求解线性不等式约束二次规划问题的Kuhn-Tucker条件新方法

IF 1.1 Q2 MATHEMATICS, APPLIED
Ayansola Olufemi Aderemi, Adejumo Adebowale Olusola
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引用次数: 1

摘要

许多现实生活中的问题,如经济、工业、工程等,使用线性规划,假设目标函数和约束函数是线性的,已经得到了处理。值得注意的是,在许多情况下,目标函数和/或部分或全部约束都是非线性函数。人们注意到,许多研究人员在寻找非线性规划问题的通解方法方面付出了巨大的努力,但都无济于事。求解非线性规划问题的主要方法有Karush- Kuhn-Tucker条件法和Wolf修正单纯形法。对于变量必须满足一些不等式约束的有限维优化问题——非线性规划问题,Karush-Kuhn-Tucker定理给出了最优解存在的充分必要条件。Wolf在Karush-Kuhn-Tucker条件的基础上,将目标函数中的二次线性函数改为线性函数,对单纯形法进行了改进。本文提出了Karush-Kuhn-Tucker条件方法的一种替代方法。该方法比一般考虑的两种求解线性不等式约束下的二次规划问题的方法更简单。这是因为它的计算工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Approach for Kuhn-Tucker Conditions to Solve Quadratic Programming Problems with Linear Inequality Constraints
Many real-life problems, such as economic, industrial, engineering to mention but a few has been dealt with, using linear programming that assumes linearity in the objective function and constraint functions. It is noteworthy that there are many situations where the objective function and / or some or all of the constraints are non-linear functions. It is observed that many researchers have laboured so much at finding general solution approach to Non-linear programming problems but all to no avail. Of the prominent methods of solution of Non-linear programming problems: Karush- Kuhn-Tucker conditions method and Wolf modified simplex method. The Karush-Kuhn-Tucker theorem gives necessary and sufficient conditions for the existence of an optimal solution to non-linear programming problems, a finite-dimensional optimization problem where the variables have to fulfill some inequality constraints while Wolf in addition to Karush- Kuhn-Tucker conditions, modified the simplex method after changing quadratic linear function in the objective function to linear function. In this paper, an alternative method for Karush-Kuhn-Tucker conditional method is proposed. This method is simpler than the two methods considered to solve quadratic programming problems of maximizing quadratic objective function subject to a set of linear inequality constraints. This is established because of its computational efforts.
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来源期刊
Mathematics in Computer Science
Mathematics in Computer Science MATHEMATICS, APPLIED-
CiteScore
1.40
自引率
12.50%
发文量
23
期刊介绍: Mathematics in Computer Science publishes high-quality original research papers on the development of theories and methods for computer and information sciences, the design, implementation, and analysis of algorithms and software tools for mathematical computation and reasoning, and the integration of mathematics and computer science for scientific and engineering applications. Insightful survey articles may be submitted for publication by invitation. As one of its distinct features, the journal publishes mainly special issues on carefully selected topics, reflecting the trends of research and development in the broad area of mathematics in computer science. Submission of proposals for special issues is welcome.
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