基于直连RBF网络的快速高效的顺序学习算法

V. Asirvadam, S. McLoone, G. Irwin
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引用次数: 10

摘要

针对直连径向基函数(DRBF)网络,提出了一种新的快速高效的序列学习算法。动态DRBF网络的训练采用了最近提出的分解/并行递归Levenberg Marquardt (PRLM)算法,忽略了神经元间权的相互作用。由此产生的顺序学习方法能够以有效的并行方式更新权重,并为实时应用程序提供最小的更新扩展。两个基准问题的仿真结果表明了新训练算法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and efficient sequential learning algorithms using direct-link RBF networks
Novel fast and efficient sequential learning algorithms are proposed for direct-link radial basis function (DRBF) networks. The dynamic DRBF network is trained using the recently proposed decomposed/parallel recursive Levenberg Marquardt (PRLM) algorithm by neglecting the interneuron weight interactions. The resulting sequential learning approach enables weights to be updated in an efficient parallel manner and facilitates a minimal update extension for real-time applications. Simulation results for two benchmark problems show the feasibility of the new training algorithms.
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