关于自适应神经模糊系统的几点评述

R. Ortega
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引用次数: 87

摘要

对神经网络和模糊系统的自适应实现作了三点评述。首先,作者提请读者注意这样一个事实,即当可调参数仅为基函数的线性组合权值时,这些系统作为函数逼近器的潜在功率就会丢失。其次,作者表明,这些论文中的稳定性分析使用了神经网络或模糊系统特有的性质,并直接遵循了自适应系统理论中已建立的结果。第二个事实对于熟悉自适应系统理论的人来说是众所周知的,但对于神经模糊社区来说却未必如此。另一方面,第一句话的情况似乎正好相反。最后,作者给出了一个关于非线性参数化非线性系统的自适应镇定的简单结果,该结果可能对自适应神经模糊系统的稳定性分析有用。这一结果虽然在俄罗斯文学界广为人知,但显然在“西方”出版物中被忽视了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Some remarks on adaptive neuro-fuzzy systems
Makes three remarks concerning adaptive implementations of neural networks and fuzzy systems. First, the author brings to the readers attention the fact that the potential power of these systems as function approximators is lost when, as done in recently published work, the adjustable parameters are only the linear combination weights of the basis functions. Second, the author shows that the stability analysis in those papers uses properties particular to neural nets or fuzzy systems, and follows immediately from well established results in adaptive systems theory. The second fact is well known to people familiar with adaptive systems theory, but not necessarily so to the neuro-fuzzy community. On the other hand, the opposite seems to be the case for the first remark. Finally, the author presents a simple version of a result on adaptive stabilization of nonlinearly parametrized nonlinear systems which might be useful for the stability analysis of adaptive neuro-fuzzy systems. This result, though well known in the Russian literature for a long time, has apparently been overlooked in "western" publications.
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