Title :
Adaptive architecture of polynomial artificial neural network to forecast nonlinear time series
Author :
Gómez-Ramírez, E. ; Poznyak, Alexander ; González-Yunes, A. ; Avila-Alvarez, M.
Author_Institution :
Lab. de Investigacion y Desarrollo de Tecnologia Avanzada, Lidetea Univ., La Salle, Mexico
Abstract :
There are two important ways in which artificial neural networks are applied for dynamic system identification: preprocessing the training values, and adapting the architecture of the network. The article describes an adaptive process of the architecture of Polynomial Artificial Neural Network (PANN) using a genetic algorithm (GA) to improve the learning process. The optimal structure is obtained without previous knowledge of the behavior of the system to be identified. Due to the nature of the structure of PANN, it is possible to extract the necessary information of the nonlinear time series in order to minimize the training error. The importance of this work lies on adapting the architecture of PANN and processing the necessary inputs to minimize this error at the same time. The training error is compared with other networks used in the field to forecast chaotic time series
Keywords :
chaos; genetic algorithms; identification; learning (artificial intelligence); neural net architecture; neural nets; nonlinear systems; time series; PANN; adaptive architecture; adaptive process; chaotic time series; dynamic system identification; genetic algorithm; learning process; nonlinear time series forecasting; optimal structure; polynomial artificial neural network; preprocessing; training error; training values; Artificial neural networks; Automatic control; Biological system modeling; Chaos; Control systems; Data mining; Electronic mail; Genetic algorithms; Laboratories; Polynomials;
Conference_Titel :
Evolutionary Computation, 1999. CEC 99. Proceedings of the 1999 Congress on
Conference_Location :
Washington, DC
Print_ISBN :
0-7803-5536-9
DOI :
10.1109/CEC.1999.781942