Coarse-Grid Computational Fluid Dynamics (CG-CFD) Error Prediction using Machine Learning.

@inproceedings{Hanna2018CoarseGridCF,
  title={Coarse-Grid Computational Fluid Dynamics (CG-CFD) Error Prediction using Machine Learning.},
  author={Botros N Hanna and Nam Tran Dinh and Robert W. Youngblood and Igor A. Bolotnov},
  year={2018}
}
Nuclear reactor safety research requires analysis of a broad range of accident scenarios. One of the major safety barriers against nuclear fission products release is the containment structure. Modeling and simulation are essential tools to identify parameters affecting Containment Thermal Hydraulics (CTH) phenomena. The thermal-hydraulic modeling approaches used in the nuclear industry can be classified into two categories: system-level codes and Computational Fluid Dynamics (CFD) codes… CONTINUE READING
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