A High-Density Digital Environmental Monitoring System for Vehicle Emissions


Shepelev V. Vorobyev A. Kurmanov A.
2024Institute of Electrical and Electronics Engineers Inc.

RusAutoCon - Proceedings of the International Russian Automation Conference
2024Issue 2024680 - 684 pp.

Air quality is a critical issue for populations living in large cities with developed transportation infrastructures. Transport makes a significant contribution to air pollution, and in the era of rapid technological development, the application of intelligent transportation systems, and the advancement of smart cities, the problem of air quality remains acute. Oversaturated traffic flows are difficult to describe using mathematical models and apply effective management strategies. However, models based on the use of artificial neural networks can provide a solution. This paper proposes a strategy for air quality monitoring using a deeply trained neural network, which takes into account real-time parameters of traffic flow and meteorological conditions. This strategy has been successfully implemented in the city of Chelyabinsk, and the calculated data is correlated with data obtained from mobile laboratories at four stations located on one of the central streets of the city.

emissions of harmful substances , intelligent transport systems , mathematical model , monitoring

Text of the article Перейти на текст статьи

South Ural State University, Department of Automobile Transportation, Chelyabinsk, Russian Federation
State Technical University, Moscow Automobile and Road Construction, Department of Organization and Traffic Safety, Moscow, Russian Federation
Akhmet Baitursynuly Kostanay Regional University, Department of Agricultural Machinery and Transport, Kostanay, Kazakhstan

South Ural State University
State Technical University
Akhmet Baitursynuly Kostanay Regional University

10 лет помогаем публиковать статьи Международный издатель

Книга Публикация научной статьи Волощук 2026 Book Publication of a scientific article 2026