Publication | Open Access
Multistage Quality Control Using Machine Learning in the Automotive Industry
139
Citations
19
References
2019
Year
Total Quality ManagementAutomotive IndustryEngineeringMachine LearningProduct Dimensional VariabilityIndustrial EngineeringMachine Learning ToolFault ForecastingComputer-aided DesignIntelligent SystemsLearning ControlData-driven OptimizationData ScienceData MiningPattern RecognitionSystems EngineeringFeature EngineeringPredictive AnalyticsKnowledge DiscoveryQuality ControlComputer ScienceFeature ConstructionAutomated InspectionPredictive MaintenanceVaried MetricsProcess ControlBusinessAi-based Process OptimizationIndustrial Informatics
Product dimensional variability is a crucial factor in the quality control of complex multistage manufacturing processes, where undetected defects can easily be propagated downstream. The recent advances in information technologies and consequently the increased volume of data that has become readily available provide an excellent opportunity for the development of automated defect detection approaches that are capable of extracting the implicit complex relationships in these multivariate data-rich environments. In this paper, several machine learning classifiers were trained and evaluated on varied metrics to predict dimensional defects in a real automotive multistage assembly line. The line encompasses two automated inspection stages with several human-operated assembly and pre-alignment stages in between. The results show that non-linear models like XGBoost and Random Forests are capable of modelling the complexity of such an environment, achieving a high true positive rate and showing promise for the improvement of existing quality control approaches, enabling defects and deviations to be addressed earlier and thus assist in reducing scrap and repair costs.
| Year | Citations | |
|---|---|---|
Page 1
Page 1