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Selection of effective manufacturing conditions for directed energy deposition process using machine learning methods

Jong-Sup Lim, Won-Jung Oh, Choon-Man Lee, Dong-Hyeon Kim

2021Scientific Reports66 citationsDOIOpen Access PDF

Abstract

In the directed energy deposition (DED) process, significant empirical testing is required to select the optimal process parameters. In this study, single-track experiments were conducted using laser power and scan speed as parameters in the DED process for titanium alloys. The results of the experiment confirmed that the deposited surface color appeared differently depending on the process parameters. Cross-sectional view, hardness, microstructure, and component analyses were performed according to the color data, and a color suitable for additive manufacturing was selected. Random forest (RF) and support vector machine multi-classification models were constructed by collecting surface color data from a titanium alloy deposited on a single track; the accuracies of the multi-classification models were compared. Validation experiments were performed under conditions that each model predicted differently. According to the results of the validation experiments, the RF multi-classification model was the most accurate.

Topics & Concepts

Random forestSupport vector machineTitanium alloyComputer scienceProcess (computing)Deposition (geology)Artificial intelligenceMachine learningTrack (disk drive)Energy (signal processing)Materials scienceDesign of experimentsProcess engineeringAlloyMetallurgyMathematicsStatisticsEngineeringGeologyOperating systemPaleontologySedimentAdditive Manufacturing Materials and ProcessesWelding Techniques and Residual StressesHigh Entropy Alloys Studies
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