Articles | Volume 19, issue 20
https://doi.org/10.5194/acp-19-12935-2019
https://doi.org/10.5194/acp-19-12935-2019
Research article
 | 
18 Oct 2019
Research article |  | 18 Oct 2019

Development of a daily PM10 and PM2.5 prediction system using a deep long short-term memory neural network model

Hyun S. Kim, Inyoung Park, Chul H. Song, Kyunghwa Lee, Jae W. Yun, Hong K. Kim, Moongu Jeon, Jiwon Lee, and Kyung M. Han

Viewed

Total article views: 3,142 (including HTML, PDF, and XML)
HTML PDF XML Total Supplement BibTeX EndNote
1,881 1,190 71 3,142 340 67 61
  • HTML: 1,881
  • PDF: 1,190
  • XML: 71
  • Total: 3,142
  • Supplement: 340
  • BibTeX: 67
  • EndNote: 61
Views and downloads (calculated since 29 Mar 2019)
Cumulative views and downloads (calculated since 29 Mar 2019)

Viewed (geographical distribution)

Total article views: 3,142 (including HTML, PDF, and XML) Thereof 2,875 with geography defined and 267 with unknown origin.
Country # Views %
  • 1
1
 
 
 
 

Cited

Latest update: 25 Apr 2024
Download
Short summary
In this study, a deep recurrent neural network system based on a long short-term memory (LSTM) model was developed for daily PM10 and PM2.5 predictions in South Korea. In general, the accuracies of the LSTM-based predictions were superior to the 3-D CTM-based predictions. Based on this, we concluded that the LSTM-based system could be applied to daily operational PM forecasts in South Korea. We expect that similar AI systems can be applied to the predictions of other atmospheric pollutants.
Altmetrics
Final-revised paper
Preprint