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Wind Speed Forecasting in China: A Review
Science Journal of Energy Engineering
Volume 3, Issue 4-1, July 2015, Pages: 14-21
Received: Jan. 25, 2015; Accepted: Jan. 25, 2015; Published: Feb. 10, 2015
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Authors
Huiru Zhao, School of Economics and Management, North China Electric Power University, Changping District, Beijing, China
Sen Guo, School of Economics and Management, North China Electric Power University, Changping District, Beijing, China
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Abstract
China’s wind power has developed rapidly in the past few years, the large-scale penetration of which will bring big influence on power systems. The wind speed forecasting research is quite important because it can alleviate the negative impacts. This paper reviews the current wind speed forecasting techniques in China. The literature (written in Chinese) sources and classification were firstly analyzed, and then the wind speed forecasting techniques in China were detailed reviewed from four aspects, which are statistical method, soft computing method, hybrid forecasting method and other forecasting methods. This paper can rich the current research in the field of wind speed forecasting.
Keywords
Wind Speed Forecasting, Forecasting Techniques, China
To cite this article
Huiru Zhao, Sen Guo, Wind Speed Forecasting in China: A Review, Science Journal of Energy Engineering. Special Issue: Soft Computing Techniques for Energy Engineering. Vol. 3, No. 4-1, 2015, pp. 14-21. doi: 10.11648/j.sjee.s.2015030401.13
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