Fractal Analysis of Air Pollution Time Series in Urban Areas in Astana, Republic of Kazakhstan

Author:

Biloshchytskyi Andrii12,Neftissov Alexandr3ORCID,Kuchanskyi Oleksandr45ORCID,Andrashko Yurii6ORCID,Biloshchytska Svitlana24,Mukhatayev Aidos17,Kazambayev Ilyas3

Affiliation:

1. University Administration, Astana IT University, Astana 010000, Kazakhstan

2. Department of Information Technology, Kyiv National University of Construction and Architecture, 03037 Kyiv, Ukraine

3. Research and Innovation Center “Industry 4.0”, Astana IT University, Astana 010000, Kazakhstan

4. Department of Computational and Data Science, Astana IT University, Astana 010000, Kazakhstan

5. Department of Information Control Systems and Technologies, Uzhhorod National University, 88000 Uzhhorod, Ukraine

6. Department of System Analysis and Optimization Theory, Uzhhorod National University, 88000 Uzhhorod, Ukraine

7. Higher Education Development National Center, Astana 010000, Kazakhstan

Abstract

The life quality of populations, especially in large agglomerations, is significantly reduced due to air pollution. Major sources of pollution include motor vehicles, industrial facilities and the burning of fossil fuels. A particularly significant source of pollution is thermal power plants and coal-fired power plants, which are widely used in developing countries. The Astana city in the Republic of Kazakhstan is a fast-growing agglomeration where air pollution is compounded by intensive construction and the use of coal for heating. The research is important for the development of urbanism in terms of ensuring the sustainable development of urban agglomerations, which are growing rapidly. Long memory in time series of concentrations of air pollutants (particulate matter PM10, PM2.5) from four stations in Astana using the fractal R/S analysis method was studied. The Hurst exponents for the studied stations are 0.723; 0.548; 0.442 and 0.462. In addition, the behavior of the Hurst exponent in dynamics is studied by the flow window method based on R/S analysis. As a result, it was found that the pollution indicators of one of the stations are characterized by the presence of long-term memory and the time series is persistent. According to the analysis of recordings from the second station, the series is defined as close to random, and for stations 3 and 4, anti-persistence is characteristic. The calculated Hurst exponent values explain the sharp increase in pollution levels in October 2021. The reason for the increase in polluting substances concentration in the air is the close location of thermal power plants to the city. The method of time series fractal analysis can be the ecological state indicator in the corresponding region. Persistent pollution time series can be used to predict the occurrence of a critical pollution level. One of the reasons for anti-persistence or the occurrence of a temporary contamination level may be the close location of the observation station to the source of contamination. The obtained results indicate that the fractal time series analysis method can be an indicator of the ecological state in the relevant region.

Funder

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

Publisher

MDPI AG

Reference30 articles.

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