Jian-Peng Chang, Heng-Xin Ren, Luis Martínez, Witold Pedrycz, Zhen-Song Chen
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To address epistemic uncertainty, we put forward a novel subjective judgment representation method, which is named as linguistic term set integrated with discrete subjective probability distribution (LTS-DSPD), to enable decision-makers to express their judgments in a manner that is both simpler and more nuanced. Furthermore, we also give the elicitation methods and computing techniques for LTS-DSPD. Then, we integrate stakeholders’ requirements, along with their preferences and expectations for these requirements to inform and guide SS. To effectively operationalize this guidance, we design the QFD-based methods to transform stakeholders' inputs into the assessment criteria for SS, the weights of criteria, and the expectations for the performances of suppliers on each criterion, respectively. To address stochastic uncertainty, we have developed an innovative methodology for characterizing it, and adopt prospect theory to quantify the overall utility of alternative suppliers. 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引用次数: 0
摘要
供应商选择(SS)已成为旨在加强其供应链运营管理的公司所面临的一项重要挑战,随着工业 4.0 的到来和正在进行的数字化转型,这项任务变得越来越复杂。本文认识到当前文献中存在的不足,特别是在指导供应链服务时缺乏对利益相关者期望的考虑,以及对认识不确定性和随机不确定性的处理不当,因此介绍了一种基于质量功能部署(QFD)的供应链服务多重标准模型。针对认识上的不确定性,我们提出了一种新颖的主观判断表示方法,即语言术语集与离散主观概率分布集成(LTS-DSPD),使决策者能够以更简单、更细致的方式表达他们的判断。此外,我们还给出了 LTS-DSPD 的诱导方法和计算技术。然后,我们整合利益相关者的要求以及他们对这些要求的偏好和期望,为 SS 提供信息和指导。为了有效实施这种指导,我们设计了基于 QFD 的方法,将利益相关者的输入分别转化为 SS 的评估标准、标准权重以及对供应商在每个标准上的表现的期望。为了解决随机不确定性问题,我们开发了一种创新方法来描述随机不确定性,并采用前景理论来量化备选供应商的整体效用。本文最后通过一个案例研究,展示了该方法在简化 SS 流程方面的实际应用和有效性。
Requirement-driven supplier selection: a multi-criteria QFD-based approach under epistemic and stochastic uncertainties
Supplier selection (SS) has emerged as a critical challenge for companies aiming to enhance the operational management of their supply chains, a task that has grown in complexity with the advent of Industry 4.0 and the ongoing digital transformation. Recognizing the gaps in current literature—specifically, the lack of consideration for stakeholders' expectations in guiding SS, as well as the inadequate handling of epistemic and stochastic uncertainties—this paper introduces a multiple-criteria Quality Function Deployment (QFD)-based model for SS. To address epistemic uncertainty, we put forward a novel subjective judgment representation method, which is named as linguistic term set integrated with discrete subjective probability distribution (LTS-DSPD), to enable decision-makers to express their judgments in a manner that is both simpler and more nuanced. Furthermore, we also give the elicitation methods and computing techniques for LTS-DSPD. Then, we integrate stakeholders’ requirements, along with their preferences and expectations for these requirements to inform and guide SS. To effectively operationalize this guidance, we design the QFD-based methods to transform stakeholders' inputs into the assessment criteria for SS, the weights of criteria, and the expectations for the performances of suppliers on each criterion, respectively. To address stochastic uncertainty, we have developed an innovative methodology for characterizing it, and adopt prospect theory to quantify the overall utility of alternative suppliers. The paper concludes with a case study to demonstrate its practical application and effectiveness in streamlining SS process.
期刊介绍:
The Annals of Operations Research publishes peer-reviewed original articles dealing with key aspects of operations research, including theory, practice, and computation. The journal publishes full-length research articles, short notes, expositions and surveys, reports on computational studies, and case studies that present new and innovative practical applications.
In addition to regular issues, the journal publishes periodic special volumes that focus on defined fields of operations research, ranging from the highly theoretical to the algorithmic and the applied. These volumes have one or more Guest Editors who are responsible for collecting the papers and overseeing the refereeing process.