PSI - Issue 64
Mohammad Shamim Miah et al. / Procedia Structural Integrity 64 (2024) 476–483
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8 M.S. Miah and W. Lienhart / Structural Integrity Procedia 00 (2024) 000–000 approach may not only can assist the current dynamics but also can provide a possible unseen scenario (e.g. forecasting). This approach has obvious benefits both in research and practical applications e.g. physical site visit can be reduced. In a nutshell, the outcome of this study shows that the developed model is capable of render the true dynamics of the original data effectively. And further the model’s forecasting performances shows that such information can be very useful to make an prejudgement. However, further studies are needed as the time-series data are input depended, hence, different inputs mean different data which requires more study to have better understanding of the data based models. Acknowledgements Authors appreciate the research supports and facilities provided by the Graz University of Technology (TU Graz), Austria. Swider, A., Langseth, H., Pedersen, E., 2019. 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