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Predictive analytics in quality assurance for assembly processes: lessons learned from a case study at an industry 4.0 demonstration cell

Peter Burggräf, Johannes Wagner, Benjamin Heinbach, Fabian Steinberg, Alejandro R. Pérez M., Lennart Schmallenbach, Jochen Garcke, Daniela Steffes-lai, Moritz Wolter

2021Procedia CIRP15 citationsDOIOpen Access PDF

Abstract

Quality assurance (QA) is an important task in manufacturing to assess whether products meet their specifications. However, QA might be expensive, time-consuming, or incomplete. This paper presents a solution for predictive analytics in QA based on machine sensor values during production while employing specialized machine-learning models for classification in a controlled environment. Furthermore, we present lessons learned while implementing this model, which helps to reduce complexity in further industrial applications. The paper’s outcome proves that the developed model was able to predict product quality, as well as to identify the correlation between machine-status and faulty product occurrence.

Topics & Concepts

Quality assuranceAnalyticsQuality (philosophy)EngineeringComputer scienceData scienceSystems engineeringOperations managementPhysicsExternal quality assessmentQuantum mechanicsDigital Transformation in IndustryAdvanced Statistical Process MonitoringQuality and Management Systems
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