A Pivot Rule for Maximization Degeneracy Problems of Simplex Method for Linear Programming Problems

R. K. Menghwar, F. Shaikh
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Abstract

The simplex algorithm is a powerful technique, widely used to find the optimal solution of linear programming problems. Pivot rule is the most important first step of the simplex algorithm in the maximization degeneracy problems of LP for selecting the entering variable/work column (to obtain the smallest ratios) and after than leaving variable for pivot equation. The selection of an effective pivot rule leads the smallest number of iterations of the optimal solution of L.P. The selecting of most negative number (for entering variable) in the maximization problems is known as G.B Dantzig's pivot rule. The purpose of this paper is to model an algorithm that improves in the entering and leaving variable for the maximization degeneracy problems of LP. In this article, we have introduced a powerful technique for pivot rule which reduces the number of iterations to obtain the optimal solution as compare to Dantzig’s pivot rule. This article gives better concept of selection the entering variable as well leaving variable. This article also gives a helpful imminent into the unique and constructive performance of the proposed method by coverage computational experiments.
线性规划问题中单纯形法最大退化问题的枢轴准则
单纯形算法是一种强大的算法,被广泛用于求解线性规划问题的最优解。选取输入变量/工作列(以获得最小的比率)和离开变量后的单形算法在求解LP最大退化问题中最重要的第一步是Pivot规则。选取有效的枢轴规则使L.P.的最优解迭代次数最少,在最大化问题中选取最多的负数(输入变量)称为g.b.d antzig枢轴规则。本文的目的是建立一种改进LP最大退化问题的进入和离开变量的算法。在本文中,我们介绍了一种强大的枢轴规则技术,与Dantzig枢轴规则相比,它减少了获得最优解的迭代次数。本文给出了更好的选择进入变量和离开变量的概念。本文还通过覆盖计算实验对该方法的独特和建设性性能进行了有益的探讨。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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