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The Most General Intelligent Architectures of the Hybrid Neuro-Fuzzy Models

机译:混合神经模糊模型的最通用智能架构

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Hybrid systems of the fuzzy logic and neural networks, are widely spread in real world problems with high effectiveness and versatility for different kinds of applications. The state description of unknown plant by using mathematical models, sometimes, is difficult to obtain. The fuzzy logic systems with their ability of tackling imprecise knowledges, and neural networks with their advantages of establishing a relationship between the inputs and the outputs of the system, are represented as qualified tools for systems of unknown plant. Furthermore, the hybrid systems which utilize the features of the fuzzy logic and Neural networks has been employed for better characteristics. Whilst, there are several different architectures of the neuro-fuzzy system proposed in literature, this article come out to highlight the common known architectures of how these techniques fuse together to build an enhanced system that can complement the lack of each method individually and improve the system performance over all.
机译:模糊逻辑和神经网络的混合系统广泛应用于现实世界中,具有针对各种应用的高效性和多功能性。有时很难通过数学模型获得未知植物的状态描述。具有处理不精确知识的能力的模糊逻辑系统和具有在系统的输入和输出之间建立关系的优点的神经网络被表示为未知工厂系统的合格工具。此外,已经利用了利用模糊逻辑和神经网络的特征的混合系统以获得更好的特性。虽然文献中提出了神经模糊系统的几种不同体系结构,但本文的重点是介绍了这些技术如何融合在一起以构建增强的系统的常见已知体系结构,该体系可以弥补每种方法的不足并改进整个系统的性能。

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