基于模糊数值模拟的全模糊线性方程组启发式方法

Hande Günay Akdemir
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摘要

本文提出了一种寻找全模糊线性方程组近似解的新方法。该技术将二分法与模糊数值模拟 (FNS) 相结合。该方法首先生成单个模糊参数值,然后反复求解所得到的简明问题,以确定解的下限和上限。计算平均下限值和上限值后,得到的上限值和下限值分别被视为解的下限和上限。考虑到误差函数与等式左右两边相应的下界和上界的绝对差值之和有关,可以尝试改进解法。当求解得到的区间非常大时,就会采用分段算法来减小误差值。该方法旨在通过消除变量和/或系数的非负性限制,求解任意模糊数(FN)的大维度平方系统,使其更符合实际情况。在全面介绍了计算方法之后,最后提供了一些基准示例。
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Tam Bulanık Lineer Denklem Sistemleri için Bulanık Sayısal Simülasyon Tabanlı Sezgisel Bir Yöntem
In this paper, a new method is proposed to find the approximate solutions to fully fuzzy systems of linear equations (FFSLEs). The technique integrates a bisection method with Fuzzy Numerical Simulation (FNS). The procedure starts with generating single values of fuzzy parameters and solving the resulting crisp problems repeatedly to determine the lower and upper bounds of the solutions. After computing the mean lower and upper bound values, the obtained supremum and infimum values are considered to be the lower and upper bounds of the solutions, respectively. It is attempted to improve solutions by considering an error function related to the sum of the absolute differences between the corresponding lower and upper bounds of the left and right sides of the equalities. When very large intervals are obtained for the solutions, the bisection algorithm is applied to reduce the error value. The method intends to solve square systems of large dimensions for arbitrary fuzzy numbers (FNs) by removing non-negativity confinements of the variables and/or coefficients to be more realistic. After the computational method is presented thoroughly, some benchmark examples are finally provided.
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