回顾KM算法:一种线性规划方法

T. Kumbasar
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引用次数: 4

摘要

对于二类模糊集和系统,计算质心和进行类型约简(TR)是必须考虑的操作。卡尔尼克-孟德尔算法(KMAs)通常被用来执行这些操作。在KMAs中,这些操作被定义为非线性优化问题,通过寻找最优开关点(SPs)来迭代求解。在本研究中,我们将这些操作转化为线性分数规划(LFP)问题,并借助成熟的线性规划(LP)理论来解决它们。本文将证明在kma的SPs和LFP问题的解向量之间存在直接关系。因此,将在LFP理论的框架中揭示SPs的意义,并将KMA与LFP方法联系起来。然后,我们将提出两种新的基于LP的TR方法,它们只使用和使用基本的内置LP函数。因此,这些基于LP的TR方法对于使用不同编程语言的2型模糊集和系统非常有帮助。此外,考虑到LFP与kma的连接,提出了一种计算效率高的基于LP的TR方法。将证明这种基于LP的TR方法可以被视为KMA的一种变化(反之亦然)。仿真结果表明,与KMA和增强KMA相比,基于LP的TR方法具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revisiting KM algorithms: A Linear Programming approach
Computing the centroid and performing Type Reduction (TR) for type-2 fuzzy sets and systems are operations that must be taken into consideration. Karnik-Mendel Algorithms (KMAs) have been usually employed to perform these operations. In KMAs, these operations are defined as nonlinear optimization problems which are solved iteratively by finding the optimal Switching Points (SPs). In this study, we will transform these operations into Linear Fractional Programming (LFP) problems and solve them with the aids of the well-developed Linear Programming (LP) theory. It will be shown that there exists a direct relationship between the SPs of the KMAs and the solution vectors of the defined LFP problems. Thus, the meaning of the SPs will be revealed in the framework of LFP theory and the KMA will be connected a LFP method. We will then present two novel LP based TR methods which only use and employ basic built-in LP functions. Thus, these LP based TR methods will be very helpful in employing type-2 fuzzy sets and systems in different programming languages. Moreover, by taking account the connection of LFP to KMAs, a computationally efficient LP based TR method will be proposed. It will be proven that this LP based TR method can be seen as a kind of variation of the KMA (or vice versa). Simulation results have been presented to show the superiority of the LP based TR method in comparison to the KMA and Enhanced KMA.
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