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Learning performance of a neurocomputer for nonlinear dynamical system identification

机译:用于非线性动力学系统辨识的神经计算机的学习性能

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This paper investigates the learning performance of a RICOH neurocomputer RN-2000 for the identification problem of input and output map of a discrete nonlinear dynamical system. The results obtained show capability of on-chip learning, which is essential for many neural applications such as machine learning and control where realtime adaptation is required, In this paper, the method to use a neurocomputer is briefly presented for a nonlinear identification problem. The main significance of this research is to obtain a further guideline for designing a primitive artificial blain for robotics. (C) 2001 Elsevier Science Inc. All rights reserved. [References: 17]
机译:本文研究了RICOH神经计算机RN-2000在离散非线性动力系统的输入和输出图的识别问题上的学习性能。获得的结果表明了片上学习的能力,这对于许多神经应用(如需要实时自适应的机器学习和控制)必不可少。在本文中,简要介绍了使用神经计算机的方法来解决非线性识别问题。这项研究的主要意义是获得进一步的指导方针,以设计用于机器人技术的原始人工blain。 (C)2001 Elsevier Science Inc.保留所有权利。 [参考:17]

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