2011
DOI: 10.1590/s0103-17592011000600004
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Chaos theory applied to input space representation of autonomous neural network-based short-term load forecasting models

Abstract: After 1991, the literature on load forecasting has been dominated by neural network based proposals. However, one major risk in using neural models is the possibility of excessive training, i.e., data overfitting. The extent of nonlinearity provided by neural network based load forecasters, which depends on the input space representation, has been adjusted using heuristic procedures. The empirical nature of these procedures makes their application cumbersome and time consuming. Autonomous modeling including au… Show more

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Cited by 3 publications
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References 16 publications
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