基于模拟退火的先进bp神经网络混沌时间序列预测

Jui-Yu Wu
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引用次数: 9

摘要

反向传播神经网络(BPNN)的优化问题可以分为最优网络拓扑(包括隐藏层中神经元的数量、学习率和动量项)和权重。本研究的重点是权重的优化。传统的BPNN采用最陡下降法,即局部优化技术,通过最小化能量函数(代价函数)来找到BPNN的权值。因此,传统的bp神经网络无法获得全局权重。高级模拟退火算法是一种用于求解具有边界条件的多维目标函数的随机全局方法。为了克服与标准BPNN相关的缺点,本研究尝试使用ASA算法优化BPNN的权重。采用基准混沌时间序列问题(即Mackey-Glass时间序列问题)对所提出的基于ASA-BPNN(命名为ASA-BPNN)的性能进行了评估。此外,将ASA-BPNN与标准BPNN的实验结果进行了比较,结果表明,对于测试用例,ASA-BPNN的训练精度和泛化精度都优于标准BPNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced simulated annealing-based BPNN for forecasting chaotic time series
Optimization problems of a back-propagation neural network (BPNN) can be categorized into optimal network topology (including the number of neurons in a hidden layer, learning rate and the momentum term) and weights. This study focuses on the optimization of weights. The conventional BPNN uses the steepest descent method, i.e. a local optimization technique, to minimize an energy function (cost function) to find the BPNN weights. Therefore, a conventional BPNN cannot obtain global weights. An advanced simulated annealing (ASA) algorithm is a stochastic global method applied for solving a multi-dimensional objective function with boundary conditions. To overcome the drawback associated with the standard BPNN, this study attempts to optimize the weights of the BPNN using an ASA algorithm. Performance of the proposed ASA-based BPNN (named ASA-BPNN) is evaluated using a benchmark chaotic time series problem, i.e. the Mackey-Glass time series problem. Furthermore, the comparing experimental results for the ASA-BPNN with those of a standard BPNN reveals that training and generalization accuracies of the ASA-BPNN are superior to those of the standard BPNN for the test case.
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