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Naji, M. |
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Motta, Antonella |
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Aletan, Dirar |
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Mohamed, Tarek |
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Ertürk, Emre |
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Taccardi, Nicola |
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Kononenko, Denys |
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Petrov, R. H. | Madrid |
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Alshaaer, Mazen | Brussels |
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Bih, L. |
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Casati, R. |
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Muller, Hermance |
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Kočí, Jan | Prague |
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Šuljagić, Marija |
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Kalteremidou, Kalliopi-Artemi | Brussels |
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Azam, Siraj |
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Ospanova, Alyiya |
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Blanpain, Bart |
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Ali, M. A. |
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Popa, V. |
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Rančić, M. |
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Ollier, Nadège |
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Azevedo, Nuno Monteiro |
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Landes, Michael |
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Rignanese, Gian-Marco |
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Volk, Wolfram
in Cooperation with on an Cooperation-Score of 37%
Topics
Publications (43/43 displayed)
- 2024Requirement-specific Adjustment ofResidual Stresses During Cold Extrusion
- 2024Influence of Equal-Channel Angular Pressing on the Microstructure and Texture of Mg-Zn-Y-Zr-RE Alloy Sheets
- 2024Machine learning-based sampling of virtual experiments within the full stress statecitations
- 2024Impact of Scrap Impurities on AlSi7Cu0.5Mg Alloy Flowability Using Established Testing Methodscitations
- 2024Dual-Alloy Sand Mold Casting: Main Principles and Features
- 2024Continuous Casting with Mid-Process Alloying: An Experimental Study on the Importance of Inlet Positioning
- 2024Determination of the onset of yielding and the Young’s modulus after a change in the loading direction
- 2024Sintering of 3D-printed aluminum specimens from the slurry-based binder jetting processcitations
- 2024New test rig for biaxial and plane strain states on uniaxial testing machines
- 2024In-situ synchrotron diffraction analysis of deformation mechanisms in an AA5083 sheet metal processed by modified equal-channel angular pressing
- 2023Predicting the local solidification time using spherical neural networks
- 2023Investigation of Multi-Material Liquid Metal Jetting with copper materials
- 2023Softsensors: key component of property control in forming technologycitations
- 2023Establishing Equal-Channel Angular Pressing (ECAP) for sheet metals by using backpressure: manufacturing of high-strength aluminum AA5083 sheetscitations
- 2023Analysis of the melting and solidification process of aluminum in a mirror furnace using Fiber-Bragg-Grating and numerical modelscitations
- 2022Reduction of adhesive wear with use of tool coating reducing thermoelectric currentscitations
- 2022In-situ analysis of the elastic-plastic characteristics of high strength dual-phase steelcitations
- 2022Influence of Sheet Metal Pre-forming on Edge Crack Sensitivity using an AHSS Steel Gradecitations
- 2022In-situ analysis of the thermoelastic effect and its relation to the onset of yielding of low carbon steelcitations
- 2022A Novel Method for the Determination of High Temperature FLCs of ECAP-Processed Aluminum AA5083 Sheet Metalcitations
- 2022Influence of Sheet Metal Pre-forming on Edge Crack Sensitivity using an AHSS Steel Gradecitations
- 2021Co-extrusion of compound-cast AA7075/6060 bilayer billets at various temperatures
- 2021Homogenization of the interfacial bonding of compound-cast AA7075/6060 bilayer billets by co-extrusioncitations
- 2021A Method for Characterising the Influence of Casting Parameters on the Metallurgical Bonding of Copper and Steel Bimetalscitations
- 2021Analysis of salts for use as support structure in metal material jettingcitations
- 2021Feasibility of Acoustic Print Head Monitoring for Binder Jetting Processes with Artificial Neural Networkscitations
- 2021Influence of Salt Support Structures on Material Jetted Aluminum Partscitations
- 2021Characterization of Slurry-Cast Layer Compounds for 3D Printing of High Strength Casting Corescitations
- 2020Production of aluminum AA7075/6060 compounds by die casting and hot extrusioncitations
- 2020Lubricant-free forming by affecting thermoelectric currents
- 2019Thermal Analysis and Production of As-Cast Al 7075/6060 Bilayer Billetscitations
- 2017Adaptive wear model for shear-cutting simulation with open cutting linecitations
- 2016Analysis of shear cutting of dual phase steel by application of an advanced damage modelcitations
- 2015Joining Aluminium Alloy and Mild Steel Sheets by Roller Clinchingcitations
- 2014Carbon nanotubes–reinforced copper matrix composites produced by melt stirringcitations
- 2014Simulation assisted analysis of material flow in roller clinched jointscitations
- 2014Development of a Continuous Composite Casting Process for the Production of Bilayer Aluminium Stripscitations
- 2013Carbon nanotubes–reinforced copper matrix composites produced by melt stirringcitations
- 2013In-situ measurement of phase transformation kinetics in austempered ductile ironcitations
- 2013Anisotropic plasticity model coupled with strain dependent plastic strain and stress ratioscitations
- 2012Forming and Shearing of Magnesium
- 2011Evaluation of Experimental Forming Limit Curves and Investigation of Strain Rate Sensitivity for the Start of Local Neckingcitations
- 2010Model adaptivity for industrial application of sheet metal forming simulationcitations
Places of action
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article
Predicting the local solidification time using spherical neural networks
Abstract
<jats:title>Abstract</jats:title><jats:p>Castings are predestined for the application of structural optimization, but to date, the integration of process simulation into structural optimization is limited due to high computational cost and is therefore often neglected at the beginning of the design process. This leads to the need for surrogate models, which allow a fast and simplified evaluation of design proposals during the optimization in order to improve the integration. This article introduces a novel approach that estimates the solidification time of randomly created geometries solely based on the casting geometry. The approach uses ray-tracing methods to calculate the distance function along preset directions. The estimated solidification time is calculated using a Spherical Convolutional Neural Network (CNN). The training data is obtained by several thousand solidification simulations using the optimization toolkit of a commercial casting simulation software combined with further data augmentation. The model is experimentally validated for five different geometries in the sand casting process.</jats:p>