ContinuumConductor : Decentralized Process Mining on the Edge-Cloud Continuum
By: Hendrik Reiter , Janick Edinger , Martin Kabierski and more
Potential Business Impact:
Lets smart factories find problems faster.
Process mining traditionally assumes centralized event data collection and analysis. However, modern Industrial Internet of Things systems increasingly operate over distributed, resource-constrained edge-cloud infrastructures. This paper proposes a structured approach for decentralizing process mining by enabling event data to be mined directly within the IoT systems edge-cloud continuum. We introduce ContinuumConductor a layered decision framework that guides when to perform process mining tasks such as preprocessing, correlation, and discovery centrally or decentrally. Thus, enabling privacy, responsive and resource-efficient process mining. For each step in the process mining pipeline, we analyze the trade-offs of decentralization versus centralization across these layers and propose decision criteria. We demonstrate ContinuumConductor at a real-world use-case of process optimazition in inland ports. Our contributions lay the foundation for computing-aware process mining in cyber-physical and IIoT systems.
Similar Papers
Process Mining on Distributed Data Sources
Emerging Technologies
Helps track complex systems with many sensors.
Navigating the Edge-Cloud Continuum: A State-of-Practice Survey
Distributed, Parallel, and Cluster Computing
Helps computers work faster by sharing tasks.
IoT Miner: Intelligent Extraction of Event Logs from Sensor Data for Process Mining
Software Engineering
Helps factories understand machine problems automatically.