Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Tao, Chenyue
Liu, Chengcheng
and
Yang, Bin
2025.
Artificial intelligence in combustion reaction kinetics: Methods and applications.
Applications in Energy and Combustion Science,
Vol. 24,
Issue. ,
p.
100422.
Silva, Francesco A.B.
Ragusa, Jean C.
and
Fiorina, Carlo
2025.
Optimal Sensor Placement and Ensemble Kalman Inversion for Multiphysics Reactor State Estimation.
Results in Engineering,
p.
108389.
Li, Matthew T C
Cui, Tiangang
Li, Fengyi
Marzouk, Youssef
and
Zahm, Olivier
2025.
Sharp detection of low-dimensional structure in probability measures via dimensional logarithmic Sobolev inequalities.
Information and Inference: A Journal of the IMA,
Vol. 14,
Issue. 3,
S V, Venkatakrishnan
An, Ke
Lee, Yousub
Feldhausen, Thomas
Heinrich, Lauren
and
DeWitt, Stephen
2025.
Simulation driven adaptive sampling for neutron-diffraction based strain mapping of additively manufactured parts*
.
Machine Learning: Science and Technology,
Vol. 6,
Issue. 4,
p.
045037.
Dong, Jiayuan
Jacobsen, Christian
Khalloufi, Mehdi
Akram, Maryam
Liu, Wanjiao
Duraisamy, Karthik
and
Huan, Xun
2025.
Variational Bayesian optimal experimental design with normalizing flows.
Computer Methods in Applied Mechanics and Engineering,
Vol. 433,
Issue. ,
p.
117457.
Coons, Thomas E.
and
Huan, Xun
2025.
A Multifidelity Estimator of the Expected Information Gain for Bayesian Optimal Experimental Design.
SIAM/ASA Journal on Uncertainty Quantification,
Vol. 13,
Issue. 4,
p.
1990.
Wang, Lei
Tan, Weikai
Thomas, Marine
Leung, Felix
and
Stocchino, Alessandro
2025.
Statistical design of submerged artificial oyster reefs using Design of Experiments and clustering strategies.
Coastal Engineering,
Vol. 200,
Issue. ,
p.
104751.
Liao, Jiankan
Huan, Xun
and
Cooper, Daniel
2025.
Intelligent data collection for reducing network structure uncertainty in material flow analysis using Bayesian optimal experimental design.
Journal of Industrial Ecology,
Liao, Jiankan
Huan, Xun
and
Cooper, Daniel
2025.
Bayesian Optimal Experimental Design for Intelligent Data Collection in Material Flow Analysis.
Procedia CIRP,
Vol. 135,
Issue. ,
p.
175.
Liao, Jiankan
Deng, Sidi
Huan, Xun
and
Cooper, Daniel
2025.
Bayesian model selection for network discrimination and risk‐informed decision‐making in material flow analysis.
Journal of Industrial Ecology,
Vol. 29,
Issue. 4,
p.
1060.
Wang, Tianyuan
Lucka, Felix
Pelt, Daniël M.
Joost Batenburg, K.
and
van Leeuwen, Tristan
2025.
Dynamic angle selection in X-Ray CT: A reinforcement learning approach to optimal stopping.
Applied Mathematics for Modern Challenges,
Vol. 5,
Issue. 0,
p.
36.
Bania, Piotr
and
Wójcik, Anna
2025.
An Approximate Bayesian Approach to Optimal Input Signal Design for System Identification.
Entropy,
Vol. 27,
Issue. 10,
p.
1041.
Napiorkowski, Jaroslaw J.
Piotrowski, Adam P.
Osuch, Marzena
Zhu, Senlin
and
Karamuz, Emilia
2025.
How the choice of model calibration procedure affects projections of lake surface water temperatures for future climatic conditions.
Journal of Hydrology,
Vol. 659,
Issue. ,
p.
133236.
Henrion, Didier
and
Lasserre, Jean-Bernard
2025.
Approximate D-optimal design and equilibrium measure.
Comptes Rendus. Mathématique,
Vol. 363,
Issue. G8,
p.
739.
Shen, Wanggang
Dong, Jiayuan
and
Huan, Xun
2025.
Variational sequential optimal experimental design using reinforcement learning.
Computer Methods in Applied Mechanics and Engineering,
Vol. 444,
Issue. ,
p.
118068.
Stallvik, Andrea
Kaltenbach, Hans-Michael
and
Stelling, Jörg
2026.
Computational Methods in Systems Biology.
Vol. 15959,
Issue. ,
p.
240.
Yang, Huchen
Dong, Xinghao
and
Wu, Jin-Long
2026.
Bayesian experimental design for model discrepancy calibration: An auto-differentiable ensemble Kalman inversion approach.
Journal of Computational Physics,
Vol. 545,
Issue. ,
p.
114469.
Liu, Chengcheng
Tao, Chenyue
Li, Chenxuan
Zhang, Peng
Wang, Qiao
Gao, Yi
Wang, Yiru
Law, Chung K.
and
Yang, Bin
2026.
Bayesian sequential experimental design for combustion kinetic models: A surrogate-assisted nonlinear framework with improved information gain.
Combustion and Flame,
Vol. 284,
Issue. ,
p.
114610.
Geremia, Margherita
Macchietto, Sandro
and
Bezzo, Fabrizio
2026.
A review on model-based design of experiments for parameter precision – Open challenges, trends and future perspectives.
Chemical Engineering Science,
Vol. 319,
Issue. ,
p.
122347.