Litcius/Paper detail

Deep learning for multivariate statistical in-process control in discrete manufacturing: A case study in a sheet metal forming process

Tobias Biegel, Nicolas Jourdan, Carlos Hernández, Amir Cviko, Joachim Metternich

2022Procedia CIRP20 citationsDOIOpen Access PDF

Abstract

Detecting abnormal conditions in manufacturing processes is a crucial task to avoid unplanned downtimes and prevent quality issues. The increasing amount of available high-frequency process data combined with advances in the field of deep autoencoder-based monitoring offers huge potential in enhancing the performance of existing Multivariate Statistical Process Control approaches. We investigate the application of deep auto encoder-based monitoring approaches and experiment with the reconstruction error and the latent representation of the input data to compute Hotelling’s T2 and Squared Prediction Error monitoring statistics. The investigated approaches are validated using a real-world sheet metal forming process and show promising results.

Topics & Concepts

AutoencoderStatistical process controlProcess (computing)Multivariate statisticsComputer scienceSheet metalProcess controlRepresentation (politics)Artificial intelligenceProcess modelingData miningField (mathematics)Deep learningMachine learningWork in processEngineeringMathematicsOperations managementPure mathematicsMechanical engineeringPoliticsOperating systemLawPolitical scienceFault Detection and Control SystemsAdvanced Statistical Process MonitoringIndustrial Vision Systems and Defect Detection