Sensitivity Coefficient Evaluation of an Accelerator-Driven System Using ROM-Lasso Method
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https://tandf.figshare.com/articles/dataset/Sensitivity_Coefficient_Evaluation_of_an_Accelerator-Driven_System_Using_ROM-Lasso_Method/19754844
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资源简介:
We propose the use of reduced-order modeling to improve the sensitivity coefficient evaluation method based on Lasso-type penalized linear regression. In this method, cross sections of interest are uniformly randomly sampled, and corresponding perturbed core analyses are performed. The sensitivity coefficients of the higher-dimensional model are expanded by the active subspace (AS) attained by the lower-dimensional model, and the expansion coefficients are estimated by the Lasso regression. In addition, AS bases can be flexibly chosen according to neutronics parameters of interest. We conducted a verification calculation for an accelerator-driven system and clarified that the proposed method successfully reduces the calculation cost by a couple of orders of magnitude compared with the direct method. The proposed method can be used to practically evaluate the sensitivity coefficients of various parameters.
提供机构:
Taylor & Francis
创建时间:
2022-05-12



