发现城市地区的污染源和传播模式

Xiucheng Li, Yun Cheng, G. Cong, Lisi Chen
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引用次数: 26

摘要

空气质量是世界上最重要的环境问题之一,在过去的几年里,许多国家的空气质量已经严重恶化。例如,中国社会科学院报告说,中国的雾霾问题达到了创纪录的水平,中国目前正遭受最严重的空气污染。在造成空气质量的各种因素中,直径小于等于2.5微米的颗粒物(即PM2.5)是一个非常重要的因素;政府和民众越来越关注PM2.5的浓度。在许多城市,政府或企业已经建立了PM2.5监测站,以监测城市空气质量。除了监测之外,人们越来越需要通过PM${2.5}$监测站的数据来发现PM2.5的污染源和发现PM2.5的传播。然而,据我们所知,以前的工作都没有提出一个解决方案来检测污染源和从这些监测数据中挖掘污染传播模式。在这项工作中,我们提出了解决问题的第一种方法,它包括两个步骤。首先提取上升趋势区间,计算空间分布传感器间的因果强度;第二步是构建因果图,并对这些因果图进行频繁子图挖掘,以找到污染源和传播模式。我们在实验中使用了一家公司收集的真实监测数据。本文的实验结果对北京市的污染源和污染物的传播具有重要意义,为政府制定污染源治理政策提供了有益的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering Pollution Sources and Propagation Patterns in Urban Area
Air quality is one of the most important environmental concerns in the world, and it has deteriorated substantially over the past years in many countries. For example, Chinese Academy of Social Sciences reports that the problem of haze and fog in China is hitting a record level, and China is currently suffering from the worst air pollution. Among the various causal factors of air quality, particulate matter with a diameter of 2.5 micrometers or less (i.e., PM2.5) is a very important factor; governments and people are increasingly concerned with the concentration of PM2.5. In many cities, stations for monitoring PM2.5 concentration have been built by governments or companies to monitor urban air quality. Apart from monitoring, there is a rising demand for finding pollution sources of PM2.5 and discovering the transmission of PM2.5 based on the data from PM$_{2.5}$ monitoring stations. However, to the best of our knowledge, none of previous work proposes a solution to the problem of detecting pollution sources and mining pollution propagation patterns from such monitoring data. In this work, we propose the first solution for the problem, which comprises two steps. The first step is to extract the uptrend intervals and calculate the causal strengths among spatially distributed sensors; The second step is to construct causality graphs and perform frequent subgraphs mining on these causality graphs to find pollution sources and propagation patterns. We use real-life monitoring data collected by a company in our experiments. Our experimental results demonstrate significant findings regarding pollution sources and pollutant propagations in Beijing, which will be useful for governments to make policy and govern pollution sources.
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