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A Machine Learning Strategy for Race-Tracking Detection During Manufacturing of Composites by Liquid Moulding

Joaquín Fernández-León, Keayvan Keramati, D. Garoz, Luis Baumela, Carlos Miguel, Carlos González

2022Integrating materials and manufacturing innovation21 citationsDOIOpen Access PDF

Abstract

Abstract This work presents a supervised machine learning (ML) model to detect race-tracking disturbances during the liquid moulding manufacturing of structural composites. Race-tracking is generated by unexpected resin channels at mould edges that may induce dry spots and porosity formation. The ML model uses the pressure signals recorded by a sensor network as input, providing a classification of the race-tracking event from a set of possible scenarios, and a subsequent variable regression for their position, size and strength. Such a model is based on the residual network (ResNet), a well-known artificial intelligence architecture that makes use of convolutional neural networks for image recognition. Training of the ML classifier and regressors was carried out with the aid of a synthetically generated simulation data set obtained throughout computational fluid dynamics simulations. The time evolution of the pressure sensors was used as grey-level images, or footprints, as inputs to the ResNet ML. The trained model was able to recognise the presence of race-tracking channels from the pressure data yielding good accuracy in terms of label prediction as well as position, size and strength. The model correlation was carried out with a set of injection experiments performed with a constant thickness closed mould containing induced race-tracking channels. The ability of ML models to provide an approximation to the inverse problem, relating the pressure sensor distortions to the cause of such events, is analysed and discussed.

Topics & Concepts

Artificial intelligenceConvolutional neural networkArtificial neural networkClassifier (UML)Extreme learning machineComputer scienceTracking (education)ResidualPattern recognition (psychology)Machine learningAlgorithmPedagogyPsychologyInjection Molding Process and PropertiesEpoxy Resin Curing ProcessesAdditive Manufacturing and 3D Printing Technologies