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A Systematic Methodology to Obtain a Fuzzy Model Using an Adaptive Neuro Fuzzy Inference System. Application for Generating a Model for Gas-Furnace Problem

机译:使用自适应神经模糊推理系统获得模糊模型的系统方法。用于产生气炉问题模型的应用

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In this paper we present a complete design methodology to obtain a fuzzy model withan Adaptive Neuro Fuzzy Inference System (ANFIS). This methodology consists of three phases:In phase I, the automatic selection of input variables and other parameters such as number andtype of membership functions is made with a Genetic Algorithm with a special fitness function,obtaining a basic structure of the fuzzy model. The second phase is a massive training of the fuzzymodel previously obtained. Finally, the third phase is a post-adjusting of the weights of the ruleswith a local search algorithm, based on an adjusted fitness function from the first phase. An appli-cation of the proposed design method for the gas-furnace time series, a well-known benchmarkdataset used by many researchers in the area of neural networks and fuzzy systems is presented,and finally, we present a comparative with other Box-Jenkins models.
机译:在本文中,我们提出了一种完整的设计方法,可以获得具有自适应神经模糊推理系统(ANFIS)的模糊模型。该方法由三个阶段组成:在阶段I中,使用具有特殊健身功能的遗传算法,获得输入变量的自动选择,例如隶属函数的数量和型号,获得模糊模型的基本结构。第二阶段是预先获得的Fuzzymodel的大规模训练。最后,第三阶段是基于来自第一阶段的调整后的适合函数的本地搜索算法的规则权重的调整后调整。提出了燃气炉时间序列的提议设计方法的应用,许多研究人员使用的是神经网络和模糊系统领域的许多研究人员使用的着名的基准,最后,我们与其他箱子詹金斯的比较楷模。

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