Combining forward with recurrent neural networks for hourly air quality prediction in Northwest of China

Volume: 27, Issue: 23, Pages: 28931 - 28948
Published: May 17, 2020
Abstract
Data-driven statistical air quality prediction methods usually build models fast with moderate accuracy and have been studied a lot in recent years. However, due to the complexity of air quality prediction which usually involves multiple factors, such as meteorological, spatial, and temporal properties, it is still a challenge to propose a model with required accuracy. In this paper, we propose a hybrid ensemble model CERL to exploit the merits...
Paper Details
Title
Combining forward with recurrent neural networks for hourly air quality prediction in Northwest of China
Published Date
May 17, 2020
Volume
27
Issue
23
Pages
28931 - 28948
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