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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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Kratz, James
University of Bristol
in Cooperation with on an Cooperation-Score of 37%
Topics
Publications (46/46 displayed)
- 2024Effect of pre-curing on thermoplastic-thermoset interphasescitations
- 2024Microstructural analysis of unidirectional composites: a comparison of data reduction schemes
- 2024CFRP layer-by-layer curing using research-based automated deposition systemcitations
- 2024Effects of accelerated curing in thermoplastic particle interleaf epoxy laminatescitations
- 2024Annotator bias and its effect on deep learning segmentation of uncured composite micrographs
- 2024The effect of semi-curing on neat resin mode I fracture propertiescitations
- 2024Optimization and mechanical response of modular infusion compaction and normalization
- 2023A Feasibility Study for Additively Manufactured Composite Tooling
- 2023Effects of heat transfer coefficient variations on composite curingcitations
- 2023Automatic process control of an automated fibre placement machinecitations
- 2023Additively manufactured cure tools for composites manufacturecitations
- 2023In-situ defect detection and correction using real time automated fibre placement
- 2023The influence of key processing parameters on thermoset laminate curingcitations
- 2023The effect of convolutional neural network architectures on phase segmentation of composite material X-ray micrographscitations
- 2022Large Scale Forming of Non-Crimp Fabrics for Aerostructurescitations
- 2022Effects of heat transfer coefficient variations on composite curingcitations
- 2022The Effect of Process Parameters on First Ply Deposition in Automated Fibre Placementcitations
- 2022Tracking consolidation of out-of-autoclave prepreg corners using pressure sensorscitations
- 2022A FEASIBILITY STUDY OF ADDITIVELY MANUFACTURED COMPOSITE TOOLING
- 2021Modelling compaction behavior of toughened prepreg during automated fibre placement
- 2021Lab-based in-situ micro-CT observation of gaps in prepreg laminates during consolidation and curecitations
- 2020Predicting consolidation-induced wrinkles and their effects on composites structural performancecitations
- 2020Experimental characterisation of the in-plane shear behaviour of UD thermoset prepregs under processing conditionscitations
- 2019Modelling of the in-plane shear behavior of uncured thermoset prepreg
- 2019Heat transfer simulation of the cure of thermoplastic particle interleaf carbon fibre epoxy prepregscitations
- 2018Experimental Characterisation of In-plane Shear Behaviour of Uncured Thermoset Prepregs
- 2018Experimental and numerical investigation of full scale impact test on fibre-reinforced plastic sandwich structure for automotive crashworthiness
- 2018Out-of-Autoclave Prepreg Processingcitations
- 2017Improvement of the in-plane crushing response of CFRP sandwich panels by through-thickness reinforcementscitations
- 2017Resource-friendly carbon fiber compositescitations
- 2017An experimental technique to characterize interply void formation in unidirectional prepregscitations
- 2017Resource-friendly carbon fiber composites:combining production waste with virgin feedstockcitations
- 2017Void modelling and virtual testing of prepreg materials from 3D image capture
- 2017Tracking the evolution of a defect, characteristic of AFP layup, during cure with in-process micro-CT scanning
- 2016Predicting wrinkle formation in components manufactured from toughened UD prepreg
- 2016Reclaiming in-process composite waste for use in energy absorbing sandwich structures
- 2016Understanding and prediction of fibre waviness defect generation
- 2016Developing cure kinetics models for interleaf particle toughened epoxies
- 2016Visualising process induced variations in the manufacture of tufted sandwich panels
- 2015Towards the development of an instrumented test bed for tufting visualisation
- 2014Vacuum-bag-only prepreg processing of honeycomb structures
- 2014Vacuum-Bag Manufacturing of Honeycomb Structures
- 2014Vacuum-bag-only prepreg processing of honeycomb structures:From lab-scale experiments to an aircraft demonstrator
- 2013Thermal models for MTM45-1 and Cycom 5320 out-of-autoclave prepreg resinscitations
- 2013Anisotropic air permeability in out-of-autoclave prepregscitations
- 2010Out-of-autoclave honeycomb structures
Places of action
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article
Effects of heat transfer coefficient variations on composite curing
Abstract
Curing of composite laminates in a vessel was investigated in this study. The environment inside the processing vessel dictates the efficiency and ultimately drives the quality of thermoset composite parts. Experimental measurements of spatial heat transfer coefficients were conducted on industrial scale vessels, including autoclaves and large ovens, which ultimately drives the quality of thermoset composite parts. The final part quality was investigated using the experimental data as input to a coupled heat transfer and curing model. Measurements showed that heat transfer coefficients in autoclaves were greater in magnitude and spatial variability. The distribution in the autoclaves followed a pattern common in the literature, in contrast to that in the ovens which varied considerably between devices. Numerical predictions indicated autoclave measured heat transfer coefficients provide less lag to the imposed temperature history and smaller temperature overshoots. However, the greater robustness to variability at autoclave heat transfer coefficients was offset by the greater variability, resulting in comparable robustness across the ovens and autoclaves.