journal article May 01, 2018

Quality assessment of porous CFRP specimens using X-ray Computed Tomography data and Artificial Neural Networks

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Cited By
62
Composite Structures
Metrics
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Citations
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Published
May 01, 2018
Vol/Issue
192
Pages
327-335
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Cite This Article
A.G. Stamopoulos, K.I. Tserpes, A.J. Dentsoras (2018). Quality assessment of porous CFRP specimens using X-ray Computed Tomography data and Artificial Neural Networks. Composite Structures, 192, 327-335. https://doi.org/10.1016/j.compstruct.2018.02.096
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