Modelling of powder die compaction for press cycle optimization

A new electromechanical press for fuel pellet manufacturing was built last year in partnership between CEA-Marcoule and ChampalleAlcen. This press was developed to shape pellets in a hot cell via remote handling. It has been qualified to show its robustness and to optimize the compaction cycle, thus...

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Main Authors: Bayle Jean-Philippe, Reynaud Vincent, Gobin François, Brenneis Christophe, Tronche Eric, Ferry Cécile, Royet Vincent
Format: Article
Language:English
Published: EDP Sciences 2016-01-01
Series:EPJ Nuclear Sciences & Technologies
Online Access:http://dx.doi.org/10.1051/epjn/2016018
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spelling doaj-c72b1cf8115e4edd9c0cf4bd0a0268902021-02-02T02:21:43ZengEDP SciencesEPJ Nuclear Sciences & Technologies2491-92922016-01-0122510.1051/epjn/2016018epjn150052Modelling of powder die compaction for press cycle optimizationBayle Jean-PhilippeReynaud VincentGobin FrançoisBrenneis ChristopheTronche EricFerry CécileRoyet VincentA new electromechanical press for fuel pellet manufacturing was built last year in partnership between CEA-Marcoule and ChampalleAlcen. This press was developed to shape pellets in a hot cell via remote handling. It has been qualified to show its robustness and to optimize the compaction cycle, thus obtaining a better sintered pellet profile and limiting damage. We will show you how 400 annular pellets have been produced with good geometry's parameters, based on press settings management. These results are according to a good phenomenological pressing knowledge with Finite Element Modeling calculation. Therefore, during die pressing, a modification in the punch displacement sequence induces fluctuation in the axial distribution of frictional forces. The green pellet stress and density gradients are based on these frictional forces between powder and tool, and between grains in the powder, influencing the shape of the pellet after sintering. The pellet shape and diameter tolerances must be minimized to avoid the need for grinding operations. To find the best parameters for the press settings, which enable optimization, FEM calculations were used and different compaction models compared to give the best calculation/physical trial comparisons. These simulations were then used to predict the impact of different parameters when there is a change in the type of powder and the pellet size, or when the behavior of the press changes during the compaction time. In 2016, it is planned to set up the press in a glove box for UO2 manufacturing qualification based on our simulation methodology, before actual hot cell trials in the future.http://dx.doi.org/10.1051/epjn/2016018
collection DOAJ
language English
format Article
sources DOAJ
author Bayle Jean-Philippe
Reynaud Vincent
Gobin François
Brenneis Christophe
Tronche Eric
Ferry Cécile
Royet Vincent
spellingShingle Bayle Jean-Philippe
Reynaud Vincent
Gobin François
Brenneis Christophe
Tronche Eric
Ferry Cécile
Royet Vincent
Modelling of powder die compaction for press cycle optimization
EPJ Nuclear Sciences & Technologies
author_facet Bayle Jean-Philippe
Reynaud Vincent
Gobin François
Brenneis Christophe
Tronche Eric
Ferry Cécile
Royet Vincent
author_sort Bayle Jean-Philippe
title Modelling of powder die compaction for press cycle optimization
title_short Modelling of powder die compaction for press cycle optimization
title_full Modelling of powder die compaction for press cycle optimization
title_fullStr Modelling of powder die compaction for press cycle optimization
title_full_unstemmed Modelling of powder die compaction for press cycle optimization
title_sort modelling of powder die compaction for press cycle optimization
publisher EDP Sciences
series EPJ Nuclear Sciences & Technologies
issn 2491-9292
publishDate 2016-01-01
description A new electromechanical press for fuel pellet manufacturing was built last year in partnership between CEA-Marcoule and ChampalleAlcen. This press was developed to shape pellets in a hot cell via remote handling. It has been qualified to show its robustness and to optimize the compaction cycle, thus obtaining a better sintered pellet profile and limiting damage. We will show you how 400 annular pellets have been produced with good geometry's parameters, based on press settings management. These results are according to a good phenomenological pressing knowledge with Finite Element Modeling calculation. Therefore, during die pressing, a modification in the punch displacement sequence induces fluctuation in the axial distribution of frictional forces. The green pellet stress and density gradients are based on these frictional forces between powder and tool, and between grains in the powder, influencing the shape of the pellet after sintering. The pellet shape and diameter tolerances must be minimized to avoid the need for grinding operations. To find the best parameters for the press settings, which enable optimization, FEM calculations were used and different compaction models compared to give the best calculation/physical trial comparisons. These simulations were then used to predict the impact of different parameters when there is a change in the type of powder and the pellet size, or when the behavior of the press changes during the compaction time. In 2016, it is planned to set up the press in a glove box for UO2 manufacturing qualification based on our simulation methodology, before actual hot cell trials in the future.
url http://dx.doi.org/10.1051/epjn/2016018
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AT reynaudvincent modellingofpowderdiecompactionforpresscycleoptimization
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AT brenneischristophe modellingofpowderdiecompactionforpresscycleoptimization
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