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References
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Guo, M., McQuarrie, S. A., and Willcox, K., Bayesian operator inference for data-driven reduced-order modeling. Computer Methods in Applied Mechanics and Engineering, Vol. 402, pp. 115336, 2022.
BibTeX
@article{guo2022bayesopinf, title = {Bayesian operator inference for data-driven reduced-order modeling}, author = {Guo, M. and McQuarrie, S. and Willcox, K.}, journal = {Computer Methods in Applied Mechanics and Engineering}, year = {2022}, volume = {402}, pages = {115336}, doi = {10.1016/j.cma.2022.115336}, }
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Huang, C. (2020). [Updated] 2D Benchmark Reacting Flow Dataset for Reduced Order Modeling Exploration [Data set]. University of Michigan - Deep Blue.
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Jain, P., McQuarrie, S. A., and Kramer, B., Performance comparison of data-driven reduced models for a single-injector combustion process. In AIAA Propulsion and Energy 2021 Forum, Virtual, 2021.
BibTeX
@inproceedings{jain2021performance, title = {Performance comparison of data-driven reduced models for a single-injector combustion process}, author = {Jain, Parikshit and McQuarrie, Shane A. and Kramer, Boris}, booktitle = {AIAA Propulsion and Energy 2021 Forum}, year = {2021}, address = {Virtual event}, note = {AIAA Paper 2021-3633}, doi = {10.2514/6.2021-3633}, }
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McQuarrie, S. A., Huang, C., and Willcox, K., Data-driven reduced-order models via regularized operator inference for a single-injector combustion process. Journal of the Royal Society of New Zealand, Vol. 51:2, pp. 194-211, 2021.
BibTeX
@article{mcquarrie2021combustion, author = {Shane A. McQuarrie and Cheng Huang and Karen E. Willcox}, title = {Data-driven reduced-order models via regularised Operator Inference for a single-injector combustion process}, journal = {Journal of the Royal Society of New Zealand}, volume = {51}, number = {2}, pages = {194--211}, year = {2021}, publisher = {Taylor & Francis}, doi = {10.1080/03036758.2020.1863237}, }
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Swischuk, R., Kramer, B., Huang, C., and Willcox, K., Learning physics-based reduced-order models for a single-injector combustion process. AIAA Journal, Vol. 58:6, pp. 2658-2672, 2020. Also in Proceedings of 2020 AIAA SciTech Forum & Exhibition, Orlando FL, January, 2020. Also Oden Institute Report 19-13.
BibTeX
@article{swischuk2020combustion, title = {Learning physics-based reduced-order models for a single-injector combustion process}, author = {Swischuk, Renee and Kramer, Boris and Huang, Cheng and Willcox, Karen}, journal = {AIAA Journal}, volume = {58}, number = {6}, pages = {2658--2672}, year = {2020}, publisher = {American Institute of Aeronautics and Astronautics}, doi = {10.2514/1.J058943}, }
Problem Statement: computational domain, state variables, and description of the data.
Installation and Setup: how to download the source code and the data files.
File Summary: short descriptions of each file in the repository.
Documentation: how to use the repository for reduced-order model learning.
Results: plots and figures, including many additional results that are not in the publications.
References: short list of primary references.