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Fuzzy Neural Net Digital Filtering: A MIMO structure

机译:模糊神经网络数字滤波:MIMO结构

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The paper is an analysis of the neural fuzzy filtering with multivariate description and realtime properties in order to give the elements of this kind of filters called RTMNFDF {Real Time Multivariate Neuro-Fuzzy Digital Filtering). This kind of MIMO (multiple inputs and multiple outputs) filter uses an adaptive inference mechanism into its own architecture with a fuzzy neural net structure to get the best answers in accordance to the corresponding parameter matrix values from the knowledge base (KB); actualizing the filter weights to give the answers in natural linguistic sense. The advantage with respect to classical filtering methods, is that dynamically deduce the reference system conditions and take a decision from its knowledge base in accordance with the desired signal at the filter input giving the best answer through the time. The filter structure requires that all of the state sequences bound into RTMNFDF time limits as a real-time system considering the Nyquist and Shannon criterion. The paper describes the characterization of the membership functions into the knowledge base with probabilistic description with respect to the rules set decisions, performing the RTFNDF. In addition, the paper shows schematically the structure of the neural net into the filter description. The results formally integrate the concepts exposed in the paper references. Finally, into the simulation show illustratively the RTMNFDF operations graphics using as a tool the Matlab software. The paper has eight sections conformed as follows: 1. Introduction, 2. Neural fuzzy description, 3. Parameter properties, 4. Filter mechanism, 5. Neural net architecture, 6. Real time descriptions, 7. Results, Conclusions and References.
机译:本文是对具有多元描述和实时属性的神经模糊过滤的分析,目的是给出这种称为RTMNFDF(实时多元神经模糊数字实时过滤)的过滤器的元素。这种MIMO(多输入多输出)滤波器将自适应推理机制用于具有模糊神经网络结构的自身体系结构中,以便根据知识库(KB)中的相应参数矩阵值获得最佳答案。实现滤波器权重,以自然的语言意义给出答案。关于经典滤波方法的优点是,动态推论参考系统条件并根据滤波器输入端的所需信号从其知识库中做出决策,从而在整个过程中给出最佳答案。过滤器结构要求考虑到Nyquist和Shannon准则,将所有状态序列绑定到RTMNFDF时间限制中作为实时系统。本文描述了隶属函数到知识库中的特征,并针对规则集决策(执行RTFNDF)进行了概率描述。此外,本文在过滤器说明中示意性地显示了神经网络的结构。结果正式整合了本文参考文献中公开的概念。最后,在仿真中以Matlab软件为工具说明性地展示了RTMNFDF操作图形。本文分为八个部分,分别为:1.简介,2.神经模糊描述,3.参数属性,4.过滤机制,5.神经网络架构,6.实时描述,7.结果,结论和参考。

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