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A simplified linguistic information feedback-based dynamical fuzzy system (S-LIFDFS) - Part I. Theory

机译:简化的基于语言信息反馈的动态模糊系统(S-LIFDFS)-第一部分。理论

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For pt.2 see ibid., p.51-6 (2005). This work consists of two parts: theory and evaluation. In Part I, inspired by the linguistic information feedback-based dynamical fuzzy system (LIFDFS) recently proposed by the authors, we present a simplified LIFDFS (S-LIFDFS) model, which has a simpler linguistic information feedback structure. Compared with the LIFDFS, the S-LIFDFS can offer us with the considerably reduced computational complexity. We first give a detailed description of its underlying principle. Based on the gradient descent method, an adaptive learning algorithm for the feedback parameters is next derived. Part II of this work discusses applying this S-LIFDFS in time series prediction. Three evaluation examples including prediction of two artificial time sequences and the well-known Box-Jenkins gas furnace data are demonstrated here. Simulation results illustrate that with a compact structure, our S-LIFDFS can still retain the advantage of inherent dynamics of linguistic information feedback, and is, therefore, well suited for handling temporal problems like prediction, modeling, and control.
机译:对于pt.2见同上。,p.51-6(2005)。这项工作包括两个部分:理论和评估。在第一部分中,由作者最近提出的基于语言信息反馈的动态模糊系统(LIFDFS)的启发,我们提出了一种简化的LIVDFS(S-LIVDFS)模型,其具有更简单的语言信息反馈结构。与LIFDF相比,S-LIVDF可以为我们提供显着降低的计算复杂性。我们首先详细描述其潜在原则。基于梯度下降方法,下次派生反馈参数的自适应学习算法。本工作的第二部分讨论将该S-LIVDFS应用于时间序列预测。这里证明了包括两个人工时间序列的预测和众所周知的箱子 - 詹金斯气炉数据的三个评价例。仿真结果表明,具有紧凑的结构,我们的LIVDFS仍可保留语言信息反馈的内在动态的优势,因此非常适合处理预测,建模和控制等时间问题。

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