Université Blida 1

Predictive Fatigue Analysis Using Synthetic Data and Deep Learning Models

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dc.contributor.author Menia, Loubna
dc.contributor.author Mahi, Amale ( Promotrice)
dc.contributor.author Ykhlef, Faycal ( Co-Promoteur)
dc.date.accessioned 2026-01-07T10:30:20Z
dc.date.available 2026-01-07T10:30:20Z
dc.date.issued 2025
dc.identifier.uri https://di.univ-blida.dz/jspui/handle/123456789/41246
dc.description ill., Bibliogr. Cote:038/2025 Aeronautical Structures fr_FR
dc.description.abstract This thesis explores a hybrid methodology combining finite element simulation and machine learning techniques to predict fatigue crack growth in metallic structures. Inspired by the work presented in *A Framework for Generating Large Data Sets for Fatigue Damage Prognostic Problems* (FDPP), this research investigates the credibility and effectiveness of synthetic data by comparing it with results obtained from high-fidelity simulations in COMSOL Multiphysics. A 2D fatigue crack model was simulated under cyclic loading, with strain gauges placed in accordance with the FDPP setup. The resulting strain and displacement data were processed using custom Python scripts to derive meaningful comparisons between the synthetic and simulated datasets. The primary contributions include validating the synthetic dataset’s realism via numerical comparison, and introducing alternative machine learning models—such as XGBoost, LightGBM, and Autoencoders—for Remaining Useful Life (RUL) estimation. The findings demonstrate a promising correlation between real and synthetic data trends, paving the way for more credible fatigue prognostics using virtual datasets in conjunction with physics-based simulations. fr_FR
dc.language.iso en fr_FR
dc.publisher Université Blida 01 fr_FR
dc.subject machine learning fr_FR
dc.subject Large Data Sets fr_FR
dc.subject FDPP fr_FR
dc.subject COMSOL fr_FR
dc.subject Synthetic Data fr_FR
dc.subject Deep Learning fr_FR
dc.title Predictive Fatigue Analysis Using Synthetic Data and Deep Learning Models fr_FR
dc.type Thesis fr_FR


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