多重归一化评级分析(MUNRA)及其在纺织行业数字供应商选择中的应用

Multiple Normalization Rating Analysis (MUNRA) and its application to digital supplier selection in the textile industry

Technological and Economic Development of Economy · 2025
被引 4
人大 A-

中文导读

提出一种新的多准则决策方法MUNRA,通过整合线性、向量和非线性归一化提高排序稳健性,并应用于纺织行业数字供应商选择,发现技术集成、灵活性和技术能力是关键标准。

Abstract

The rapid development of digital technologies – such as IoT, AI, blockchain, and digital twins – has transformed supply chains into interconnected ecosystems, making digital supplier selection both critical and complex. For the first time, this study proposes a novel multi-criteria decision-making (MCDM) method, Multiple Normalization Rating Analysis (MUNRA), for ranking alternatives. It integrates linear, vector, and non-linear normalization to improve robustness, reduce rank reversal, and enhance decision accuracy. A case study of digital supplier selection in the textile industry is considered for a real-life application of the method. Results highlight technology integration, flexibility, and technological capability as the most influential criteria for selecting digital suppliers. Moreover, the final ranking of the six digital suppliers is as follows: DS5, DS4, DS2, DS6, DS1, and DS3. Validation through comparative MCDM methods, Spearman correlation, and sensitivity analyses confirms the credibility of the method. It is also shown that it is free from the rank reversal phenomenon. The research presents a computationally efficient and rigorous method for evaluating digital suppliers, offering strategic insights for digital supply chain management. The application of MUNRA to a larger decision-making problem further illustrates its scalability and cross-domain applicability.

MUNRA数字供应商选择多准则决策纺织行业