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Performance assessment of a bio-inspired anomaly detection algorithm for unsupervised SHM: application to a Manueline masonry church
Alberto Barontini; Maria Giovanna Masciotta; Paulo Amado-Mendes; Luís F. Ramos
International Journal of Masonry Research and Innovation (IJMRI), 2020 Vol.5 No.4, pp.468 - 496
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