Complexity Control of Neural Models for Load Forecasting

Author(s):  
V.H. Ferreira ◽  
A.P. Alves da Silva
Author(s):  
Huang-Chi Chen ◽  
Yi-Ching Lin ◽  
Yu-Ju Chen ◽  
Chuo-Yean Chang ◽  
Huang-Chu Huang ◽  
...  

Author(s):  
Vitor Hugo Ferreira ◽  
Alexandre Pinto Alves da Silva

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 automatic input selection and model complexity control has been proposed recently for short-term load forecasting. However, these techniques require the specification of an initial input set that will be processed by the model in order to select the most relevant variables. This paper explores chaos theory as a tool from non-linear time series analysis to automatic select the lags of the load series data that will be used by the neural models. In this paper, Bayesian inference applied to multi-layered perceptrons and relevance vector machines are used in the development of autonomous neural models.


2005 ◽  
Vol 3 (1) ◽  
pp. 19-26
Author(s):  
Vitor Hugo Ferreira ◽  
Alexandre P. Alves da Silva

2016 ◽  
Vol 136 (6) ◽  
pp. 775-783
Author(s):  
Naoto Ishibashi ◽  
Akihiro Kabasawa ◽  
Tatsuya Iizaka ◽  
Tohru Katsuno

Author(s):  
Martina Caliano ◽  
Amedeo Buonanno ◽  
Giorgio Graditi ◽  
Antonino Pontecorvo ◽  
Gianluca Sforza ◽  
...  
Keyword(s):  

Author(s):  
Gabriel Ribeiro ◽  
Marcos Yamasaki ◽  
Helon Vicente Hultmann Ayala ◽  
Leandro Coelho ◽  
Viviana Mariani

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