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PREDICTING THE DYNAMICS OF THE AIR ENVIRONMENT IN URBAN AREAS

https://doi.org/10.33979/2073-7416-2019-81-1-106-114

Abstract

Within the framework of the concept of sustainable urban development, the problem of forecasting the parameters of the air environment is being solved and the impact of the processes occurring in urban areas on the atmosphere is assessed. It is shown that among the main methods for solving this problem is the creation and development of information systems for monitoring, forecasting and warning about the state of the air environment. It has been established that complex information systems are developing most actively, allowing one to consider physical and chemical processes on a fairly large spatial scale, as well as to predict the state of the air environment of the city as a whole. The possibilities of using these systems to study processes in relatively small amounts of air are limited. The authors proposed a schematic diagram of a local information system for predicting the dynamics of the air environment. An algorithm for the implementation of the proposed approach. The results of the development of the measuring component of the local information system are considered in detail. The results of measuring the dynamics of the concentration of carbon monoxide, nitric oxide 4, and sulfur dioxide in the ambient air of residential buildings adjacent to the territory of the Oryol CHP during the day are presented. It is shown that the dynamics of the concentration of pollutants in the air during the day, obtained experimentally, corresponds to modern theoretical ideas about the nature of the distribution of the pollutants in the air. On the basis of the obtained results, it was concluded that the developed measuring component of the local information system for forecasting the dynamics of the air environment was adequate.

About the Authors

E. A. Skobeleva
Orel State University named after I.S. Turgenev
Russian Federation


A. V. Abramov
Orel State University named after I.S. Turgenev
Russian Federation


O. V. Pilipenko
Orel State University named after I.S. Turgenev
Russian Federation


O. A. Pchelenok
Orel State University named after I.S. Turgenev
Russian Federation


M. V. Rodicheva
Orel State University named after I.S. Turgenev
Russian Federation


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For citations:


Skobeleva E.A., Abramov A.V., Pilipenko O.V., Pchelenok O.A., Rodicheva M.V. PREDICTING THE DYNAMICS OF THE AIR ENVIRONMENT IN URBAN AREAS. Building and Reconstruction. 2019;(1):106-114. (In Russ.) https://doi.org/10.33979/2073-7416-2019-81-1-106-114

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