基于网格计算的神经模糊混合智能系统

L. Ahmed, S.A.A. Shah
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引用次数: 0

摘要

混合智能系统本质上通常是复杂的。混合智能系统的一种是神经模糊混合智能系统。神经模糊系统是透明的系统,也具有学习能力。Takagi Sugeno N-F系统,一种特定类型的N-F系统比其他N-F系统性能更好,但它需要更多的计算时间。此外,N-F系统还继承了神经网络的并行处理特性。在这个程度上,这似乎与网格计算领域有很多共同之处,网格计算本身旨在支持本质上并行且需要高计算能力的应用程序。在本文中,我们通过提出一种使用网格计算开发N-F系统的方法,研究了这些领域之间的相似性以及网格计算为解决N-F系统的计算问题所提供的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuro-Fuzzy Hybrid Intelligent System Using Grid Computing
Hybrid intelligent systems are generally complex in nature. One of the hybrid intelligent systems is neuro- fuzzy hybrid intelligent system. The neuro-fuzzy systems are transparent systems which are capable of learning as well. Takagi Sugeno N-F system, a specific type of N-F system is a better performer than other N-F systems, but it needs more computational time. Besides that N-F system retains the property of parallel processing that it inherits from neural networks. To that extent, there appears to be much in common with the field of grid computing which itself aims to support applications that are parallel in nature and need high computational power. In this paper we examine the similarities between these fields and the potential offered by grid computing to solve computational problems of N-F systems by proposing a method for developing N-F systems using grid computing.
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