基于鲁棒不动点变换的敏捷在线训练神经网络模型

T. A. Várkonyi, V. Piuri, J. Tar, A. Várkonyi-Kóczy, I. Rudas
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引用次数: 2

摘要

如今,在信息处理领域,神经网络(nn)被广泛使用,因为它可以自适应地学习如何以期望的方式行为。在自适应控制领域,当被控系统事先未知时,神经网络是最有利的,因为可以用神经网络对系统建模来预测其行为。在这种情况下,神经网络的估计有多准确是非常重要的,因为如果近似值太粗糙,那么需要额外的计算来获得更好的结果。改进神经网络模型的一种可能性是在控制过程中进行在线学习,但这种方法需要大量的计算时间。另一种可能性是鲁棒不动点变换(RFPT)的应用,虽然它只能保证局部稳定性,但RFPT的发展是为了减少建模误差引起的不准确性,并且它不需要很高的计算时间。本文提出了在线训练神经网络和RFPT两种方法的新组合,以减少在线自适应带来的计算负担,并使结果接近最优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agile online-trained neural network models by using Robust Fixed Point Transformations
Nowadays, in the field of information processing, neural networks (NNs) are very used, because they can learn adaptively how to behave in a desired way. In the field of adaptive control, NNs are the most beneficial when the system to be controlled is not known in advance, because the system can be modeled by NNs to predict its behavior. In this case, it is very important how accurate the estimation of the NN is, since if the approximation is too rough then extra calculations are needed to get better results. One of the possibilities for improving the NN model is on-line learning during the control process, but this option requires high computational time. Another possibility is the application of Robust Fixed Point Transformations (RFPT), since though, it can only guarantee local stability, RFPT has been developed to reduce the inaccuracy caused by modeling errors and it does not need high computational time. In this paper, a new combination of the two methods the on-line trained neural networks and RFPT is proposed to decrease the computational burden caused by the on-line adaptation and keep the results close to optimum.
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