2024
DOI: 10.1002/pc.28798
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Surface texture image classification of carbon/phenolic composites in extreme environments using deep learning

Tong Shang,
Jing Yang,
Jingran Ge
et al.

Abstract: The classification of ablation images holds significant practical value in thermal protection structures, as it enables the assessment of heat and corrosion resistance of composites. This paper proposes an image‐based deep learning framework to identify the surface texture of carbon/phenolic composites ablative images. First, ablation experiments and collection of surface texture images of carbon/phenolic composites under different thermal environments were conducted in an electric arc wind tunnel. Then, a dee… Show more

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