Temporal associative memory and function approximation with the self-organizing map

G. Barreto, A. Araujo
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引用次数: 6

Abstract

We propose an unsupervised neural modelling technique, called vector-quantized temporal associative memory (VQTAM), which enables Kohonen's self-organizing map (SOM) to approximate nonlinear dynamical mappings globally. A theoretical analysis of the VQTAM scheme demonstrates that the approximation error decreases as the SOM training proceeds. The SOM is compared with standard MLP and RBF networks in the forward and inverse identification of a hydraulic actuator. The simulation results produced by the SOM are as accurate as those produced by the MLP network, and better than those produced by the RBF network; both the MLP and the RBF being supervised algorithms. The SOM is also less sensitive to weight initialization than MLP networks. The paper is concluded with a brief discussion on the main properties of the VQTAM approach.
时间联想记忆与自组织映射的功能逼近
我们提出了一种无监督神经建模技术,称为矢量量化时间联想记忆(VQTAM),它使Kohonen的自组织映射(SOM)能够全局近似非线性动态映射。对VQTAM方案的理论分析表明,随着SOM训练的进行,逼近误差减小。将该网络与标准MLP网络和RBF网络进行了正逆辨识的比较。SOM的仿真结果与MLP网络的精度相当,优于RBF网络的仿真结果;MLP和RBF都是有监督的算法。与MLP网络相比,SOM对权值初始化也不那么敏感。本文最后简要讨论了VQTAM方法的主要特性。
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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