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A Balanced Learning CMAC Neural Networks Model and Its Application to Identification

机译:平衡学习CMAC神经网络模型及其在识别中的应用

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In this paper, a concept of balanced learning is presented, and an improved neural networks learning scheme is proposed to speed up the learning process in cerebellar model articulation controllers (CMAC). In the conventional CMAC learning scheme, the corrected amounts of errors are equally distributed into all addressed hypercubes, regardless of the credibility of those hypercubes. The proposed improved learning approach is to use the inversion of the kth power of learned times of addressed hypercubes as the credibility, the learning speed is different at different k. For every situation it can be found a optimal learning parameter k . To demonstrate the online learning capability of the proposed balanced learning CMAC scheme, two nonlinear system identification example are given.
机译:本文提出了一种平衡学习的概念,并提出了一种改进的神经网络学习方案,以加快小脑模型关节控制器(CMAC)的学习过程。在传统的CMAC学习方案中,校正后的错误量平均分配到所有寻址的超级立方体中,而不管这些超级立方体的可信度如何。所提出的改进的学习方法是将寻址超立方体的学习时间的k次方倒置作为可信度,在不同的k处学习速度不同。对于每种情况,都可以找到最佳学习参数k。为了证明所提出的平衡学习CMAC方案的在线学习能力,给出了两个非线性系统辨识的例子。

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