Health Monitoring of Structural and Biological Systems XVIII 2024
DOI: 10.1117/12.3009904
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Parametric study on the accuracy of full-field reconstruction from sparse measurements using autoencoders

Nitin Nagesh Kulkarni,
Alessandro Sabato

Abstract: Full-field data provides a comprehensive understanding of the behavior of a system or structure, which is particularly crucial when identifying local damages. These damage may exhibit complex and subtle effects that could be overlooked with sparse measurements. Recent advancements in machine learning, such as autoencoders (AE), have enabled the reconstruction of full-field data using sparse measurements. However, a study assessing the accuracy of AE in reconstructing full-field data concerning measurement loca… Show more

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