Acknowledgement
Our team was awarded the 1st prize in the 1st International Project Competition for Structural Health Monitoring (IPC-SHM 2020) for the work presented in this paper. The authors appreciate the essential support from the organizing committee of IPC-SHM 2020 during this competition. More information about this competition can be found in Bao et al. (2021), IPC. Additionally, the authors would like to acknowledge the assistance from Mr. Nan Xu, a graduate research assistant at Arizona State University, in visualizing the time series data using the manifold learning method.
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