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大气污染物时空分析的动态相关分析方法。

Dynamic Correlation Analysis Method of Air Pollutants in Spatio-Temporal Analysis.

机构信息

School of Computer and Information Engineering, Beijing Technology and Business University, Beijing 100048, China.

Beijing Key Laboratory of Big Data Technology for Food Safety, Beijing Technology and Business University, Beijing 100048, China.

出版信息

Int J Environ Res Public Health. 2020 Jan 5;17(1):360. doi: 10.3390/ijerph17010360.

Abstract

Pollutant analysis and pollution source tracing are critical issues in air quality management, in which correlation analysis is important for pollutant relation modeling. A dynamic correlation analysis method was proposed to meet the real-time requirement in atmospheric management. Firstly, the spatio-temporal analysis framework was designed, in which the process of data monitoring, correlation calculation, and result presentation were defined. Secondly, the core correlation calculation method was improved with an adaptive data truncation and grey relational analysis. Thirdly, based on the general framework and correlation calculation, the whole algorithm was proposed for various analysis tasks in time and space, providing the data basis for ranking and decision on pollutant effects. Finally, experiments were conducted with the practical data monitored in an industrial park of Hebei Province, China. The different pollutants in multiple monitoring stations were analyzed crosswise. The dynamic features of the results were obtained to present the variational correlation degrees from the proposed and contrast methods. The results proved that the proposed dynamic correlation analysis could quickly acquire atmospheric pollution information. Moreover, it can help to deduce the influence relation of pollutants in multiple locations.

摘要

污染物分析和污染源追溯是空气质量管理中的关键问题,其中相关分析对于污染物关系建模很重要。为了满足大气管理中的实时要求,提出了一种动态相关分析方法。首先,设计了时空分析框架,其中定义了数据监测、相关计算和结果表示的过程。其次,改进了核心相关计算方法,采用自适应数据截断和灰色关联分析。第三,基于通用框架和相关计算,提出了针对时间和空间的各种分析任务的整体算法,为污染物影响的排序和决策提供数据基础。最后,使用中国河北省工业园区监测的实际数据进行了实验。对多个监测站的不同污染物进行了横向分析。得到结果的动态特征,以显示从提出的和对比方法得出的变化相关度。结果表明,所提出的动态相关分析可以快速获取大气污染信息,并且有助于推断多个位置的污染物影响关系。

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