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Sensory methods and machine learning based damage identification of fibre-reinforced composite structures: An introductory review

期刊

JOURNAL OF REINFORCED PLASTICS AND COMPOSITES
卷 42, 期 21-22, 页码 1119-1146

出版社

SAGE PUBLICATIONS LTD
DOI: 10.1177/07316844221145972

关键词

Structural health monitoring; composite structures; failure mechanisms; machine learning; damage identification

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This paper presents the state-of-the-art sensory methods and deep learning techniques for fibre-reinforced polymer composite structures and emphasizes the future directions for developing novel SHM systems.
Fibre-reinforced composite materials are extensively used for manufacturing critical engineering components in diverse applications, which demands intelligent and reliable structural health monitoring (SHM) schemes to prevent catastrophic failures associated with composite structures. Composite materials have complex failure mechanisms, and it is essential to employ reliable SHM methods with high accuracy to detect damages at the incipient stage. Although there are several SHM technologies available, no single strategy is impeccable for tackling all damage types due to the incredibly complex failure mechanisms of the composite materials. Machine learning (ML) methods are frequently integrated to compensate for the limitations of the traditional SHM methods. This paper presents the state-of-the-art sensory methods and deep learning (DL) techniques while emphasizing the future directions for the engineering and scientific community interested in developing novel SHM systems for fibre-reinforced polymer composite structures intended for civil, aerospace, automotive, marine, oil and gas exploration industries.

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