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  4. Transferability of ANN-generated parameter sets from welding tracks to 3D-geometries in Directed Energy Deposition
 
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November 4, 2022
Journal Article
Title

Transferability of ANN-generated parameter sets from welding tracks to 3D-geometries in Directed Energy Deposition

Abstract
Directed energy deposition (DED) has been in industrial use as a coating process for many years. Modern applications include the repair of existing components and additive manufacturing. The main advantages of DED are high deposition rates and low energy input. However, the process is influenced by a variety of parameters affecting the component quality. Artificial neural networks (ANNs) offer the possibility of mapping complex processes such as DED. They can serve as a tool for predicting optimal process parameters and quality characteristics. Previous research only refers to weld beads: a transferability to additively manufactured three-dimensional components has not been investigated. In the context of this work, an ANN is generated based on 86 weld beads. Quality categories (poor, medium, and good) are chosen as target variables to combine several quality features. The applicability of this categorization compared to conventional characteristics is discussed in detail. The ANN predicts the quality category of weld beads with an average accuracy of 81.5%. Two randomly generated parameter sets predicted as “good” by the network are then used to build tracks, coatings, walls, and cubes. It is shown that ANN trained with weld beads are suitable for complex parameter predictions in a limited way.
Author(s)
Marko, Angelina
Technische Universität Berlin  
Bähring, Stefan
Fraunhofer-Institut für Produktionsanlagen und Konstruktionstechnik IPK  
Raute, Maximilian Julius
Fraunhofer-Institut für Produktionsanlagen und Konstruktionstechnik IPK  
Biegler, Max  
Fraunhofer-Institut für Produktionsanlagen und Konstruktionstechnik IPK  
Rethmeier, Michael  
Fraunhofer-Institut für Produktionsanlagen und Konstruktionstechnik IPK  
Journal
MP materials testing  
Project(s)
Certify as you build - Quality assurance for the directed energy deposition
Funder
Bundesministerium für Wirtschaft und Klimaschutz
DOI
10.1515/mt-2022-0054
Language
English
Fraunhofer-Institut für Produktionsanlagen und Konstruktionstechnik IPK  
Keyword(s)
  • additive manufacturing

  • welding parameter

  • DED

  • quality assurance

  • artificial neural network

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