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Predicting the Printability in Selective Laser Melting with a Supervised Machine Learning Method

Yingyan Chen, Hongze Wang, Hongze Wang, Yi Wu, Haowei Wang, Haowei Wang

2020Materials47 citationsDOIOpen Access PDF

Abstract

Though selective laser melting (SLM) has a rapidly increasing market these years, the quality of the SLM-fabricated part is extremely dependent on the process parameters. However, the current metallographic examination method to find the parameter window is time-consuming and involves subjective assessments of the experimenters. Here, we proposed a supervised machine learning (ML) method to detect the track defect and predict the printability of material in SLM intelligently. The printed tracks were classified into five types based on the measured surface morphologies and characteristics. The classification results were used as the target output of the ML model. Four indicators had been calculated to evaluate the quality of the tracks quantitatively, serving as input variables of the model. The data-driven model can determine the defect-free process parameter combination, which significantly improves the efficiency in searching the process parameter window and has great potential for the application in the unmanned factory in the future.

Topics & Concepts

Selective laser meltingProcess windowProcess (computing)Factory (object-oriented programming)Computer scienceProcess variableArtificial intelligenceQuality (philosophy)Materials scienceMachine learningSliding window protocolWindow (computing)Process engineeringBiological systemComposite materialEngineeringEpistemologyOperating systemBiologyProgramming languageMicrostructurePhilosophyAdditive Manufacturing Materials and ProcessesAdditive Manufacturing and 3D Printing TechnologiesWelding Techniques and Residual Stresses
Predicting the Printability in Selective Laser Melting with a Supervised Machine Learning Method | Litcius