基于社会网络评价框架的农产品绿色供应链风险管理

Risk management of green supply chains for agricultural products based on social network evaluation framework

BUSINESS STRATEGY AND THE ENVIRONMENT · 2024
被引 13
人大 A-ABS 3

中文导读

提出结合社会网络分析和改进TOPSIS方法的框架,用于识别和评估农产品绿色供应链的主要风险,并通过中国食品安全大数据平台案例验证,发现超市供应链风险最高,五星级酒店供应链风险最低。

Abstract

Abstract The green supply chain of agricultural products (GSCAP) is a key link for rural revitalization and sustainable development in China. However, it faces various risks from internal and external environments that threaten its performance and stability. This paper proposes a novel framework and system for identifying and evaluating the main risks in the GSCAP from the perspective of agricultural enterprises. The framework combines social network analysis (SNA) and an improved technique for order preference by similarity to an ideal solution (TOPSIS) method. SNA is used to analyze the correlations and influences among different types of risks, while the improved TOPSIS method is used to rank the risks of different GSCAPs and identify the key risks in each supply chain. The framework and system are verified by a case study of CDYBIT, a leading platform of food safety big data service in China. The results show that the supermarket supply chain has the highest risk, followed by the group catering supply chain, and the five‐star hotel supply chain has the lowest risk. The main risk factors for each supply chain are also discussed, and some suggestions for risk management are provided. This paper contributes to the literature by providing a comprehensive and systematic risk assessment framework and system for the GSCAP, which can help agricultural enterprises improve their risk awareness and response capabilities.

农产品供应链绿色供应链风险管理社会网络分析TOPSIS方法