodynamic diameter at various temporal scales. Our experiment shows that our (domain-) expert-free model could generate accurate PM2.5 concentration predictions, which can be used to improve air quality models that traditionally rely on expert-selected input. Our approach also quantifies the impact on air quality from a variety of geographic features (i.e., how various types of geographic features such as parking lots and commercial buildings affect air quality and from what distance) representing mobile, stationary and area natural and anthropogenic air pollution sources. This approach is particularly important for enabling the construction of context-specific spatiotemporal models of air pollution, allowing investigations of the impact of air pollution exposures on sensitive populations such as children with asthma at scale.

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Abstract Image

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挖掘公共数据集,以精细的空间分辨率对城市内 PM2.5 浓度进行建模。
空气质量模型对于研究空气污染物在精细时空尺度上对健康状况的影响非常重要。现有的工作通常依赖于特定区域、专家选择的污染排放(如交通)和扩散(如气象)属性,为研究区域、污染物类型和时空尺度的每种组合建立模型。在本文中,我们介绍了一种数据挖掘方法,该方法利用公开的 OpenStreetMap(OSM)数据,自动生成不同时空尺度下空气动力学直径小于 2.5 μm 的细颗粒物浓度的空气质量模型。我们的实验表明,我们的(无领域)专家模型可以生成准确的 PM2.5 浓度预测,可用于改进传统上依赖专家选择输入的空气质量模型。我们的方法还量化了各种地理特征对空气质量的影响(即停车场和商业建筑等各类地理特征对空气质量的影响以及影响距离),这些地理特征代表了移动、固定和区域性的自然和人为空气污染源。这种方法对于构建针对具体环境的空气污染时空模型尤为重要,可用于调查空气污染暴露对哮喘儿童等敏感人群的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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