Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)

Multi-material jetting (CerAM MMJ, previously T3DP) enables the additive manufacturing of ceramics, metals, glass and hardmetals, demonstrating comparatively high solid contents of the processed materials. The material is applied drop by drop onto a substrate. The droplets can be adapted to the comp...

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Main Authors: Valentin Lang, Steven Weingarten, Hajo Wiemer, Uwe Scheithauer, Felix Glausch, Robert Johne, Alexander Michaelis, Steffen Ihlenfeldt
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Journal of Manufacturing and Materials Processing
Subjects:
Online Access:https://www.mdpi.com/2504-4494/4/3/74
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spelling doaj-f5c3afc34ba54d2a92c9ebee21f966612020-11-25T02:56:02ZengMDPI AGJournal of Manufacturing and Materials Processing2504-44942020-07-014747410.3390/jmmp4030074Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)Valentin Lang0Steven Weingarten1Hajo Wiemer2Uwe Scheithauer3Felix Glausch4Robert Johne5Alexander Michaelis6Steffen Ihlenfeldt7Institute of Mechatronic Engineering, Technische Universität Dresden, 01069 Dresden, GermanyFraunhofer Institute for Ceramic Technologies and Systems IKTS, 01277 Dresden, GermanyInstitute of Mechatronic Engineering, Technische Universität Dresden, 01069 Dresden, GermanyFraunhofer Institute for Ceramic Technologies and Systems IKTS, 01277 Dresden, GermanyInstitute of Mechatronic Engineering, Technische Universität Dresden, 01069 Dresden, GermanyFraunhofer Singapore, Singapore 639798, SingaporeFraunhofer Institute for Ceramic Technologies and Systems IKTS, 01277 Dresden, GermanyInstitute of Mechatronic Engineering, Technische Universität Dresden, 01069 Dresden, GermanyMulti-material jetting (CerAM MMJ, previously T3DP) enables the additive manufacturing of ceramics, metals, glass and hardmetals, demonstrating comparatively high solid contents of the processed materials. The material is applied drop by drop onto a substrate. The droplets can be adapted to the component to be produced by a large degree of freedom in parameterization. Thus, large volumes can be processed quickly and fine structures can be displayed in detail, based on the droplet size. Data-driven methods are applied to build process knowledge and to contribute to the optimization of CerAM MMJ manufacturing processes. As a basis for the computational exploitation of mass sensor data from the technological process chain for manufacturing a component with CerAM MMJ, a data management plan was developed with the help of an engineering workflow. Focusing on the process step of green part production, droplet structures as intermediate products of 3D generation were described by means of droplet height, droplet circularity, the number of ambient satellite particles, as well as the associated standard deviations. First of all, the weighting of the factors influencing the droplet geometry was determined by means of single factor preliminary tests, in order to be able to reduce the number of factors to be considered in the detailed test series. The identification of key influences (falling time, needle lift, rising time, air supply pressure) permitted an optimization of the droplet geometry according to the introduced target characteristics by means of a design of experiments.https://www.mdpi.com/2504-4494/4/3/74data managementadditive manufacturingceramicsmulti-material jettingdesign of experiments
collection DOAJ
language English
format Article
sources DOAJ
author Valentin Lang
Steven Weingarten
Hajo Wiemer
Uwe Scheithauer
Felix Glausch
Robert Johne
Alexander Michaelis
Steffen Ihlenfeldt
spellingShingle Valentin Lang
Steven Weingarten
Hajo Wiemer
Uwe Scheithauer
Felix Glausch
Robert Johne
Alexander Michaelis
Steffen Ihlenfeldt
Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)
Journal of Manufacturing and Materials Processing
data management
additive manufacturing
ceramics
multi-material jetting
design of experiments
author_facet Valentin Lang
Steven Weingarten
Hajo Wiemer
Uwe Scheithauer
Felix Glausch
Robert Johne
Alexander Michaelis
Steffen Ihlenfeldt
author_sort Valentin Lang
title Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)
title_short Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)
title_full Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)
title_fullStr Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)
title_full_unstemmed Process Data-Based Knowledge Discovery in Additive Manufacturing of Ceramic Materials by Multi-Material Jetting (CerAM MMJ)
title_sort process data-based knowledge discovery in additive manufacturing of ceramic materials by multi-material jetting (ceram mmj)
publisher MDPI AG
series Journal of Manufacturing and Materials Processing
issn 2504-4494
publishDate 2020-07-01
description Multi-material jetting (CerAM MMJ, previously T3DP) enables the additive manufacturing of ceramics, metals, glass and hardmetals, demonstrating comparatively high solid contents of the processed materials. The material is applied drop by drop onto a substrate. The droplets can be adapted to the component to be produced by a large degree of freedom in parameterization. Thus, large volumes can be processed quickly and fine structures can be displayed in detail, based on the droplet size. Data-driven methods are applied to build process knowledge and to contribute to the optimization of CerAM MMJ manufacturing processes. As a basis for the computational exploitation of mass sensor data from the technological process chain for manufacturing a component with CerAM MMJ, a data management plan was developed with the help of an engineering workflow. Focusing on the process step of green part production, droplet structures as intermediate products of 3D generation were described by means of droplet height, droplet circularity, the number of ambient satellite particles, as well as the associated standard deviations. First of all, the weighting of the factors influencing the droplet geometry was determined by means of single factor preliminary tests, in order to be able to reduce the number of factors to be considered in the detailed test series. The identification of key influences (falling time, needle lift, rising time, air supply pressure) permitted an optimization of the droplet geometry according to the introduced target characteristics by means of a design of experiments.
topic data management
additive manufacturing
ceramics
multi-material jetting
design of experiments
url https://www.mdpi.com/2504-4494/4/3/74
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