Author:
Felix Sarah,Ray Majumder Saikat,Mathews H. Kirk,Lexa Michael,Lipsa Gabriel,Ping Xiaohu,Roychowdhury Subhrajit,Spears Thomas
Abstract
AbstractQuality control and quality assurance are challenges in direct metal laser melting (DMLM). Intermittent machine diagnostics and downstream part inspections catch problems after undue cost has been incurred processing defective parts. In this paper we demonstrate two methodologies for in-process fault detection and part quality prediction that leverage existing commercial DMLM systems with minimal hardware modification. Novel features were derived from the time series of common photodiode sensors along with standard machine control signals. In one methodology, a Bayesian approach attributes measurements to one of multiple process states as a means of classifying process deviations. In a second approach, a least squares regression model predicts severity of certain material defects.
Funder
Air Force Research Laboratory
Publisher
Springer Science and Business Media LLC
Cited by
14 articles.
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