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Study on Centroid Type-Reduction of Interval Type-2 Fuzzy Logic Systems Based on Noniterative Algorithms

机译:基于非特性算法的质心型减小型号 - 2模糊逻辑系统的研究

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Interval type-2 fuzzy logic systems have favorable abilities to cope with uncertainties in many applications. While the block type-reduction under the guidance of inference plays the central role in the systems, Karnik-Mendel (KM) iterative algorithms are standard algorithms to perform the type-reduction; however, the high computational cost of type-reduction process may hinder them from real applications. The comparison between the KM algorithms and other alternative algorithms is still an open problem. This paper introduces the related theory of interval type-2 fuzzy sets and discusses the blocks of fuzzy reasoning, type-reduction, and defuzzification of interval type-2 fuzzy logic systems by combining the Nagar-Bardini (NB) and Nie-Tan (NT) noniterative algorithms for solving the centroids of output interval type-2 fuzzy sets. Moreover, the continuous version of NT (CNT) algorithms is proved to be accurate algorithms for performing the type-reduction. Four computer simulation examples are provided to illustrate and analyze the performances of two kinds of noniterative algorithms. The NB and NT algorithms are superior to the KM algorithms on both calculation accuracy and time, which afford the potential application value for designer and adopters of type-2 fuzzy logic systems.
机译:间隔Type-2模糊逻辑系统具有应对许多应用中的不确定性的有利能力。虽然在推理的引导下的块类型减少播放在系统中的核心作用中,Karnik-Mendel(KM)迭代算法是执行类型减少的标准算法;然而,减少过程的高计算成本可能会阻碍它们来自真实应用程序。 KM算法与其他替代算法之间的比较仍然是一个打开问题。本文介绍了间隔类型-2模糊集的相关理论,并讨论了通过组合Nagar-Bardini(NB)和Nie-Tan(NT)来讨论间隔类型-2模糊逻辑系统的模糊推理,减少和Defuzzzeze的块用于求解输出间隔类型-2模糊集的质心的非特性算法。此外,证明了NT(CNT)算法的连续版本是用于执行类型的准确算法。提供四个计算机仿真示例以说明和分析两种非特征算法的性能。 Nb和NT算法优于基于计算精度和时间的KM算法,这为2型模糊逻辑系统的设计者和采用者提供了潜在的应用价值。

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    《Complexity》 |2019年第1期|共12页
  • 作者

    Yang Chen;

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