A Machine Learning-Based System for Predicting Service-Level Failures in Supply Chains

Gabrielle Gauthier Melançon, P. Grangier, Eric Prescott-Gagnon, Emmanuel Sabourin, Louis-Martin Rousseau
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引用次数: 9

Abstract

Despite advanced supply chain planning and execution systems, manufacturers and distributors tend to observe service levels below their targets, owing to different sources of uncertainty and risks. These risks, such as drastic changes in demand, machine failures, or systems not properly configured, can lead to planning or execution issues in the supply chain. It is too expensive to have planners continually track all situations at a granular level to ensure that no deviations or configuration problems occur. We present a machine learning system that predicts service-level failures a few weeks in advance and alerts the planners. The system includes a user interface that explains the alerts and helps to identify failure fixes. We conducted this research in cooperation with Michelin. Through experiments carried out over the course of four phases, we confirmed that machine learning can help predict service-level failures. In our last experiment, planners were able to use these predictions to make adjustments on tires for which failures were predicted, resulting in an improvement in the service level of 10 percentage points. Additionally, the system enabled planners to identify recurrent issues in their supply chain, such as safety-stock computation problems, impacting the overall supply chain efficiency. The proposed system showcases the importance of reducing the silos in supply chain management.
基于机器学习的供应链服务水平故障预测系统
尽管有先进的供应链规划和执行系统,但由于不确定性和风险的不同来源,制造商和分销商往往会观察到服务水平低于目标。这些风险,如需求的剧烈变化、机器故障或系统配置不当,可能导致供应链中的计划或执行问题。让计划人员在细粒度级别上持续跟踪所有情况以确保没有偏差或配置问题发生,这是非常昂贵的。我们提出了一个机器学习系统,它可以提前几周预测服务水平的故障,并提醒计划人员。该系统包括一个用户界面,用于解释警报并帮助识别故障修复。我们与米其林合作进行了这项研究。通过四个阶段的实验,我们证实机器学习可以帮助预测服务级别的故障。在我们的最后一个实验中,规划人员能够使用这些预测对预测故障的轮胎进行调整,从而将服务水平提高了10个百分点。此外,该系统使计划人员能够识别供应链中反复出现的问题,例如影响整个供应链效率的安全库存计算问题。提出的系统显示了减少孤岛在供应链管理中的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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