农业食品供应链中的分布式人工智能应用 4.0

Mahdi Sharifmousavi , Vahid Kayvanfar , Roberto Baldacci
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引用次数: 0

摘要

供应链 4.0 具有多种特征,包括无缝集成和连接、物联网 (IoT)、大数据、人工智能参与、网络物理系统 (CPS)、供应链不同部分的灵活性、适应性和以客户为中心。分布式人工智能(DAI)系统(如多代理系统(MAS))的应用为提高这些供应链的效率、响应能力和智能化开辟了新天地。在农业食品供应链的不同阶段,如需求预测、库存管理、生产计划、物流优化以及质量保证和控制等阶段,DAI 可促进先进的自主决策和实时优化。本文以整个供应链的调度为例,探讨了 DAI 计划(包括使用基于案例的推理(CBR)增强的多代理系统(MAS))如何在供应链网络的智能互联要素之间实现智能分配。研究表明,通过在供应链管理中使用 DAI,供应链管理的不同部分可以作为代理进行协作,通过使用 MAS,整个供应链的性能可以持续、自适应地优化。供应链 4.0 可以获得自主性、自组织性、自优化性、自适应性、稳健性和灵活性,其知识库可以通过使用 CBR 从过去的情况中学习而不断丰富。报告还讨论了在供应链 4.0 中采用 DAI 所带来的机遇和挑战,包括提高运营效率、降低成本、增强敏捷性和提高客户满意度。然而,数据安全、隐私问题和互操作性等几个问题必须得到解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Artificial Intelligence Application in Agri-food Supply Chains 4.0

Supply Chain 4.0 is characterized by various factors, including seamless integration and connectivity, the Internet of Things (IoT), Big Data, AI participation, Cyber-Physical Systems (CPSs), flexibility, adaptability, and customer-centricity across different parts of the supply chain. The application of Distributed AI (DAI) systems like Multi-Agent Systems (MAS) opens new horizons to enhance the efficiency, responsiveness, and intelligence of these supply chains. DAI facilitates advanced autonomous decision-making and real-time optimization at different stages of the agri-food supply chain, such as demand forecasting, inventory management, production planning, logistics optimization, and quality assurance and control. This article, by focusing on the case of scheduling through the entire supply chain, examines how DAI initiatives, including Multi-Agent Systems (MASs) enhanced with Case-Based Reasoning (CBR), enable the distribution of intelligence across smart, interconnected elements of the supply chain network. It is shown that through the use of DAI in SCM, the performance of the entire supply chain optimizes consistently and adaptively through the use of MAS, in which different parts of SCM collaborate as agents. Supply Chain 4.0 can gain autonomy, self-organization, self-optimization, self-adaptation, robustness, and flexibility, and its knowledge base can be enriched over time by using CBR to learn from past situations. It also discusses the opportunities and challenges associated with the adoption of DAI in Supply Chain 4.0, including operational efficiency, cost reduction, agility enhancement, and improved customer satisfaction. However, several concerns, such as data security, privacy issues, and interoperability, must be addressed.

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