Title :
SCG and LM Improved BP Neural Network Load Forecasting and Programming Network Parameter Settings and Data Preprocessing
Author :
Xia, Changhao ; Yang, Zhonghua ; Lei, Bangjun ; Zhou, Qiufeng
Author_Institution :
Inst. of Intell. Vision & Image Inf., China Three Gorges Univ., Yichang, China
Abstract :
Data pre-processing in modeling of neural network (NN) is relatively more complicated and usually manual. Trial and error method is commonly used to determine the number of hidden layer neurons, which is easily affected by human factors and is opportunistic. Relevant training parameters using default value commonly result in lower model accuracy. In this paper, a NN load forecasting model with higher accuracy was established using the actual historical load, meteorological data in Yichang, by means of the Scaled Conjugate Gradient (SCG) and Levenberg-Marquardt (LM) improved BP algorithm which is more suitable for modeling of large or moderate size network with fast convergence. The procedures for data pre-processing and program determining the optimal number of hidden layer neurons to reduce man-made interference or contingency are presented. In order to improve generalization ability, an early termination method is used in network training. This paper proposes it is necessary to reset mu factor and the relevant learning parameters in LM training. Illustrations inform that the initial mu should be relatively larger and mu increase factor and mu decrease factor should be close to 1. The result shows that the NN intelligent forecasting model is valid and feasible.
Keywords :
backpropagation; conjugate gradient methods; data handling; generalisation (artificial intelligence); human factors; load forecasting; network theory (graphs); neural nets; power engineering computing; LM improved BP neural network; Levenberg-Marquardt improved BP algorithm; NN intelligent forecasting model; NN load forecasting model; SCG improved BP neural network; Scaled Conjugate Gradient improved BP algorithm; Yichang; data preprocessing; early termination method; hidden layer neurons; human factors; large size network; man-made interference; meteorological data; model accuracy; moderate size network; mu factor; neural network modeling; programming network parameter settings; trial and error method; Artificial neural networks; Load forecasting; Load modeling; Mathematical model; Neurons; Predictive models; Training; BP algorithm; MATLAB; load forecasting; network parameters; neural network; power system;
Conference_Titel :
Computer Science & Service System (CSSS), 2012 International Conference on
Conference_Location :
Nanjing
Print_ISBN :
978-1-4673-0721-5
DOI :
10.1109/CSSS.2012.18