journal article Mar 01, 2021

Subsurface damage detection and structural health monitoring using digital image correlation and topology optimization

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Published
Mar 01, 2021
Vol/Issue
230
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111712
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M.S. Dizaji, M. Alipour, D.K. Harris (2021). Subsurface damage detection and structural health monitoring using digital image correlation and topology optimization. Engineering Structures, 230, 111712. https://doi.org/10.1016/j.engstruct.2020.111712