挖掘PM2.5和交通状况对空气质量的影响

Xu Du, A. Varde
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引用次数: 9

摘要

细颗粒物污染与道路交通状况有关。在这项工作中,我们分析了直径小于2.5微米的颗粒物,即PM2.5,以及交通状况。这是对多城市数据进行的,以研究环境建模背景下的关系。这个模型的目的是支持PM2.5浓度和由此产生的空气质量的预测。我们在关联规则、聚类和分类中部署数据挖掘算法,从相关数据集中发现知识。研究结果将用于开发一个原型工具,用于预测PM2.5,从而预测公共健康和安全的空气质量。本文描述了我们的方法,并通过PM2.5预测的例子进行了实验,这将有助于为智慧城市背景下的潜在用户提供决策支持。这些用户包括城市居民、环境科学家和城市规划者。据我们所知,这项工作的新颖之处在于通过数据挖掘对多城市PM2.5进行分析,并由此得出空气质量预测工具,这是同类工具中的第一个。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining PM2.5 and traffic conditions for air quality
Fine particle pollution is related to road traffic conditions. In this work, we analyze Particulate Matter with a diameter less than 2.5 micrometers, called PM2.5, along with traffic conditions. This is done for multicity data to study the relationships in the context of environmental modeling. The goal behind this modeling is to support prediction of PM2.5 concentration and resulting air quality. We deploy data mining algorithms in association rules, clustering and classification to discover knowledge from the concerned data sets. The results are used to develop a prototype tool for the prediction of PM2.5 and hence air quality for public health and safety. This paper describes our approach and experiments with examples of PM2.5 prediction that would be helpful for decision support to potential users in a smart cities context. These users include city dwellers, environmental scientists and urban planners. Novel aspects of this work are multicity PM2.5 analysis by data mining and the resulting air quality prediction tool, the first of its kind, to the best of our knowledge.
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