Valeria Cavanni
Transfer Learning between Full-Scale Structure Health Monitoring Systems: Application to Oval Masonry Domes.
Rel. Rosario Ceravolo, Giorgia Coletta, Gaetano Miraglia, Linda Scussolini. Politecnico di Torino, Master of science program in Civil Engineering, 2023
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Abstract
Structural Health Monitoring (SHM) is a powerful instrument used by engineers to analyze the actual condition of the structure under observation. The data that can be obtained with SHM systems, whether static or dynamic, are many and, as a result, are difficult to manage by hand. For this reason, researchers in recent years have increasingly begun to work with artificial intelligence (AI) for data processing and interpretation. AI attempts to replicate the logical flow of a human being but, unlike a human, it can process much more data and much faster. Various algorithms, such as Machine Learning (ML) algorithms and Transfer Learning (TL) algorithms have already been introduced in the processing of monitoring data.
However, these algorithms require as input a labelled dataset, this means that at each data is necessary to associate a label that define the structural conditions (e.g., ‘damaged’ or ‘undamaged’), this is the learning process of the algorithm
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