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A Long Short-Term Memory (LSTM) Network for Hourly Estimation of PM2.5 Concentration in Two Cities of South Korea

Khaula Qadeer, Wajih Ur Rehman, Ahmad Muqeem Sheri, Inyoung Park, Hong Kook Kim, Moongu Jeon

2020Applied Sciences72 citationsDOIOpen Access PDF

Abstract

Air pollution not only damages the environment but also leads to various illnesses such as respiratory tract and cardiovascular diseases. Nowadays, estimating air pollutants concentration is becoming very important so that people can prepare themselves for the hazardous impact of air pollution beforehand. Various deterministic models have been used to forecast air pollution. In this study, along with various pollutants and meteorological parameters, we also use the concentration of the pollutants predicted by the community multiscale air quality (CMAQ) model which are strongly related to PM 2.5 concentration. After combining these parameters, we implement various machine learning models to predict the hourly forecast of PM 2.5 concentration in two big cities of South Korea and compare their results. It has been shown that Long Short Term Memory network outperforms other well-known gradient tree boosting models, recurrent, and convolutional neural networks.

Topics & Concepts

Gradient boostingPollutantEnvironmental scienceAir quality indexMeteorologyAir pollutionLong short term memoryCMAQAir pollutantsTerm (time)PollutionArtificial neural networkComputer scienceMachine learningGeographyRecurrent neural networkRandom forestQuantum mechanicsChemistryPhysicsOrganic chemistryEcologyBiologyAir Quality Monitoring and ForecastingAir Quality and Health ImpactsVehicle emissions and performance