DocumentCode :
928994
Title :
Toward Estimating Autonomous Neural Network-Based Electric Load Forecasters
Author :
Ferreira, Vitor Hugo ; Da Silva, Alexandre P Alves
Author_Institution :
Power Syst. Lab., Rio de Janeiro
Volume :
22
Issue :
4
fYear :
2007
Firstpage :
1554
Lastpage :
1562
Abstract :
Anticipation of load´s future behavior is very important for decision making in power system operation and planning. During the last 40 years, many different load models have been proposed for short-term forecasting. After 1991, the literature on this subject has been dominated by neural network (NN) based proposals. This is mainly due to the NNs´ capacity for capturing the nonlinear relationship between load and exogenous variables. However, one major risk in using neural models is the possibility of excessive training data approximation, i.e., overfitting, which usually increases the out-of-sample forecasting errors. The extent of nonlinearity provided by NN-based load forecasters, which depends on the input space representation, has been adjusted using heuristic procedures. Training early stopping based on cross validation, network pruning methods, and architecture selection based on trial and error are popular. The empirical nature of these procedures makes their application cumbersome and time consuming. This paper develops two nonparametric procedures for solving, in a coupled way, the problems of NN structure and input selection for short-term load forecasting.
Keywords :
decision making; load forecasting; neural nets; power engineering computing; power system planning; autonomous neural network; decision making; electric load forecasters; power system operation; power system planning; training data approximation; Artificial neural networks; Load forecasting; Load modeling; Neural networks; Power system modeling; Power system planning; Power system security; Predictive models; Proposals; Support vector machines; Bayes procedures; feedforward neural networks (NNs); input selection; load forecasting; model complexity; support vector machines (SVM);
fLanguage :
English
Journal_Title :
Power Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
0885-8950
Type :
jour
DOI :
10.1109/TPWRS.2007.908438
Filename :
4349077
Link To Document :
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