DeepFMEA -- A Scalable Framework Harmonizing Process Expertise and Data-Driven PHM
Christoph Netsch, Till Sch\"ope, Benedikt Schindele, and Joyam, Jayakumar

TL;DR
DeepFMEA presents a scalable framework that integrates process expertise with data-driven methods for prognostics and health monitoring, improving model accuracy, interpretability, and transferability in industrial settings.
Contribution
It introduces a standardized data model inspired by FMEA to effectively encode domain knowledge for ML-based PHM, enhancing extensibility and transferability.
Findings
Enables incorporation of domain expertise into ML models.
Improves transferability of PHM tools across applications.
Facilitates integration with standard MLOps tools.
Abstract
Machine Learning (ML) based prognostics and health monitoring (PHM) tools provide new opportunities for manufacturers to operate and maintain their equipment in a risk-optimized manner and utilize it more sustainably along its lifecycle. Yet, in most industrial settings, data is often limited in quantity, and its quality can be inconsistent - both critical for developing and operating reliable ML models. To bridge this gap in practice, successfully industrialized PHM tools rely on the introduction of domain expertise as a prior, to enable sufficiently accurate predictions, while enhancing their interpretability. Thus, a key challenge while developing data-driven PHM tools involves translating the experience and process knowledge of maintenance personnel, development, and service engineers into a data structure. This structure must not only capture the diversity and variability of the…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Big Data and Business Intelligence · Digital Transformation in Industry
Methodstravel james
