Adaptive architecture of polynomial artificial neural network to forecast nonlinear time series

E. Gómez-Ramírez, A. Poznyak, A. Gonzalez-Yunes, M. Avila-Alvarez
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引用次数: 18

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.
非线性时间序列预测的多项式人工神经网络自适应结构
将人工神经网络应用于动态系统辨识有两种重要的方法:对训练值进行预处理和对网络结构进行自适应。本文描述了多项式人工神经网络(PANN)结构的自适应过程,利用遗传算法(GA)来改进学习过程。在不知道待识别系统的行为的情况下获得最优结构。由于泛神经网络的结构性质,它可以提取非线性时间序列的必要信息,以最小化训练误差。这项工作的重要性在于调整PANN的体系结构,同时处理必要的输入以最小化这种误差。将训练误差与其他用于混沌时间序列预测的网络进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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