Author:
Schmitt Robert H.,Kiesel Raphael,Buschmann Daniel,Cramer Simon,Enslin Chrismarie,Fischer Markus,Gries Thomas,Hopmann Christian,Huebser Louis,Janke Tim,Kemmerling Marco,Müller Kai,Pelzer Lukas,Perau Martin,Pourbafrani Mahsa,Samsonov Vladimir,Schlegel Peter,Schopen Marco,Schuh Günther,Schulze Tobias,van der Aalst Wil
Abstract
AbstractIn short-term production management of the Internet of Production (IoP) the vision of a Production Control Center is pursued, in which interlinked decision-support applications contribute to increasing decision-making quality and speed. The applications developed focus in particular on use cases near the shop floor with an emphasis on the key topics of production planning and control, production system configuration, and quality control loops.Within the Predictive Quality application, predictive models are used to derive insights from production data and subsequently improve the process- and product-related quality as well as enable automated Root Cause Analysis. The Parameter Prediction application uses invertible neural networks to predict process parameters that can be used to produce components with desired quality properties. The application Production Scheduling investigates the feasibility of applying reinforcement learning to common scheduling tasks in production and compares the performance of trained reinforcement learning agents to traditional methods. In the two applications Deviation Detection and Process Analyzer, the potentials of process mining in the context of production management are investigated. While the Deviation Detection application is designed toidentify and mitigate performance and compliance deviations in production systems, the Process Analyzer concept enables the semi-automated detection of weaknesses in business and production processes utilizing event logs.With regard to the overall vision of the IoP, the developed applications contribute significantly to the intended interdisciplinary of production and information technology. For example, application-specific digital shadows are drafted based on the ongoing research work, and the applications are prototypically embedded in the IoP.
Publisher
Springer International Publishing
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