Analytics under uncertainty: a novel method for solving linear programming problems with trapezoidal fuzzy variables

被引:0
作者
Ali Ebrahimnejad
Madjid Tavana
Vincent Charles
机构
[1] Islamic Azad University,Department of Mathematics, Qaemshahr Branch
[2] La Salle University,Business Systems and Analytics Department, Distinguished Chair of Business Analytics
[3] University of Paderborn,Business Information Systems Department, Faculty of Business Administration and Economics
[4] CENTRUM Católica Graduate Business School,undefined
[5] Pontifical Catholic University of Peru,undefined
来源
Soft Computing | 2022年 / 26卷
关键词
Fuzzy variable linear programming; Duality results; Ranking function; Trapezoidal fuzzy number; Transportation problem;
D O I
暂无
中图分类号
学科分类号
摘要
Linear programming (LP) has long proved its merit as the most flexible and most widely used technique for resource allocation problems in various fields. To solve an LP problem, we have traditionally considered crisp values for the parameters, which are unrealistic in real-world decision-making under uncertainty. The fuzzy set theory has been used to model the imprecise parameter values in LP problems to overcome this shortcoming, resulting in a fuzzy LP (FLP) problem. This paper proposes a new method for solving fuzzy variable linear programming (FVLP) problems in which the decision variables and resource vectors are fuzzy numbers. We show how to use the standard simplex algorithm to solve this problem by converting the fuzzy problem into a crisp one once a linear ranking function is chosen. The novelty of the proposed model resides in that it requires less effort on fuzzy computations as opposed to the existing fuzzy methods. Furthermore, to solve the FVLP problem using the existing methods, fuzzy arithmetic operations and the solution to fuzzy systems of equations are required. By contrast, only arithmetic operations of real numbers and the solution to crisp systems of equations are required to solve the same problem with the method proposed in this study. Finally, a transportation case study in the coal industry is presented to demonstrate the applicability of the proposed algorithm.
引用
收藏
页码:327 / 347
页数:20
相关论文
共 189 条
  • [1] Abbaszadeh Sori A(2020)Elite artificial bees’ colony algorithm to solve robot’s fuzzy constrained routing problem Comput Intell 36 659-681
  • [2] Ebrahimnejad A(2008)Solving full fuzzy linear programming problem by the ranking function Appl Math Sci 2 19-32
  • [3] Motameni H(2020)Fuzzy optimization of carbon management networks based on direct and indirect biomass co-firing Renew Sustain Energy Rev 132 110035-1978
  • [4] Allahviranloo T(2012)A direct solution approach to fuzzy mathematical programs with fuzzy decision variables Exp Syst Appl 39 1972-909
  • [5] Hosseinzadeh Lotfi F(2020)A hybrid multi-objective tour route optimization algorithm based on particle swarm optimization and artificial bee colony optimization Comput Intell 36 884-662
  • [6] Kiasary MK(2021)New methods for solving imprecisely defined linear programming problem under trapezoidal fuzzy uncertainty J Inform Optim Sci 4 603-696
  • [7] Kiani NA(2014)A note on the paper “A Simplified novel technique for solving fully fuzzy linear programming problems” J Optim Theory Appl 163 685-253
  • [8] Alizadeh L(2010)Supply chain network modeling in a golf club industry via fuzzy linear programming approach J Intell Fuzzy Syst Appl Eng Technol 21 243-39
  • [9] Aviso KB(2011)Stochastic fractional programming approach to a mean and variance model of a transportation problem Math Prob Eng 2011 657608-519
  • [10] Sy CL(2021)Online-review analysis based large-scale group decision-making for determining passenger demands and evaluating passenger satisfaction: case study of high-speed rail system in China Inform Fusion 69 22-63