Application of Deep Learning Models and Network Method for Comprehensive Air-Quality Index Prediction

  • Kim, Donghyun
  • Han, Heechan
  • Wang, Wonjoon
  • Kang, Yujin
  • Lee, Hoyong
  • ... Kim, Hung Soo
Citations

WEB OF SCIENCE

26
Citations

SCOPUS

33

초록

Accurate pollutant prediction is essential in fields such as meteorology, meteorological disasters, and climate change studies. In this study, long short-term memory (LSTM) and deep neural network (DNN) models were applied to six pollutants and comprehensive air-quality index (CAI) predictions from 2015 to 2020 in Korea. In addition, we used the network method to find the best data sources that provide factors affecting comprehensive air-quality index behaviors. This study had two steps: (1) predicting the six pollutants, including fine dust (PM10), fine particulate matter (PM2.5), ozone (O-3), sulfurous acid gas (SO2), nitrogen dioxide (NO2), and carbon monoxide (CO) using the LSTM model; (2) forecasting the CAI using the six predicted pollutants in the first step as predictors of DNNs. The predictive ability of each model for the six pollutants and CAI prediction was evaluated by comparing it with the observed air-quality data. This study showed that combining a DNN model with the network method provided a high predictive power, and this combination could be a remarkable strength in CAI prediction. As the need for disaster management increases, it is anticipated that the LSTM and DNN models with the network method have ample potential to track the dynamics of air pollution behaviors.

키워드

comprehensive air-quality indexdeep learning modelkrigingnetwork methodNEURAL-NETWORKS
제목
Application of Deep Learning Models and Network Method for Comprehensive Air-Quality Index Prediction
저자
Kim, DonghyunHan, HeechanWang, WonjoonKang, YujinLee, HoyongKim, Hung Soo
DOI
10.3390/app12136699
발행일
2022-07
유형
Article
저널명
Applied Sciences-basel
12
13