DocumentCode :
3720011
Title :
A comprehensive evaluation of air pollution prediction improvement by a machine learning method
Author :
Xia Xi;Zhao Wei;Rui Xiaoguang;Wang Yijie;Bai Xinxin;Yin Wenjun;Don Jin
Author_Institution :
IBM CRL, Beijing, China
fYear :
2015
Firstpage :
176
Lastpage :
181
Abstract :
Urban air pollution prediction is one of the most important tasks in the treatment of urban air pollution. Due to the disadvantage that source list updated not in time for WRF-Chem which is a numeric model, the prediction result may be not good enough. In this paper, we take full advantages of forecast on pollution, weather, chemical component from WRF-Chem model as input features, design a comprehensive evaluation framework to improve the prediction performance. Experiments are implemented with different features groups and classification algorithms in machine learning method for 74 cities in China, to find the best model for each city. From experiments, for different city, the best result can be obtained by different group of feature selection and model selection. Experimental results indicate that the more feature we used, the more possibility to enhance the accuracy. For method aspect, the result from combined model is better than the unique model.
Keywords :
"Atmospheric modeling","Predictive models","Air pollution","Cities and towns","Weather forecasting","Numerical models"
Publisher :
ieee
Conference_Titel :
Service Operations And Logistics, And Informatics (SOLI), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/SOLI.2015.7367615
Filename :
7367615
Link To Document :
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