ML2-enabled Condition-based Demand, Production, Inventory, and Maintenance Planning

Wesendrup, Kevin; Hellingrath, Bernd

Research article in edited proceedings (conference) | Peer reviewed

Abstract

Production planning and control is pivotal to meeting customer demand and maximizing profit. At the same time, machine breakdowns compromise these goals, which can be tackled with a good maintenance strategy. Here, advances in condition-based maintenance and prognostics and health management allow predicting the health state of production machines through sensor data and prescribing optimal demand, production, inventory, and maintenance plans. Here, machine learning (ML) is promising for accurate health predictions using sensor data and decision-making in complex, highly dynamic production environments. Thus, in this work, two ML algorithms are applied. First, a data-driven regression algorithm predicts the health of a machine. This forecast is forwarded to a reinforcement learning algorithm (i.e. proximal policy optimization, recently made famous by its application within ChatGPT) to optimize demand, production, inventory, and maintenance plans. A computational study shows excellent performances of the ML-based health prediction and planning algorithms, which surpass traditional maintenance strategies.

Details about the publication

PublisherInternational Federation of Automatic Control
Book titleProceedings of the IFAC World Congress 2023
Page range7182-7187
Publishing companyElsevier
Place of publicationYokohama
StatusPublished
Release year2023
Language in which the publication is writtenEnglish
ConferenceIFAC World Congress 2023, Yokohama, Japan
KeywordsPrognostics & health management; Production planning and control; Intelligent manufacturing systems

Authors from the University of Münster

Hellingrath, Bernd
Chair of Information Systems and Supply Chain Management (Logistik)
Wesendrup, Kevin
Chair of Information Systems and Supply Chain Management (Logistik)