Title :
Machine-learning-based mechanical properties prediction in foundry production
Author :
Santos, Igor ; Nieves, Javier ; Penya, Yoseba K. ; Bringas, Pablo G.
Author_Institution :
S3Lab., Deusto Technol. Found., Bilbao, Spain
Abstract :
Ultimate tensile strength (UTS) is the force a material can resist until it breaks. The only way to examine this mechanical property is the employment of destructive inspections with the subsequent cost increment. Modelling the foundry process as an expert knowledge cloud allows properly-trained machine-learning algorithms to foresee the value of UTS. Extending previous research that presented outstanding results with a Bayesian-network-based approach, we have adapted an ANN and K-nearest-neighbour algorithm for the same objective. We compare the obtained results and show that artificial neural networks are more suitable than the rest of counterparts for the prediction of UTS.
Keywords :
belief networks; expert systems; foundries; inspection; neural nets; production engineering computing; tensile strength; ANN; Bayesian-network-based approach; K-nearest-neighbour algorithm; artificial neural networks; cost increment; destructive inspections; expert knowledge cloud; foundry process; foundry production; machine-learning algorithms; machine-learning-based mechanical properties prediction; ultimate tensile strength; Artificial neural networks; Bayesian methods; Clouds; Costs; Employment; Foundries; Inspection; Mechanical factors; Production; Resists; Machine learning; data mining; fault prediction;
Conference_Titel :
ICCAS-SICE, 2009
Conference_Location :
Fukuoka
Print_ISBN :
978-4-907764-34-0
Electronic_ISBN :
978-4-907764-33-3