灰色线性规划优化问题的灵敏度分析

IF 0.7 Q4 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
D. Darvishi, F. Pourofoghi, J. Forrest
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引用次数: 1

摘要

在线性规划中,参数的敏感性分析通常比最优解更为重要。然而,在分析系数的传统灵敏度时,发现了一个保持最优解的变化范围。这些变化可以是系数中的功能约束,例如目标函数的良好值或技术系数。当现实世界的问题由于有限的数据和有限的信息而高度不准确时,使用灰色系统的方法来执行所需的优化。为了考虑模型参数的不准确性,已经开发了几种求解灰色线性规划的算法;这些方法比较复杂,需要大量的计算时间。本文利用灰色数的定义和算子,分析了一系列灰色线性规划问题的敏感性。灵敏度分析得到的解保留了参数的不确定性。为了评价该方法的有效性和重要性,最后对一个应用数值算例进行了求解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensitivity analysis of grey linear programming for optimisation problems
Sensitivity analysis of parameters is usually more important than the optimal solution when it comes to linear programming. Nevertheless, in the analysis of traditional sensitivities for a coefficient, a range of changes is found to maintain the optimal solution. These changes can be functional constraints in the coefficients, such as good values or technical coefficients, of the objective function. When real-world problems are highly inaccurate due to limited data and limited information, the method of grey systems is used to perform the needed optimisation. Several algorithms for solving grey linear programming have been developed to entertain involved inaccuracies in the model parameters; these methods are complex and require much computational time. In this paper, the sensitivity of a series of grey linear programming problems is analysed by using the definitions and operators of grey numbers. Also, uncertainties in parameters are preserved in the solutions obtained from the sensitivity analysis. To evaluate the efficiency and importance of the developed method, an applied numerical example is solved.
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来源期刊
Operations Research and Decisions
Operations Research and Decisions OPERATIONS RESEARCH & MANAGEMENT SCIENCE-
CiteScore
1.00
自引率
25.00%
发文量
16
审稿时长
15 weeks
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