大数据驱动的农业供应链风险决策和安全管理

Guanghe Han, Xin Pan, Xin Zhang
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引用次数: 0

摘要

在数字化时代,大数据技术的整合已成为推进农业文化供应链管理和加强风险决策过程的重要手段。农业供应链对确保粮食安全和促进农村经济至关重要,但也面临着由自然灾害和市场动态等众多内部和外部因素造成的脆弱性。因此,迫切需要采取有效的风险管理战略。当代研究探索了在农业供应链风险决策过程中如何利用大数据,主要集中在初步风险预测和特征描述方面。然而,在全面分析风险因素之间错综复杂的相互作用以及在此基础上建立整体风险管理决策框架方面还存在不足。本研究通过两项主要研究内容来弥补这些不足。首先,本研究基于具有过渡结构的决策树算法,探索分析农业供应链中的风险因素及其相互关系。该算法可增强决策者对风险因素及其相互关系的理解,并指导实施有效的风险缓解措施和制定应急计划。随后,研究构建了相应的数据驱动多标准决策方法,帮助管理者在动荡的供应链环境中平衡不同的风险管理策略,综合考虑成本、收益和可行性,制定最优策略。这项研究的创新之处在于开发了一种基于过渡决策树算法的新型风险分析工具。这是首次将此类先进算法应用于农业供应链风险管理,填补了当前研究的空白。本研究的成果不仅有助于加强农业供应链中的风险管理实践,还提供了适用于相关领域研究和实践的新见解和方法工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big data-driven risk decision-making and safety management in agricultural supply chains
In the era of digitization, the integration of big data technologies has become instrumental in advancing agri-cultural supply chain management and bolstering risk decision-making processes. Agricultural supply chains, critical to ensuring food security and bolstering rural economies, face vulnerabilities stemming from a myriad of internal and external elements, including natural disasters and market dynamics. Consequently, the urgency to adopt effective risk management strategies is paramount. Contemporary studies have explored the utilization of big data in decision-making processes specific to agricultural supply chain risks, predominantly concentrat-ing on preliminary risk prediction and characterization. Nonetheless, there exists a shortfall in comprehensively analyzing the intricate interplay among risk factors and establishing a holistic risk management decision-making framework based on such analyses. This research addresses these deficiencies through two principal investigative components. First, this research explores the analysis of risk factors and their interrelationships in the agricultural supply chain based on a decision tree algorithm with a transition structure. This algorithm enhances decision-makers’ understanding of risk factors and their interrelationships, and guide the implementation of effective risk mitigation measures and the formulation of contingency plans. Subsequently, the research constructs a corresponding data-driven multi-criteria decision-making method, assisting managers in balancing different risk management strategies in a volatile supply chain environment, considering costs, benefits, and feasibility to formulate the optimal strategy. The innovation of this research lies in the development of a novel risk analysis tool based on the transition decision tree algorithm. This is the first time that such advanced algorithms are applied to agricultural supply chain risk management, filling a gap in the current research. The outcomes of this study not only contribute to enhancing risk management practices within agricultural supply chains but also offer novel insights and methodological tools that are applicable in research and practices across related domains.
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