Self-organizing CMAC neural networks and adaptive dynamic control

Jianjuen J. Hu, G. Pratt
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引用次数: 32

Abstract

A self-organizing CMAC neural network mechanism and an CMAC based adaptive control scheme are presented. Two main efforts have been made in this study. One is on the self-organizing mechanism of CMAC neural network. The CMAC basis functions with a stair-waveform are introduced. A data clustering technique is used in reducing the memory size significantly and a structural adaptation technique is developed in order to accommodate new data sets. Another effort is on the unsupervised learning scheme, which is based on a Lyapunov index function. Adaptive dynamic control is implemented by means of the self-organizing CMAC neural network, and it can identify the unmodelled dynamics of a plant and ensures asymptotic system stability in a Lyapunov sense. The adaptive control system has been applied in the locomotion control of a bipedal walking robot successfully in simulation.
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自组织CMAC神经网络与自适应动态控制
提出了一种自组织CMAC神经网络机制和一种基于CMAC的自适应控制方案。本研究主要做了两方面的努力。一是CMAC神经网络的自组织机制。介绍了具有阶梯波形的CMAC基函数。采用数据聚类技术显著减小了存储器的大小,并开发了结构自适应技术以适应新的数据集。另一个努力是基于Lyapunov指数函数的无监督学习方案。采用自组织CMAC神经网络实现自适应动态控制,它能够识别被控对象的未建模动态,并保证系统在Lyapunov意义下的渐近稳定。仿真结果表明,该自适应控制系统已成功应用于双足步行机器人的运动控制。
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