计算机科学
生产(经济)
对抗制
订单(交换)
订单履行
个性化
产品(数学)
按订单生产
危害
运筹学
风险分析(工程)
工业工程
人工智能
业务
营销
供应链
经济
几何学
数学
财务
万维网
政治学
法学
宏观经济学
工程类
作者
Julian Senoner,Bernhard Kratzwald,Milan Kuzmanovic,Torbjörn H. Netland,Stefan Feuerriegel
摘要
To meet order fulfillment targets, manufacturers seek to optimize production schedules. Machine learning can support this objective by predicting throughput times on production lines given order specifications. However, this is challenging when manufacturers produce customized products because customization often leads to changes in the probability distribution of operational data—so‐called distributional shifts. Distributional shifts can harm the performance of predictive models when deployed to future customer orders with new specifications. The literature provides limited advice on how such distributional shifts can be addressed in operations management. Here, we propose a data‐driven approach based on adversarial learning, which allows us to account for distributional shifts in manufacturing settings with high degrees of product customization. We empirically validate our proposed approach using real‐world data from a job shop production that supplies large metal components to an oil platform construction yard. Across an extensive series of numerical experiments, we find that our adversarial learning approach outperforms common baselines. Overall, this paper shows how production managers can improve their decision making under distributional shifts.
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