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Stochastic Univariate and Multivariate Time Series Analysis of PM2.5 and PM10 Air Pollution: A Comparative Case Study for Plovdiv and Asenovgrad, Bulgaria

机译:PM2.5和PM10空气污染的随机单变量和多变量时间序列分析:保加利亚普罗夫迪夫和朝城夫人的比较案例研究

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Fine particulate matter PM2.5 and PM10 air pollutants are a serious problem in many urban areas affecting both the health of the population and the environment as a whole. The availability of large data arrays for the levels of these pollutants makes it possible to perform statistical analysis, to obtain relevant information, and to find patterns within the data. Research in this field is particularly topical for a number of Bulgarian cities, European country, where in recent years regulatory air pollution health limits are constantly being exceeded. This paper examines average daily data for air pollution with PM2.5 and PM10, collected by 3 monitoring stations in the cities of Plovdiv and Asenovgrad between 2011 and 2016. The goal is to find and analyze actual relationships in data time series, to build adequate mathematical models, and to develop short-term forecasts. Modeling is carried out by stochastic univariate and multivariate time series analysis, based on Box-Jenkins methodology. The best models are selected following initial transformation of the data and using a set of standard and robust statistical criteria. The Mathematica and SPSS software were used to perform calculations. This examination showed measured concentrations of PM2.5 and PM10 in the region of Plovdiv and Asenovgrad regularly exceed permissible European and national health and safety thresholds. We obtained adequate stochastic models with high statistical fit with the data and good quality forecasting when compared against actual measurements. The mathematical approach applied provides an independent alternative to standard official monitoring and control means for air pollution in urban areas.
机译:细颗粒物质PM2.5和PM10空气污染物是许多城市地区的严重问题,影响人口的人口健康和整个环境。对于这些污染物的级别的大数据阵列的可用性使得可以进行统计分析以获取相关信息,并在数据中查找模式。这一领域的研究尤其是欧洲国家,欧洲国家的一些保加利亚城市,近年来不断超过监管空气污染健康限制。本文研究了PM2.5和PM10的平均日常数据,PM2.5和PM10,由Plovdiv和2016年之间的3个监测站收集。目标是在数据时间序列中找到和分析实际关系,以建立充足的建立数学模型,并开发短期预测。基于Box-Jenkins方法,通过随机单变量和多变量时间序列分析进行建模。在数据的初始转换后选择最佳模型,并使用一组标准和强大的统计标准。 MatheMatica和SPSS软件用于执行计算。该检查显示Plovdiv和Asenovgrad在Plovdiv区域中的PM2.5和PM10的测量浓度定期超过允许的欧洲和国家健康和安全阈值。我们获得了足够的随机模型,具有高统计拟合,与实际测量相比,数据和良好的质量预测。应用数学方法为城市地区空气污染的标准官方监测和控制手段提供了独立的替代方案。

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