Analysis of pollutants in air within the territory of Ukraine using geostatistical methods

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2023-09-29 DOI:10.32620/reks.2023.3.18
Olga Butenko, Anna Topchiy
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Abstract

Air quality has recently been of great concern, as it directly affects people's lives. Continuous monitoring of atmospheric air quality and forecasting the dynamics of its changes are essential steps in assessing its current state and determining the concentration of pollutants. Therefore, the development of an effective system for assessing and forecasting the quality of atmospheric air has become one of the most important tasks. The subject matter of this article is geostatistical methods for air quality analysis. The goal is to analyze pollutants in the air over Ukraine's territory from 1990 to 2021. The dataset on air pollutants was provided by the State Statistics Service of Ukraine in the form of aggregated tables, which were initially processed for subsequent modelling. Cartographic modelling of pollutants was performed using geostatistical methods. As a result, this study presents 13 cartographic models showing the spatial distribution of air pollutants for different regions of Ukraine. However, because of the lack of official information on the presence of military actions, the results of geostatistical methods cannot be interpreted in the context of the military situation in the eastern part of the country. Information about military actions can be gathered from various sources, but this would require a considerable time and effort to structure and systematize the dataset. Conclusions. The method considered in this study cannot simultaneously consider multiple parameters, such as the value of pollutant indicators and the presence of military actions. Additional methods, such as graph theory and regression analysis, are employed to obtain quantitative assessments of the modelling results considering all factors influencing the environmental condition. The chosen method is a straightforward tool for solving environmental problems. Thanks to available GIS systems like ArcGIS Pro, visualization of the applied geostatistical and mathematical methods is possible. The cartographic models presented in this study cover the entire territory of Ukraine and have administrative boundaries depending on the location of the pollutant collection station.
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使用地质统计方法分析乌克兰境内空气中的污染物
空气质量近来备受关注,因为它直接影响到人们的生活。持续监测大气空气质量和预测其动态变化是评估其现状和确定污染物浓度的必要步骤。因此,开发一套有效的大气质量评估和预报系统已成为最重要的任务之一。本文的主题是空气质量分析的地质统计学方法。目标是分析1990年至2021年乌克兰境内空气中的污染物。乌克兰国家统计局以汇总表的形式提供了空气污染物数据集,初步处理后用于后续建模。利用地质统计学方法对污染物进行制图建模。因此,本研究提出了13个地图模型,显示了乌克兰不同地区空气污染物的空间分布。但是,由于缺乏关于是否有军事行动的官方资料,地质统计方法的结果不能根据该国东部的军事情况加以解释。有关军事行动的信息可以从各种来源收集,但这将需要大量的时间和精力来构建和系统化数据集。结论。本研究所考虑的方法不能同时考虑多个参数,如污染物指标的数值、是否存在军事行动等。考虑到影响环境条件的所有因素,采用图论和回归分析等附加方法对建模结果进行定量评估。所选择的方法是解决环境问题的直接工具。得益于ArcGIS Pro等可用的GIS系统,应用地质统计学和数学方法的可视化成为可能。本研究中提出的制图模型涵盖了乌克兰的整个领土,并根据污染物收集站的位置确定行政边界。
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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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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