MODIFICATION OF THE AIR QUALITY INDEX CLASSIFIER IN BISHKEK TAKING INTO ACCOUNT THE POLLUTION FACTOR

Authors

  • Lychenko N.M. Machinery researching and Аutomatics Institute of Kyrgyz Republic National Academy of Science
  • Sorokovaya A.V. Machinery researching and Automatics Institute of Kyrgyz Republic National Academy of Sciences

Keywords:

classification, forecast, air quality index, LSTM neural network, pollution factors

Abstract

The results of the analysis and use of information on the number of tons of coal burned daily at the CHPP in Bishkek to improve the accuracy of the forecast of the air quality index (AQI) class based on the LSTM-neural classifier are presented. This classifier allows, depending on meteorological conditions and the previous history of AQI values, to predict the AQI class from the possible four integrated classes: AQI50 / 50 <AQI100 / 100 <AQI150 / AQI> 150. Taking into account the pollution factor as an additional input of the classifier made it possible to obtain a forecast of the AQI class with an accuracy of at least 80%.

References

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Published

2021-11-17

How to Cite

Lychenko, N., & Sorokovaya, A. (2021). MODIFICATION OF THE AIR QUALITY INDEX CLASSIFIER IN BISHKEK TAKING INTO ACCOUNT THE POLLUTION FACTOR. Problemy Avtomatiki I Upravleniâ, (3), 101–110. Retrieved from https://pau.imash.kg/index.php/pau/article/view/221

Issue

Section

INFORMATION TECHNOLOGY AND INFORMATION PROCESSING

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