A machine learning approach for on-line fault recognition via automatic image processing is developed to timely identify material defects due to process non-conformities in Selective Laser Melting (SLM) of metal powders. In-process images acquired during the layer-by-layer SLM processing are analyzed via a bi-stream Deep Convolutional Neural Network-based model, and the recognition of SLM defective condition-related pattern is achieved by automated image feature learning and feature fusion. Experimental evaluations confirmed the effectiveness of the machine learning method for on-line detection of defects due to process non-conformities, providing the basis for adaptive SLM process control and part quality assurance.

Machine learning-based image processing for on-line defect recognition in additive manufacturing / Caggiano, A.; Zhang, J.; Alfieri, V.; Caiazzo, F.; Gao, R.; Teti, R.. - In: CIRP ANNALS. - ISSN 0007-8506. - 68:1(2019), pp. 451-454. [10.1016/j.cirp.2019.03.021]

Machine learning-based image processing for on-line defect recognition in additive manufacturing

Caggiano A.
;
Teti R.
2019

Abstract

A machine learning approach for on-line fault recognition via automatic image processing is developed to timely identify material defects due to process non-conformities in Selective Laser Melting (SLM) of metal powders. In-process images acquired during the layer-by-layer SLM processing are analyzed via a bi-stream Deep Convolutional Neural Network-based model, and the recognition of SLM defective condition-related pattern is achieved by automated image feature learning and feature fusion. Experimental evaluations confirmed the effectiveness of the machine learning method for on-line detection of defects due to process non-conformities, providing the basis for adaptive SLM process control and part quality assurance.
2019
Machine learning-based image processing for on-line defect recognition in additive manufacturing / Caggiano, A.; Zhang, J.; Alfieri, V.; Caiazzo, F.; Gao, R.; Teti, R.. - In: CIRP ANNALS. - ISSN 0007-8506. - 68:1(2019), pp. 451-454. [10.1016/j.cirp.2019.03.021]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/789687
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