Materials Map

Discover the materials research landscape. Find experts, partners, networks.

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The Materials Map is an open tool for improving networking and interdisciplinary exchange within materials research. It enables cross-database search for cooperation and network partners and discovering of the research landscape.

The dashboard provides detailed information about the selected scientist, e.g. publications. The dashboard can be filtered and shows the relationship to co-authors in different diagrams. In addition, a link is provided to find contact information.

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Materials Map under construction

The Materials Map is still under development. In its current state, it is only based on one single data source and, thus, incomplete and contains duplicates. We are working on incorporating new open data sources like ORCID to improve the quality and the timeliness of our data. We will update Materials Map as soon as possible and kindly ask for your patience.

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1.080 Topics available

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693.932 PEOPLE
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Klingaa, Christopher Gottlieb

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Danish Technological Institute

in Cooperation with on an Cooperation-Score of 37%

Topics

Publications (10/10 displayed)

  • 2023Corrosion surface morphology-based methodology for fatigue assessment of offshore welded structures4citations
  • 2022Evaluating the scalability of channels made by Binder Jetting and Laser Powder Bed Fusion using an X-ray CT and image analysis approachcitations
  • 2021Digital Twin of Additively Manufactured Components: Enabling Simulation-based Qualificationcitations
  • 2021Towards a digital twin of laser powder bed fusion with a focus on gas flow variables30citations
  • 2020Realistic design of laser powder bed fusion channels4citations
  • 2020Characterization of channels made by laser powder bed fusion and binder jetting using X-ray CT and image analysis42citations
  • 2020X-ray CT and image analysis methodology for local roughness characterization in cooling channels made by metal additive manufacturing48citations
  • 2019Roughness Investigation of SLM Manufactured Conformal Cooling Channels Using X-ray Computed Tomographycitations
  • 2019Numerical Modelling of Heat Transfer using the 3D-ADI-DG Method - with Application for Pultrusion.citations
  • 2019Build orientation effects on the roughness of SLM channelscitations

Places of action

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Afazov, Shukri
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Eder, Martin Alexander
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Siegkas, Petros
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Bodaghi, Mahdi
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Abrahamsen, Asger Bech
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Fæster, Søren
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Mansfield, Neil
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Okenyi, Victor
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Alphonso, Wayne Edgar
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Nadimpalli, Venkata Karthik
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Pedersen, David Bue
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Mohanty, Sankhya
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Hjermitslev, A. B.
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Haahr-Lillevang, L.
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Funch, Cecilie Vase
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Baier-Stegmaier, S.
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Dahmen, T.
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Lapina, A.
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Baier, S.
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Baier, Sina
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Chiffre, Leonardo De
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Bjerre, Mk
1 / 7 shared
Rasmussen, Filip Salling
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Sonne, Mads S.
1 / 19 shared
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2022
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Co-Authors (by relevance)

  • Afazov, Shukri
  • Eder, Martin Alexander
  • Siegkas, Petros
  • Bodaghi, Mahdi
  • Abrahamsen, Asger Bech
  • Fæster, Søren
  • Mansfield, Neil
  • Okenyi, Victor
  • Hattel, Jh
  • Baier-Stegmaier, Sina
  • Lapina, Alberto
  • Alphonso, Wayne Edgar
  • Dahmen, Thomas
  • Nadimpalli, Venkata Karthik
  • Pedersen, David Bue
  • Mohanty, Sankhya
  • Hjermitslev, A. B.
  • Haahr-Lillevang, L.
  • Funch, Cecilie Vase
  • Baier-Stegmaier, S.
  • Dahmen, T.
  • Lapina, A.
  • Baier, S.
  • Baier, Sina
  • Chiffre, Leonardo De
  • Bjerre, Mk
  • Rasmussen, Filip Salling
  • Sonne, Mads S.
OrganizationsLocationPeople

article

Towards a digital twin of laser powder bed fusion with a focus on gas flow variables

  • Klingaa, Christopher Gottlieb
  • Hattel, Jh
  • Mohanty, Sankhya
  • Hjermitslev, A. B.
  • Haahr-Lillevang, L.
  • Funch, Cecilie Vase
Abstract

Metal additive manufacturing is increasingly used as a complementary manufacturing technique in industrial settings and slowly moving from pure prototyping applications toward full production. In parallel, there is an emergence of Industry 4.0, where the applicability of concepts such as digital twins of manufacturing machines and components are being investigated. Compared to conventionally manufactured parts, typical quality metrics of metal additively manufactured components such as dimensions, roughness, porosity, and hardness are underperforming in an as-built state. As a mitigation strategy, the build chamber variables are often measured and logged by the metal additive manufacturing system to maintain a stable production environment. Thus, proper insight into the expected responses in part quality from changes in those build chamber variables is important in the pursuit of digital twins and process improvement. This sheds more light on the influence of the gas flow variables, namely gas flow speed, relative pressure, and oxygen content on the metal additive manufacturing quality metrics, specifically channel roughness, bulk porosity, average diameter, the equivalent diameter of the unobstructed cross-sectional area, and hardness of the bulk. A Design of Experiments was implemented on two laser powder bed fusion systems, namely an SLM 280 processing 316 L stainless steel and an SLM 500 processing Ti6Al4V. The current work found that surface oxidation of 316 L and Ti6Al4V components may be classified based on simple red, green, and blue (RGB) color constituent analysis. The influence of gas flow variables was found to be different in the two investigated SLM systems, suggesting a high dependency on the processed material. Oxygen content in the build chamber had the highest standalone effect on the selected quality metrics, while the gas flow speed had the lowest standalone effect. The second-order effects were found to be, in general, more significant than the main effects. The findings of the current work is a step towards an improved understanding of the interaction effects of gas flow conditions on typical quality metrics of metal additive manufactured components. By the creation of simple but computationally fast response surface models, in-line assessments may be carried out and the effect of process variability on component quality may be evaluated in-situ while being one step away from the full feedback control implementation in the digital twin. Following the methodology of the current work for other laser powder bed fusion systems enables the generation of 3D point cloud visualizations for decision making under uncertainty.

Topics
  • impedance spectroscopy
  • surface
  • stainless steel
  • experiment
  • Oxygen
  • hardness
  • selective laser melting
  • porosity
  • oxygen content