Data Mining for Mesoscopic Simulation of Electron Beam Selective Melting

In the electron beam selective melting (EBSM) process, the quality of each deposited melt track has an effect on the properties of the manufactured component. However, the formation of the melt track is governed by various physical phenomena and influenced by various process parameters, and the corr...

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Main Authors: Ya Qian, Wentao Yan, Feng Lin
Format: Article
Language:English
Published: Elsevier 2019-08-01
Series:Engineering
Online Access:http://www.sciencedirect.com/science/article/pii/S2095809919300578
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spelling doaj-5af4976518d64cab85360ce246bb2fa62020-11-24T21:44:14ZengElsevierEngineering2095-80992019-08-0154746754Data Mining for Mesoscopic Simulation of Electron Beam Selective MeltingYa Qian0Wentao Yan1Feng Lin2Department of Mechanical Engineering, Tsinghua University, Beijing 100084, China; Biomanufacturing and Rapid Forming Technology Key Laboratory of Beijing, Tsinghua University, Beijing 100084, ChinaDepartment of Mechanical Engineering, National University of Singapore, Singapore 117576, SingaporeDepartment of Mechanical Engineering, Tsinghua University, Beijing 100084, China; Biomanufacturing and Rapid Forming Technology Key Laboratory of Beijing, Tsinghua University, Beijing 100084, China; Corresponding author.In the electron beam selective melting (EBSM) process, the quality of each deposited melt track has an effect on the properties of the manufactured component. However, the formation of the melt track is governed by various physical phenomena and influenced by various process parameters, and the correlation of these parameters is complicated and difficult to establish experimentally. The mesoscopic modeling technique was recently introduced as a means of simulating the electron beam (EB) melting process and revealing the formation mechanisms of specific melt track morphologies. However, the correlation between the process parameters and the melt track features has not yet been quantitatively understood. This paper investigates the morphological features of the melt track from the results of mesoscopic simulation, while introducing key descriptive indexes such as melt track width and height in order to numerically assess the deposition quality. The effects of various processing parameters are also quantitatively investigated, and the correlation between the processing conditions and the melt track features is thereby derived. Finally, a simulation-driven optimization framework consisting of mesoscopic modeling and data mining is proposed, and its potential and limitations are discussed. Keywords: Electron beam selective melting, Mesoscopic modeling, Data mininghttp://www.sciencedirect.com/science/article/pii/S2095809919300578
collection DOAJ
language English
format Article
sources DOAJ
author Ya Qian
Wentao Yan
Feng Lin
spellingShingle Ya Qian
Wentao Yan
Feng Lin
Data Mining for Mesoscopic Simulation of Electron Beam Selective Melting
Engineering
author_facet Ya Qian
Wentao Yan
Feng Lin
author_sort Ya Qian
title Data Mining for Mesoscopic Simulation of Electron Beam Selective Melting
title_short Data Mining for Mesoscopic Simulation of Electron Beam Selective Melting
title_full Data Mining for Mesoscopic Simulation of Electron Beam Selective Melting
title_fullStr Data Mining for Mesoscopic Simulation of Electron Beam Selective Melting
title_full_unstemmed Data Mining for Mesoscopic Simulation of Electron Beam Selective Melting
title_sort data mining for mesoscopic simulation of electron beam selective melting
publisher Elsevier
series Engineering
issn 2095-8099
publishDate 2019-08-01
description In the electron beam selective melting (EBSM) process, the quality of each deposited melt track has an effect on the properties of the manufactured component. However, the formation of the melt track is governed by various physical phenomena and influenced by various process parameters, and the correlation of these parameters is complicated and difficult to establish experimentally. The mesoscopic modeling technique was recently introduced as a means of simulating the electron beam (EB) melting process and revealing the formation mechanisms of specific melt track morphologies. However, the correlation between the process parameters and the melt track features has not yet been quantitatively understood. This paper investigates the morphological features of the melt track from the results of mesoscopic simulation, while introducing key descriptive indexes such as melt track width and height in order to numerically assess the deposition quality. The effects of various processing parameters are also quantitatively investigated, and the correlation between the processing conditions and the melt track features is thereby derived. Finally, a simulation-driven optimization framework consisting of mesoscopic modeling and data mining is proposed, and its potential and limitations are discussed. Keywords: Electron beam selective melting, Mesoscopic modeling, Data mining
url http://www.sciencedirect.com/science/article/pii/S2095809919300578
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AT wentaoyan dataminingformesoscopicsimulationofelectronbeamselectivemelting
AT fenglin dataminingformesoscopicsimulationofelectronbeamselectivemelting
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