Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Rochoux, M. C.
Ricci, S.
Lucor, D.
Cuenot, B.
and
Trouvé, A.
2014.
Towards predictive data-driven simulations of wildfire spread – Part I: Reduced-cost Ensemble Kalman Filter based on a Polynomial Chaos surrogate model for parameter estimation.
Natural Hazards and Earth System Sciences,
Vol. 14,
Issue. 11,
p.
2951.
Li, Jinglai
and
Marzouk, Youssef M.
2014.
Adaptive Construction of Surrogates for the Bayesian Solution of Inverse Problems.
SIAM Journal on Scientific Computing,
Vol. 36,
Issue. 3,
p.
A1163.
Poëtte, Gaël
Birolleau, Alexandre
and
Lucor, Didier
2015.
Iterative Polynomial Approximation Adapting to Arbitrary Probability Distribution.
SIAM Journal on Numerical Analysis,
Vol. 53,
Issue. 3,
p.
1559.
Yan, Liang
and
Guo, Ling
2015.
Stochastic Collocation Algorithms Using $l_1$-Minimization for Bayesian Solution of Inverse Problems.
SIAM Journal on Scientific Computing,
Vol. 37,
Issue. 3,
p.
A1410.
Manzoni, A.
Pagani, S.
and
Lassila, T.
2016.
Accurate Solution of Bayesian Inverse Uncertainty Quantification Problems Combining Reduced Basis Methods and Reduction Error Models.
SIAM/ASA Journal on Uncertainty Quantification,
Vol. 4,
Issue. 1,
p.
380.
Resmini, A.
Peter, J.
and
Lucor, D.
2016.
Sparse grids‐based stochastic approximations with applications to aerodynamics sensitivity analysis.
International Journal for Numerical Methods in Engineering,
Vol. 106,
Issue. 1,
p.
32.
Yan, Liang
and
Zhang, Yuan-Xiang
2017.
Convergence analysis of surrogate-based methods for Bayesian inverse problems.
Inverse Problems,
Vol. 33,
Issue. 12,
p.
125001.
Roy, Pamphile T.
El Moçayd, Nabil
Ricci, Sophie
Jouhaud, Jean-Christophe
Goutal, Nicole
De Lozzo, Matthias
and
Rochoux, Mélanie C.
2018.
Comparison of polynomial chaos and Gaussian process surrogates for uncertainty quantification and correlation estimation of spatially distributed open-channel steady flows.
Stochastic Environmental Research and Risk Assessment,
Vol. 32,
Issue. 6,
p.
1723.
Trucchia, A.
Mattei, M.R.
Luongo, V.
Frunzo, L.
and
Rochoux, M.C.
2019.
Surrogate-based uncertainty and sensitivity analysis for bacterial invasion in multi-species biofilm modeling.
Communications in Nonlinear Science and Numerical Simulation,
Vol. 73,
Issue. ,
p.
403.
Méndez Rojano, Rodrigo
Mendez, Simon
Lucor, Didier
Ranc, Alexandre
Giansily-Blaizot, Muriel
Schved, Jean-François
and
Nicoud, Franck
2019.
Kinetics of the coagulation cascade including the contact activation system: sensitivity analysis and model reduction.
Biomechanics and Modeling in Mechanobiology,
Vol. 18,
Issue. 4,
p.
1139.
Poëtte, Gaël
2019.
A gPC-intrusive Monte-Carlo scheme for the resolution of the uncertain linear Boltzmann equation.
Journal of Computational Physics,
Vol. 385,
Issue. ,
p.
135.
van den Bos, L.M.M.
Sanderse, B.
and
Bierbooms, W.A.A.M.
2020.
Adaptive sampling-based quadrature rules for efficient Bayesian prediction.
Journal of Computational Physics,
Vol. 417,
Issue. ,
p.
109537.
Colebank, Mitchel J.
Qureshi, M. Umar
Rajagopal, Sudarshan
Krasuski, Richard A.
and
Olufsen, Mette S.
2021.
A multiscale model of vascular function in chronic thromboembolic pulmonary hypertension.
American Journal of Physiology-Heart and Circulatory Physiology,
Vol. 321,
Issue. 2,
p.
H318.
Wagner, Paul-Remo
Marelli, Stefano
and
Sudret, Bruno
2021.
Bayesian model inversion using stochastic spectral embedding.
Journal of Computational Physics,
Vol. 436,
Issue. ,
p.
110141.
Lie, Han Cheng
Sullivan, T. J.
and
Teckentrup, Aretha
2021.
Numerical Mathematics and Advanced Applications ENUMATH 2019.
Vol. 139,
Issue. ,
p.
275.
Cocci, Riccardo
Damblin, Guillaume
Ghione, Alberto
Sargentini, Lucia
and
Lucor, Didier
2022.
A comprehensive Bayesian framework for the development, validation and uncertainty quantification of thermal-hydraulic models.
Annals of Nuclear Energy,
Vol. 172,
Issue. ,
p.
109029.
Rossat, D.
Baroth, J.
Briffaut, M.
Dufour, F.
Monteil, A.
Masson, B.
and
Michel-Ponnelle, S.
2023.
Bayesian updating for predictions of delayed strains of large concrete structures: influence of prior distribution.
European Journal of Environmental and Civil Engineering,
Vol. 27,
Issue. 4,
p.
1763.
Novello, Paul
Poëtte, Gaël
Lugato, David
Peluchon, Simon
and
Congedo, Pietro Marco
2024.
Accelerating hypersonic reentry simulations using deep learning-based hybridization (with guarantees).
Journal of Computational Physics,
Vol. 498,
Issue. ,
p.
112700.