增强工业 5.0 中逆向物流流程和网络的综合方法论

Logistics Pub Date : 2023-12-11 DOI:10.3390/logistics7040097
Al-Amin Abba Dabo, A. Hosseinian-Far
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引用次数: 0

摘要

背景:本文探讨了工业 5.0 在推动社会向循环经济转型方面的潜力。我们重点关注逆向物流在这一背景下的战略作用,强调其在优化资源利用、减少浪费以及加强可持续生产和消费模式方面的重要意义。采用可持续工业实践对于应对全球环境挑战至关重要。工业 5.0 为实现这些目标提供了机遇,特别是通过加强逆向物流流程。方法:我们提出了一种结合二元逻辑回归和决策树的综合方法,用于预测和优化工业 5.0 框架内的逆向物流流和网络。结果:该方法展示了有效的定量影响因素:该方法对逆向物流中具有影响力的预测因素进行了有效的定量建模,并为理解它们之间的相互关系提供了一个结构化框架。它产生了可操作的洞察力,从而加强了供应链管理的决策过程。结论:该方法支持将先进技术和以人为本的方法整合到工业逆向物流中,从而改善资源的可持续性和系统创新,并为实现循环经济的更广泛目标做出贡献。未来的研究应探索该方法在不同工业领域的可扩展性,以及与其他工业 5.0 技术的整合。为了跟上工业可持续性不断发展的步伐,有必要对该方法进行不断完善和调整。
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An Integrated Methodology for Enhancing Reverse Logistics Flows and Networks in Industry 5.0
Background: This paper explores the potential of Industry 5.0 in driving societal transition to a circular economy. We focus on the strategic role of reverse logistics in this context, underlining its significance in optimizing resource use, reducing waste, and enhancing sustainable production and consumption patterns. Adopting sustainable industrial practices is critical to addressing global environmental challenges. Industry 5.0 offers opportunities for achieving these goals, particularly through the enhancement of reverse logistics processes. Methods: We propose an integrated methodology that combines binary logistic regression and decision trees to predict and optimize reverse logistics flows and networks within the Industry 5.0 framework. Results: The methodology demonstrates effective quantitative modeling of influential predictors in reverse logistics and provides a structured framework for understanding their interrelations. It yields actionable insights that enhance decision-making processes in supply chain management. Conclusions: The methodology supports the integration of advanced technologies and human-centered approaches into industrial reverse logistics, thereby improving resource sustainability, systemic innovation, and contributing to the broader goals of a circular economy. Future research should explore the scalability of this methodology across different industrial sectors and its integration with other Industry 5.0 technologies. Continuous refinement and adaptation of the methodology will be necessary to keep pace with the evolving landscape of industrial sustainability.
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