Litcius/Paper detail

Decision Support by Interpretable Machine Learning in Acoustic Emission Based Cutting Tool Wear Prediction

Arno Schmetz, Christopher I. Vahl, Zengyi Zhen, Daniel Reibert, Sebastian Mayer, Daniel Zontar, Jochen Garcke, Christian Brecher

20212021 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM)19 citationsDOI

Abstract

Predictive maintenance is a prominent and active field for applications of machine learning in industry in recent years. The health and wear of equipment directly influences the productivity and quality of the production process. Especially in ultra-precision manufacturing, tool wear has a major impact on the achievable quality while the wear itself cannot be measured directly in-process. In this paper we present a machine learning-based classification of the tool wear in-process using acoustic emission sensors. To increase the interpretability of the process – to open the black box model – we apply a feature importance analysis and use the obtained feature importances to provide augmented data representations to the users. These representations increase the transparency of the model's decision process and assist the users in validating the model's decisions and gain new insight into the phenomenon of tool wear itself.

Topics & Concepts

InterpretabilityProcess (computing)Machine learningComputer scienceField (mathematics)Transparency (behavior)Feature (linguistics)Tool wearArtificial intelligenceQuality (philosophy)Decision support systemEngineeringMachiningMechanical engineeringEpistemologyComputer securityPhilosophyMathematicsPure mathematicsOperating systemLinguisticsIndustrial Vision Systems and Defect DetectionAdvanced machining processes and optimization