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Structural damage detection using low-rank matrix approximation and cointegration analysis — Mingqiang Xu (2022) | RDL Network
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Structural damage detection using low-rank matrix approximation and cointegration analysis
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Jun Li
Curtin University
Structural damage detection using low-rank matrix approximation and cointegration analysis
Article
2022
en
Authors
+4 more
MX
Mingqiang Xu
WW
Wenkai Wu
Jun Li
Curtin University
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