Analysis of Data on Air Pollutants in the City by Machine-Intelligent Methods Considering Climatic and Geographical Features

Author:

Temirbekov Nurlan12,Kasenov Syrym12ORCID,Berkinbayev Galym3,Temirbekov Almas12,Tamabay Dinara12ORCID,Temirbekova Marzhan14

Affiliation:

1. National Engineering Academy of RK, Almaty 050010, Kazakhstan

2. Faculty of Mechanics and Mathematics, Al-Farabi Kazakh National University, Almaty 050040, Kazakhstan

3. Limited Liability Partnership “Ecoservice-S”, Almaty 050009, Kazakhstan

4. Department of International Cooperation and Academic Mobility, Almaty University of Power Engineering and Telecommunications Named after G. Daukeyev, Almaty 050013, Kazakhstan

Abstract

In the world, air pollution ranks among the primary sources of risk to human health and the environment. To assess the risk of impact of atmospheric pollution, a comprehensive research cycle was designed to develop a unified ecosystem for monitoring air pollution in industrial cities in Kazakhstan. Research involves analyzing data for the winter period from 20 automated monitoring stations (AMS) located in Almaty and conducting chemical-analytical studies of snowmelt water samples from 22 points to identify such pollutants as fine particulate matters, petroleum products, and heavy metals. Research includes a bio-experiment involving the cultivation of watercress on samples of melt water collected from snow cover to examine the effects of pollution on plants. In the framework of this research, we determined API based on data obtained from AMS. In order to determine the influence of atmospheric pollution on the environment, a multiple regression model was developed using machine learning algorithms to reveal the relationship between the bio-experiment data and data on pollutants of chemical-analytical research. The results revealed a wide spread of pollutants in the snow cover of the urban environment, a correlation between pollutants in the snow cover and the airspace of the city, and their negative impact on flora.

Funder

Science Committee of the Ministry of Higher Education and Science of the Republic of Kazakhstan

Publisher

MDPI AG

Subject

Atmospheric Science,Environmental Science (miscellaneous)

Reference42 articles.

1. Bureau of National Statistics (2023, April 10). On the Change in the Population of the Republic of Kazakhstan from the Beginning of 2022 to October 1, 2022. 9 November 2022, (In Russian).

2. Kozybayev, M.K. (1983). Kazakh Soviet Encyclopedia, Macmillan. (In Russian).

3. The Kazakh SSR: A short encyclopedia;Nurgaliev;Kazakh Soviet Encyclopedia,1988

4. Cherednichenko, A.V. (2013). Time Series of Temperature and Precipitation, MegaPrint. (In Russian).

5. (2002). A Comprehensive Program for Improving the Environmental Situation in Almaty for 1999–2015. “Taza aua—Zhanga daua”, Almaty City Department for Environmental Protection. (In Russian).

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