Artificial Neural Network Models for Daily PM10 Air Pollution Index ...
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Artificial Neural Network Models for Daily PM10 Air Pollution Index ...
Dust storm is a critical remote source that causes low air quality in many cities ... high particulate matter with a diameter
ENVIRONMENTAL ENGINEERING SCIENCE Volume 28, Number 5, 2011 ª Mary Ann Liebert, Inc. DOI: 10.1089/ees.2010.0219
Artificial Neural Network Models for Daily PM10 Air Pollution Index Prediction in the Urban Area of Wuhan, China Shengjun Wu, Qi Feng,* Yun Du, and Xiaodong Li Institute of Geodesy and Geophysics, Chinese Academy of Sciences, Wuhan, China. Received: July 14, 2010
Accepted in revised form: November 29, 2010
Abstract
Dust storm is a critical remote source that causes low air quality in many cities in China. The prediction accuracy of high particulate matter with a diameter