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Multi-fidelity surrogate modeling of fatigue cracks integrating the effects of parameter randomness

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Figshare2026-03-05 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Multi-fidelity_surrogate_modeling_of_fatigue_cracks_integrating_the_effects_of_parameter_randomness/31541882
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Penetrating fatigue cracks critically compromise the structural integrity and operational reliability of mechanical components. Predicting three-dimensional fatigue crack propagation involves complex multi-parameter interactions and computationally intensive simulations, posing significant challenges for efficient life assessment. To bridge this gap, this work developed a probabilistic multi-fidelity surrogate model that integrates experimental characterization and finite element analysis. The framework employs a D-vine copula model to quantify uncertainties and dependencies in key parameters, while an adaptive stochastic configuration network ensemble surrogate emulates crack-growth responses with high computational efficiency. Validated through ASTM-compliant fatigue tests on 25CrNiMo alloy specimens. Results demonstrate that the proposed methodology enables efficient, high-accuracy fatigue life evaluation for engineering structures operating under uncertainty, providing a robust tool for reliability-driven design and maintenance.
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2026-03-05
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