The effect of X-ray computed tomography scan parameters on porosity assessment of carbon fibre reinfored plastics laminates

被引:8
作者
Galvez-Hernandez, Pedro [1 ]
Smith, Ronan [2 ]
Gaska, Karolina [1 ]
Mavrogordato, Mark [2 ]
Sinclair, Ian [2 ]
Kratz, James [1 ,3 ]
机构
[1] Univ Bristol, Bristol Composites Inst, Bristol, England
[2] Univ Southampton, Dept Mech Engn, Southampton, England
[3] Univ Bristol, Bristol Composites Inst, Queens Bldg, Bristol BS8 1TR, England
基金
英国工程与自然科学研究理事会;
关键词
Polymer-matrix composites; porosity; X-ray; image segmentation; VOIDS; CT;
D O I
10.1177/00219983231209383
中图分类号
TB33 [复合材料];
学科分类号
摘要
Combinations of X-ray Computed Tomography (XCT) scan times, from 30 s to 60 min, and voxel sizes, from 6 to 50 mu m, were investigated for their effect on the porosity measurements of a unidirectional carbon fibre epoxy composite volume. The sample had a total void volume of around 2%, which is typical of the tolerance expected in the aerospace industry. The volume contained localised voids that create sub-volumes with representative high (5%) and low (1%) porosity regions. The ability to detect small-size voids in the lower porosity regions decreased as the voxel size increased. Scan resolutions above 25 mu m resulted in a coarser segmentation and overestimation of the porosity due to the presence of partial volume effects. Scan times shorter than 2 min resulted in noisy images, requiring aggressive filtering that affected the segmentation of voids. Porosity segmentation was performed by thresholding and Deep Learning methods. Deep Learning segmentation was found to recognise noise better, providing more consistent and cleaner segmented data than thresholding. To capture micro-voids that contribute to porosity levels at the typical aerospace tolerance of 2%, scan parameters with a voxel size equal to or smaller than 25 mu m, scan times of 2 to 8 min, and deep learning segmentation were found to be the most promising. These shorter scan times can be used to increase the productivity of CT scanning for porosity or observing time-resolved events. The data provided here contributes to the body of knowledge studying X-ray hardware settings and optimising image segmentation.
引用
收藏
页码:4535 / 4548
页数:14
相关论文
共 41 条
[1]  
Abadi Martin, 2016, arXiv
[2]  
[Anonymous], 2021, DRAG 2021 3 1
[3]   Automated segmentation of computed tomography images of fiber-reinforced composites by deep learning [J].
Badran, Aly ;
Marshall, David ;
Legault, Zacharie ;
Makovetsky, Ruslana ;
Provencher, Benjamin ;
Piche, Nicolas ;
Marsh, Mike .
JOURNAL OF MATERIALS SCIENCE, 2020, 55 (34) :16273-16289
[4]   Evaluating conventional and deep learning segmentation for fast X-ray CT porosity measurements of polymer laser sintered AM parts [J].
Bellens, Simon ;
Probst, Gabriel M. ;
Janssens, Michel ;
Vandewalle, Patrick ;
Dewulf, Wim .
POLYMER TESTING, 2022, 110
[5]   A Modular U-Net for Automated Segmentation of X-Ray Tomography Images in Composite Materials [J].
Bertoldo, Joao P. C. ;
Decenciere, Etienne ;
Ryckelynck, David ;
Proudhon, Henry .
FRONTIERS IN MATERIALS, 2021, 8
[6]   Partial volume correction for approximating crack opening displacements in CFRP material obtained from micro-focus X-ray CT scans [J].
Bull, D. J. ;
Sinclair, I. ;
Spearing, S. M. .
COMPOSITES SCIENCE AND TECHNOLOGY, 2013, 81 :9-16
[7]   Measuring the impregnation of an out-of-autoclave prepreg by micro-CT [J].
Centea, T. ;
Hubert, P. .
COMPOSITES SCIENCE AND TECHNOLOGY, 2011, 71 (05) :593-599
[8]   A reusable neural network pipeline for unidirectional fiber segmentation [J].
de Siqueira, Alexandre Fioravante ;
Ushizima, Daniela M. ;
van der Walt, Stefan J. .
SCIENTIFIC DATA, 2022, 9 (01)
[9]   Inspection of Carbon Fibre Reinforced Polymers: 3D identification and quantification of components by X-ray CT [J].
Dilonardo, E. ;
Nacucchi, M. ;
De Pascalis, F. ;
Zarrelli, M. ;
Giannini, C. .
APPLIED COMPOSITE MATERIALS, 2022, 29 (02) :497-513
[10]   High resolution X-ray computed tomography: A versatile non-destructive tool to characterize CFRP-based aircraft composite elements [J].
Dilonardo, Elena ;
Nacucchi, Michele ;
De Pascalis, Fabio ;
Zarrelli, Mauro ;
Giannini, Cinzia .
COMPOSITES SCIENCE AND TECHNOLOGY, 2020, 192