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用于弹性和可持续水果冷链物流的生成式人工智能与区块链集成多智能体框架

Generative AI and Blockchain-Integrated Multi-Agent Framework for Resilient and Sustainable Fruit Cold-Chain Logistics.

作者信息

Khanna Abhirup, Jain Sapna, Sah Anushree, Dangi Sarishma, Sharma Abhishek, Tiang Sew Sun, Wong Chin Hong, Lim Wei Hong

机构信息

School of Computer Science, UPES, Dehradun 248007, India.

Applied Science Cluster (Chemistry), School of Advanced Engineering, UPES, Dehradun 248007, India.

出版信息

Foods. 2025 Aug 27;14(17):3004. doi: 10.3390/foods14173004.

Abstract

The cold-chain supply of perishable fruits continues to face challenges such as fuel wastage, fragmented stakeholder coordination, and limited real-time adaptability. Traditional solutions, based on static routing and centralized control, fall short in addressing the dynamic, distributed, and secure demands of modern food supply chains. This study presents a novel end-to-end architecture that integrates multi-agent reinforcement learning (MARL), blockchain technology, and generative artificial intelligence. The system features large language model (LLM)-mediated negotiation for inter-enterprise coordination, Pareto-based reward optimization balancing spoilage, energy consumption, delivery time, and climate and emission impact. Smart contracts and Non-Fungible Token (NFT)-based traceability are deployed over a private Ethereum blockchain to ensure compliance, trust, and decentralized governance. Modular agents-trained using centralized training with decentralized execution (CTDE)-handle routing, temperature regulation, spoilage prediction, inventory, and delivery scheduling. Generative AI simulates demand variability and disruption scenarios to strengthen resilient infrastructure. Experiments demonstrate up to 50% reduction in spoilage, 35% energy savings, and 25% lower emissions. The system also cuts travel time by 30% and improves delivery reliability and fruit quality. This work offers a scalable, intelligent, and sustainable supply chain framework, especially suitable for resource-constrained or intermittently connected environments, laying the foundation for future-ready food logistics systems.

摘要

易腐水果的冷链供应持续面临燃料浪费、利益相关者协调分散以及实时适应性有限等挑战。基于静态路线规划和集中控制的传统解决方案,在满足现代食品供应链动态、分布式和安全需求方面存在不足。本研究提出了一种新颖的端到端架构,该架构集成了多智能体强化学习(MARL)、区块链技术和生成式人工智能。该系统具有通过大语言模型(LLM)介导的企业间协调谈判、基于帕累托的奖励优化,可平衡变质、能源消耗、交付时间以及气候和排放影响。智能合约和基于非同质化代币(NFT)的可追溯性部署在私有以太坊区块链上,以确保合规性、信任和去中心化治理。使用集中训练与分散执行(CTDE)训练的模块化智能体负责路线规划、温度调节、变质预测、库存和交付调度。生成式人工智能模拟需求变化和中断场景,以强化弹性基础设施。实验表明,变质减少高达50%,能源节省35%,排放降低25%。该系统还将运输时间缩短30%,并提高了交付可靠性和水果质量。这项工作提供了一个可扩展、智能且可持续的供应链框架,特别适用于资源受限或间歇性连接的环境,为面向未来的食品物流系统奠定了基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/67a2/12427963/c13b52c67507/foods-14-03004-g001.jpg

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