Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek

Abstract During recent years, severe air-pollution problems have garnered worldwide attention due to their effects on human health and the environment. Air pollution in Bishkek, Kyrgyz Republic, is an ever-increasing problem with little research conducted on the impact of air pollutants on public he...

Full description

Saved in:
Bibliographic Details
Main Authors: Erkin Isaev, Boobek Ajikeev, Urmatbek Shamyrkanov, Kenjebek-uulu Kalnur, Karimov Maisalbek, Roy C. Sidle
Format: Article
Language:English
Published: Springer 2022-01-01
Series:Aerosol and Air Quality Research
Subjects:
Online Access:https://doi.org/10.4209/aaqr.210336
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1825197680300654592
author Erkin Isaev
Boobek Ajikeev
Urmatbek Shamyrkanov
Kenjebek-uulu Kalnur
Karimov Maisalbek
Roy C. Sidle
author_facet Erkin Isaev
Boobek Ajikeev
Urmatbek Shamyrkanov
Kenjebek-uulu Kalnur
Karimov Maisalbek
Roy C. Sidle
author_sort Erkin Isaev
collection DOAJ
description Abstract During recent years, severe air-pollution problems have garnered worldwide attention due to their effects on human health and the environment. Air pollution in Bishkek, Kyrgyz Republic, is an ever-increasing problem with little research conducted on the impact of air pollutants on public health. We evaluate the performance of several machine learning algorithms applied to air quality and meteorology datasets and compare prediction accuracies of Bishkek air quality given its significant public importance. Data on 16 synoptic atmospheric process were collected by Kyrgyzhydromet from 2016 to 2018 and used to train and build a forecasting model. The model was then tested using data collected in 2020. Climate change in Bishkek and the impact on air pollution was assessed via the frequency of days characterized by daytime temperature inversions and air stagnation. Atmospheric stability increased from 2015 to 2020 with ongoing climate change leading to more temperature inversions. About 80%–90% of days with temperature inversions are associated with winter heating seasons and these numbers increased two-fold during the past 5 years. The impact of lockdown during COVID-19 (22 March–11 May 2020) on air quality in Bishkek is also shown. During the lockdown period, CO, NO, NO2, SO2, and PM2.5 decreased by 64%, 1.5%, 75%, 24%, and 54%, respectively, compared to concentrations of these pollutants in 2019. Where identified, emissions from vehicles make up a significant part of the air pollution.
format Article
id doaj-art-d5c5edca40bd41ee90403a3473c52c47
institution Kabale University
issn 1680-8584
2071-1409
language English
publishDate 2022-01-01
publisher Springer
record_format Article
series Aerosol and Air Quality Research
spelling doaj-art-d5c5edca40bd41ee90403a3473c52c472025-02-09T12:17:30ZengSpringerAerosol and Air Quality Research1680-85842071-14092022-01-0122311310.4209/aaqr.210336Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in BishkekErkin Isaev0Boobek Ajikeev1Urmatbek Shamyrkanov2Kenjebek-uulu Kalnur3Karimov Maisalbek4Roy C. Sidle5Mountain Societies Research Institute, University of Central AsiaMinistry of Emergency Situation of The Kyrgyz RepublicMinistry of Emergency Situation of The Kyrgyz RepublicThe Agency on Hydrometeorology under The Ministry of Emergency Situations of the Kyrgyz Republic (Kyrgyzhydromet)The Agency on Hydrometeorology under The Ministry of Emergency Situations of the Kyrgyz Republic (Kyrgyzhydromet)Mountain Societies Research Institute, University of Central AsiaAbstract During recent years, severe air-pollution problems have garnered worldwide attention due to their effects on human health and the environment. Air pollution in Bishkek, Kyrgyz Republic, is an ever-increasing problem with little research conducted on the impact of air pollutants on public health. We evaluate the performance of several machine learning algorithms applied to air quality and meteorology datasets and compare prediction accuracies of Bishkek air quality given its significant public importance. Data on 16 synoptic atmospheric process were collected by Kyrgyzhydromet from 2016 to 2018 and used to train and build a forecasting model. The model was then tested using data collected in 2020. Climate change in Bishkek and the impact on air pollution was assessed via the frequency of days characterized by daytime temperature inversions and air stagnation. Atmospheric stability increased from 2015 to 2020 with ongoing climate change leading to more temperature inversions. About 80%–90% of days with temperature inversions are associated with winter heating seasons and these numbers increased two-fold during the past 5 years. The impact of lockdown during COVID-19 (22 March–11 May 2020) on air quality in Bishkek is also shown. During the lockdown period, CO, NO, NO2, SO2, and PM2.5 decreased by 64%, 1.5%, 75%, 24%, and 54%, respectively, compared to concentrations of these pollutants in 2019. Where identified, emissions from vehicles make up a significant part of the air pollution.https://doi.org/10.4209/aaqr.210336Air PollutionMachine LearningKyrgyzstanCOVID-19Climate change
spellingShingle Erkin Isaev
Boobek Ajikeev
Urmatbek Shamyrkanov
Kenjebek-uulu Kalnur
Karimov Maisalbek
Roy C. Sidle
Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek
Aerosol and Air Quality Research
Air Pollution
Machine Learning
Kyrgyzstan
COVID-19
Climate change
title Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek
title_full Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek
title_fullStr Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek
title_full_unstemmed Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek
title_short Impact of Climate Change and Air Pollution Forecasting Using Machine Learning Techniques in Bishkek
title_sort impact of climate change and air pollution forecasting using machine learning techniques in bishkek
topic Air Pollution
Machine Learning
Kyrgyzstan
COVID-19
Climate change
url https://doi.org/10.4209/aaqr.210336
work_keys_str_mv AT erkinisaev impactofclimatechangeandairpollutionforecastingusingmachinelearningtechniquesinbishkek
AT boobekajikeev impactofclimatechangeandairpollutionforecastingusingmachinelearningtechniquesinbishkek
AT urmatbekshamyrkanov impactofclimatechangeandairpollutionforecastingusingmachinelearningtechniquesinbishkek
AT kenjebekuulukalnur impactofclimatechangeandairpollutionforecastingusingmachinelearningtechniquesinbishkek
AT karimovmaisalbek impactofclimatechangeandairpollutionforecastingusingmachinelearningtechniquesinbishkek
AT roycsidle impactofclimatechangeandairpollutionforecastingusingmachinelearningtechniquesinbishkek