AIR QUALITY MONITORING IN THE WEST KAZAKHSTAN REGION: PRINCIPLES, METHODS, APPROACHES

V. Salnikov, S. Polyakova, А. Ullman, A. Kauazov, M. Tursumbayeva, D. Kisebayev, D. Miskiv, E. Beldeubayev, G. Musralinova, S. Kozhagulov
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Abstract

The main approaches and methods of studying the characteristics and conditions of atmospheric pollution on the example of Western Kazakhstan are considered. The classification and grouping of applied approaches by topics, methods, time intervals and other relevant criteria was conducted. An analysis of the available information on the sources and volumes of emissions into the atmosphere, as well as on the systems for monitoring the pollution of the air basin, was carried out. It is shown that to increase the effectiveness of the atmospheric air quality management system, it is expedient to use a complex approach taking into account the influence of meteorological factors and synoptic conditions that determine different levels of pollution. An analytical review of modern methods of modeling the spread of pollutants in atmospheric air showed the feasibility of using statistical methods integrated with deep machine learning and the Eulerian continuum model of turbulent diffusion. The obtained conclusions will allow further use of an integrated approach to improve the atmospheric air quality management system of the studied region.
西哈萨克斯坦地区的空气质量监测:原则、方法和途径
以哈萨克斯坦西部为例,探讨了研究大气污染特征和条件的主要方法和途径。按照主题、方法、时间间隔和其他相关标准对应用方法进行了分类和分组。对有关大气排放源和排放量以及大气盆地污染监测系统的现有信息进行了分析。结果表明,为了提高大气空气质量管理系统的有效性,最好采用一种复杂的方法,同时考虑到决定不同污染程度的气象因素和同步条件的影响。对大气中污染物扩散的现代建模方法的分析回顾表明,使用与深度机器学习和湍流扩散欧拉连续模型相结合的统计方法是可行的。得出的结论将有助于进一步使用综合方法来改进所研究地区的大气空气质量管理系统。
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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