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混合整数线性规划与深度强化学习相结合的方法在汽车行业可重复使用容器流中的应用

Hybrid MILP-deep reinforcement learning approach for reusable container flows in the automotive industry

International Journal of Production Economics · 2026
被引 1 · 同刊同年前 8%
ABS 3

中文导读

针对汽车行业二级供应商的可重复使用容器流优化问题,提出一种混合整数线性规划与深度强化学习相结合的方法,在降低总成本和减少服务失败的同时平衡运营成本、缺货、转运和碳排放。

Abstract

: The management of Returnable Transport Items (RTIs), also called Reusable Transit Packaging (RTP), within automotive Just-in-Time (JIT) supply chains presents significant operational and strategic challenges, particularly for second-tier suppliers who face high demand volatility and limited control over RTI availability. Inefficient RTI flows lead to increased costs, service failures, and adverse environmental impacts. This paper addresses the complex problem of optimizing production scheduling and reusable container logistics for a second-tier plastic injection supplier by proposing a novel hybrid approach that integrates Mixed-Integer Linear Programming (MILP) with Deep Reinforcement Learning (DRL). The MILP component models detail operational decisions, including production sequencing with mold changeovers, inventory management for parts and containers (both reusable and disposable), and explicit transshipment operations, aiming to minimize total systemic costs including an environmental penalty for CO 2 emissions. The DRL agent learns an adaptive policy to strategically determine the optimal initial inventory of empty reusable containers at the beginning of each planning cycle, dynamically informing the MILP model. Comprehensive computational experiments on a variety of synthetically generated instances, characterized by diverse demand patterns (Stable, Peaks, Volatile), demonstrate the proposed hybrid approach's effectiveness. Results indicate that the MILP-DRL approach achieves competitive total system costs and significantly reduces service level failures, while effectively navigating the trade-offs between operational costs, backorders, transshipments, and CO 2 emissions. The study provides valuable insights into the benefits of adaptive, learning-based strategies for RTI management and offers practical guidance for second-tier suppliers striving to enhance efficiency and sustainability in demanding JIT environments.

供应链管理运筹优化强化学习汽车行业可持续物流