Informational probabilistic sensitivity analysis and active learning surrogate modelling

Probabilistic Engineering Mechanics - Tập 70 - Trang 103359 - 2022
Umberto Alibrandi1, Lars V. Andersen1, Enrico Zio2,3
1AArhus University, Department of Civil and Architectural Engineering, Inge Lehmanns Gade 10, Aarhus, 8000, Denmark
2MINES Paris-PSL, Centre de Recherche sur les Risques et les Crises (CRC), Sophia Antipolis, France
3Politecnico di Milano, Energy Department, Milano, Italy

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