基于深度强化学习的配送与物流管理信息检索与优化

IF 0.9 Q4 MANAGEMENT
Li Yang, E. SathishkumarV., Adhiyaman Manickam
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引用次数: 1

摘要

在动态运输网络中,资源平衡是现有物流领域最重要的问题之一。现代解决方案用于最大化需求和供应预测与这些问题的协作。然而,交通网络的巨大困难、潜在需求和可获得性的巨大不确定性以及非凸市场限制使传统资源管理成为主要路径。为此,本文提出了一种基于集成深度强化学习的物流管理模型(DELLMM)来增加和优化物流配送。优化方法可用于发明者和价格控制应用。该研究方法给出了信息检索的基本原理和区块链集成的范围。讨论了区块链高效物流管理系统用例的概念框架。本研究设计了深度强化学习系统,该系统可以促进优化和其他业务运营,因为它在优化管理的通用自学习算法上有了令人印象深刻的改进。实验结果表明,与其他方法相比,DELLMM改进了物流管理,优化了配送,可操作性最高为94.35%,时延降低97.12%,效率提高98.01%,信任增强96.37%,可持续性提高97.80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information Retrieval and Optimization in Distribution and Logistics Management Using Deep Reinforcement Learning
Resource balance is one of the most critical concerns in the existing logistic domain within dynamic transport networks. Modern solutions are used to maximize demand and supply prediction in collaboration with these problems. However, the great difficulty of transportation networks, profound uncertainties of potential demand and availability, and non-convex market limits make conventional resource management main paths. Hence, this paper proposes an integrated deep reinforcement learning-based logistics management model (DELLMM) to increase and optimize the logistic distribution. An optimization approach can be used in inventors and price control applications. This research methodology gives the fundamentals of information retrieval and the scope of blockchain integration. The conceptual framework of use cases for an efficient logistic management system with blockchain has been discussed. This research designs the deep reinforcement learning system that can boost optimization and other business operations due to impressive improvements in generic self-learning algorithms for optimal management. Thus, the experimental results show that DELLMM improves logistics management and optimized distribution compared to other methods with the highest operability of 94.35%, latency reduction of 97.12%, efficiency of 98.01%, trust enhancement of 96.37%, and sustainability of 97.80%.
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来源期刊
CiteScore
1.90
自引率
43.80%
发文量
59
期刊介绍: The International Journal of Information Systems and Supply Chain Management (IJISSCM) provides a practical and comprehensive forum for exchanging novel research ideas or down-to-earth practices which bridge the latest information technology and supply chain management. IJISSCM encourages submissions on how various information systems improve supply chain management, as well as how the advancement of supply chain management tools affects the information systems growth. The aim of this journal is to bring together the expertise of people who have worked with supply chain management across the world for people in the field of information systems.
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