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Application of multi-objective optimization based on genetic algorithm for sustainable strategic supplier selection under fuzzy environment

机译:基于遗传算法的多目标优化在模糊环境下可持续战略供应商选择中的应用

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Purpose: The incorporation of environmental objective into the conventional supplier selection practices is crucial for corporations seeking to promote green supply chain management (GSCM). Challenges and risks associated with green supplier selection have been broadly recognized by procurement and supplier management professionals. This paper aims to solve a Tetra “S” (SSSS) problem based on a fuzzy multi-objective optimization with genetic algorithm in a holistic supply chain environment. In this empirical study, a mathematical model with fuzzy coefficients is considered for sustainable strategic supplier selection (SSSS) problem and a corresponding model is developed to tackle this problem.Design/methodology/approach: Sustainable strategic supplier selection (SSSS) decisions are typically multi-objectives in nature and it is an important part of green production and supply chain management for many firms. The proposed uncertain model is transferred into deterministic model by applying the expected value mesurement (EVM) and genetic algorithm with weighted sum approach for solving the multi-objective problem. This research focus on a multi-objective optimization model for minimizing lean cost, maximizing sustainable service and greener product quality level. Finally, a mathematical case of textile sector is presented to exemplify the effectiveness of the proposed model with a sensitivity analysis.Findings: This study makes a certain contribution by introducing the Tetra ‘S’ concept in both the theoretical and practical research related to multi-objective optimization as well as in the study of sustainable strategic supplier selection (SSSS) under uncertain environment. Our results suggest that decision makers tend to select strategic supplier first then enhance the sustainability.Research limitations/implications: Although the fuzzy expected value model (EVM) with fuzzy coefficients constructed in present research should be helpful for solving real world problems. A detailed comparative analysis by using other algorithms is necessary for solving similar problems of agriculture, pharmaceutical, chemicals and services sectors in future.Practical implications: It can help the decision makers for ordering to different supplier for managing supply chain performance in efficient and effective manner. From the procurement and engineering perspectives, minimizing cost, sustaining the quality level and meeting production time line is the main consideration for selecting the supplier. Empirically, this can facilitate engineers to reduce production costs and at the same time improve the product quality.Originality/value: In this paper, we developed a novel multi-objective programming model based on genetic algorithm to select sustainable strategic supplier (SSSS) under fuzzy environment. The algorithm was tested and applied to solve a real case of textile sector in Pakistan. The experimental results and comparative sensitivity analysis illustrate the effectiveness of our proposed model.
机译:目的:将环境目标纳入常规供应商选择实践中对于寻求促进绿色供应链管理(GSCM)的公司至关重要。采购和供应商管理专业人员已广泛认识到与绿色供应商选择相关的挑战和风险。本文旨在在整体供应链环境中,基于遗传算法,基于模糊多目标优化,解决Tetra“ S”(SSSS)问题。在这项实证研究中,考虑了具有模糊系数的数学模型用于可持续战略供应商选择(SSSS)问题,并开发了相应的模型来解决此问题。设计/方法/方法:可持续战略供应商选择(SSSS)决策通常是多方面的目标,它是许多公司绿色生产和供应链管理的重要组成部分。通过应用期望值保证和基于加权和的遗传算法求解多目标问题,将不确定性模型转化为确定性模型。这项研究集中于一个多目标优化模型,以最小化精益成本,最大化可持续服务和更绿色的产品质量水平。最后,给出了一个纺织行业的数学案例,通过敏感性分析来说明所提出模型的有效性。研究结果:本研究通过在与多纤维相关的理论和实践研究中引入Tetra'S'概念做出了一定贡献。目标优化以及不确定环境下的可持续战略供应商选择(SSSS)研究。我们的研究结果表明,决策者倾向于先选择战略供应商,然后再提高可持续性。研究局限/启示:尽管目前研究中构建的具有模糊系数的模糊期望值模型(EVM)有助于解决现实世界中的问题。使用其他算法进行详细的比较分析对于解决未来农业,制药,化学和服务业的类似问题是必要的。实际意义:它可以帮助决策者订购不同的供应商,以高效地管理供应链绩效。 。从采购和工程角度来看,最小化成本,维持质量水平并满足生产时间线是选择供应商的主要考虑因素。从经验上讲,这可以帮助工程师降低生产成本,同时提高产品质量。原创性/价值:在本文中,我们开发了一种基于遗传算法的新型多目标规划模型,以选择可持续的战略供应商(SSSS)。模糊的环境。测试了该算法,并将其应用于解决巴基斯坦纺织部门的实际案例。实验结果和比较灵敏度分析说明了我们提出的模型的有效性。

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