Changhao Xia

Work place: College of Electrical Engineering & New Energy of China Three Gorges University, Yichang, China

E-mail: xchwq@ctgu.edu.cn

Website:

Research Interests: Computational Science and Engineering, Computational Engineering, Artificial Intelligence, Neural Networks, Data Structures and Algorithms

Biography

Changhao Xia is curently a full professor in China Three Gorges University.He received the B.S. degree in electronic technology from Changchun University of Science and Technology in 1987 and M.S. degree in electric power systems and automation from Wuhan University in 2000. He was a visiting scholar of Queen's University Belfast, UK, from July 2007 to December 2007. He is a peer reviewer for International Journal of Electrical Power and Energy Systems and some international conferences.

His research is focused on the electric power market and power marketing, analysis and operation of power systems, information technology and artificial intelligence in electrical engineering, theory and application of neural network. In recent years, he published over 70 papers, in which more than 10 papers were indexed by SCI, EI, ISTP(Electrical Power and Energy Systems,Journal of Computational Information Systems,Proceedings of  Power Engineering and Automation Conference ), hosted and participated 8 projects in science research or teaching research.

Author Articles
A Loose Wavelet Nonlinear Regression Neural Network Load Forecasting Model and Error Analysis Based on SPSS

By Mi Zhang Changhao Xia

DOI: https://doi.org/10.5815/ijitcs.2017.04.04, Pub. Date: 8 Apr. 2017

A power system load forecasting method using wavelet neural network with a process of decomposition-forecasting-reconstruction and error analysis based on SPSS is presented in this paper. First of all, the load sequence is decomposed by wavelet transform into each scale wavelet coefficients of navigation. In this step, choosing an appropriate wavelet function decomposition of load is needed. In this paper, by comparing the signal-to-noise ratio (SNR) and the mean square error (MSE) of the different wavelet functions for load after processing; It is concluded that the most suitable wavelet function for the load sequence in this paper is db4 wavelet function. The scale of wavelet coefficients is obtained by load wavelet decomposition. In the process of wavelet coefficient of processing, the db4 wavelet function is used to decompose the original sequence in 3 scales; High frequency and low frequency wavelet coefficient is got through setting threshold. Secondly, these wavelet coefficients are used as the training sample of the input to the nonlinear regression neural network for processing, and then the forecasting result is obtained by the wavelet reconstruction. Finally, the actual and forecasting values are compared by SPSS with a comprehensive statistical charting capability, which is able to draw beautiful charts and is easy to edit.

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