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A Comparative Study of Redundant Constraints Identification Methods in Linear Programming Problems

机译:线性规划问题中冗余约束识别方法的比较研究

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摘要

The objective function and the constraints can be formulated as linear functions of independent variables in most of the real-world optimization problems. Linear Programming (LP) is the process of optimizing a linear function subject to a finite number of linear equality and inequality constraints. Solving linear programming problems efficiently has always been a fascinating pursuit for computer scientists and mathematicians. The computational complexity of any linear programming problem depends on the number of constraints and variables of the LP problem. Quite often large-scale LP problems may contain many constraints which are redundant or cause infeasibility on account of inefficient formulation or some errors in data input. The presence of redundant constraints does not alter the optimal solutions(s). Nevertheless, they may consume extra computational effort. Many researchers have proposed different approaches for identifying the redundant constraints in linear programming problems. This paper compares five of such methods and discusses the efficiency of each method by solving various size LP problems and netlib problems. The algorithms of each method are coded by using a computer programming language C. The computational results are presented and analyzed in this paper.
机译:在大多数现实世界中的优化问题中,目标函数和约束条件可以表述为自变量的线性函数。线性规划(LP)是在有限数量的线性相等和不等式约束下优化线性函数的过程。对于计算机科学家和数学家来说,有效地解决线性编程问题一直是令人着迷的追求。任何线性规划问题的计算复杂度取决于LP问题的约束和变量数量。大型LP问题经常包含许多约束,这些约束是多余的,或者由于效率低下的公式编制或数据输入中的某些错误而导致不可行。冗余约束的存在不会更改最佳解决方案。但是,它们可能会消耗额外的计算量。许多研究人员提出了不同的方法来识别线性规划问题中的冗余约束。本文比较了五种这样的方法,并通过解决各种大小的LP问题和netlib问题来讨论每种方法的效率。每种方法的算法均使用计算机编程语言C进行编码。本文介绍并分析了计算结果。

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  • 来源
    《Mathematical Problems in Engineering》 |2010年第4期|p.17-32|共16页
  • 作者

    Paulraj S.; Sumathi P.;

  • 作者单位

    Department of Mathematics, Madras Institute of Technology Campus, Anna University, Chromepet,Chennai, Tamil Nadu 600 044, India;

    Anna University, Chennai, Tamil Nadu, India;

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