基于概率通用学习网络的非线性动态系统辨识

K. Hirasawa, Jinglu Hu, J. Murata, C. Jin, Kazuaki Yotsumoto, H. Katagiri
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引用次数: 1

摘要

提出了一种利用概率通用学习网络(PrULNs)识别非线性噪声动态系统的方法。pruln是通用学习网络(uln)的扩展。uln是神经网络的一个超集,为非线性大型复杂系统的建模和控制提供了一个通用框架。但是ULN不提供通过它传播的信号的任何随机特性。pruln配备了计算信号随机特性和训练网络参数的机制,使信号具有预先指定的随机特性。另一方面,人们普遍认为用神经网络识别含噪声的非线性动态系统存在过拟合问题。本文通过非线性机器人动力学辨识的仿真结果表明,PrULNs对于避免过拟合是有效的。
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Identification of nonlinear dynamic systems by using probabilistic universal learning networks
A method for identifying nonlinear dynamic systems with noise is proposed by using probabilistic universal learning networks (PrULNs). PrULNs are extensions of universal learning networks (ULNs). ULNs form a superset of neural networks and were proposed to provide a universal framework for modeling and control of nonlinear large-scale complex systems. But the ULN does not provide any stochastic characteristics of the signals propagating through it. The PrULNs are equipped with machinery to calculate stochastic properties of signals and to train network parameters so that the signals behave with the pre-specified stochastic properties. On the other hand it is generally recognized that there exists an overfitting problem when identification of nonlinear dynamic systems with noise is done by neural networks. In this paper, it is shown from simulation results of identification of a nonlinear robot dynamics that PrULNs are useful for avoiding the overfitting.
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