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  4. Removing Operational Friction Using Process Mining: Challenges Provided by the Internet of Production (IoP)
 
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2021
Conference Paper
Title

Removing Operational Friction Using Process Mining: Challenges Provided by the Internet of Production (IoP)

Abstract
Operational processes in production, logistics, material handling, maintenance, etc., are supported by cyber-physical systems combining hardware and software components. As a result, the digital and the physical world are closely aligned, and it is possible to track operational processes in detail (e.g., using sensors). The abundance of event data generated by today's operational processes provides opportunities and challenges for process mining techniques supporting process discovery, performance analysis, and conformance checking. Using existing process mining tools, it is already possible to automatically discover process models and uncover performance and compliance problems. In the DFG-funded Cluster of Excellence "Internet of Production" (IoP), process mining is used to create "digital shadows" to improve a wide variety of operational processes. However, operational processes are dynamic, distributed, and complex. Driven by the challenges identified in the IoP cluster, we work on novel techniques for comparative process mining (comparing process variants for different products at different locations at different times), object-centric process mining (to handle processes involving different types of objects that interact), and forward-looking process mining (to explore "What if?" questions). By addressing these challenges, we aim to develop valuable ""digital shadows"" that can be used to remove operational friction.
Author(s)
Aalst, W.M.P. van der
Brockhoff, T.
Ghahfarokhi, A.F.
Pourbafrani, M.
Uysal, M.S.
Zelst, S.J. van
Mainwork
Data Management Technologies and Applications. 9th International Conference, DATA 2020. Revised Selected Papers  
Conference
International Conference on Data Science, Technology and Applications (DATA) 2020  
DOI
10.1007/978-3-030-83014-4_1
Language
English
Fraunhofer-Institut für Angewandte Informationstechnik FIT  
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