Articles | Volume 13, issue 3
https://doi.org/10.5194/gmd-13-1499-2020
https://doi.org/10.5194/gmd-13-1499-2020
Model evaluation paper
 | 
25 Mar 2020
Model evaluation paper |  | 25 Mar 2020

PM2.5 ∕ PM10 ratio prediction based on a long short-term memory neural network in Wuhan, China

Xueling Wu, Ying Wang, Siyuan He, and Zhongfang Wu

Viewed

Total article views: 2,674 (including HTML, PDF, and XML)
HTML PDF XML Total BibTeX EndNote
1,551 1,073 50 2,674 48 48
  • HTML: 1,551
  • PDF: 1,073
  • XML: 50
  • Total: 2,674
  • BibTeX: 48
  • EndNote: 48
Views and downloads (calculated since 05 Aug 2019)
Cumulative views and downloads (calculated since 05 Aug 2019)

Viewed (geographical distribution)

Total article views: 2,674 (including HTML, PDF, and XML) Thereof 2,329 with geography defined and 345 with unknown origin.
Country # Views %
  • 1
1
 
 
 
 

Cited

Latest update: 22 Apr 2024
Download
Short summary
This paper presents a composite prediction system designed to improve the accuracy and applicability of PM2.5 / PM10 predictions. Based on remote sensing images, the aerosol optical thickness was obtained and corrected. Then, we selected PM2.5 / PM10-related factors from meteorological factors and air pollutants and compared the effects of several intelligent models in different prediction patterns. The results showed that the LSTM model had significant advantages in accuracy and stability.