Machine Learning Approaches for Performance Assessment of Nuclear Fuel Assemblies Subject to Seismic-Induced Impacts

Author:

Altieri Domenico1,Robin-Boudaoud Marie-Cécile2,Kessler Hannes3,Pellissetti Manuel4,Patelli Edoardo5

Affiliation:

1. Institute for Risk and Uncertainty, University of Liverpool, Liverpool L67ZF, UK

2. Framatome SAS, 10 Rue Juliette Récamier, Lyon 69456, France

3. Framatome GmbH, Paul-Gossen-Strasse 100, Erlangen 91052, Germany

4. Framatome GmbH, Paul-Gossen-Strasse, Erlangen 91052, Germany

5. Centre for Intelligent Infrastructure, Civil and Environmental Engineering, Glasgow, Scotland G1 1XJ, UK

Abstract

Abstract In pressurized water nuclear reactors, the seismic performance of fuel assemblies is governed by their spacer grids (SGs) which may experience impacts with neighboring fuel assembly SGs or with the core barrel, depending on the intensity of the seismic event. Nonlinear dynamic analysis aiming at computing the maximum permanent deformation in a statistic framework is computationally demanding due to the different possible core configurations and the dimension of the dataset of seismic excitations. Hence, surrogate models trained by the physics-based dynamic model are proposed to analyze different scenarios, i.e., explore the space of potential core configurations and seismic excitations. Starting from ground motion records corresponding to six levels of seismic hazard, the dynamic excitation at the elevation of the reactor pressure vessel is obtained via transfer functions. Correlation between different seismic intensity measures and the maximum permanent deformation is evaluated. The performance of two well-established surrogate models, namely, artificial neural networks (ANN) and Gaussian process (GP) for regression problems is analyzed and discussed. Bayesian techniques are adopted to enhance the robustness of the trained surrogate models by training sets of neural networks and estimating the hyper-parameter of the GP.

Publisher

ASME International

Subject

Mechanical Engineering,Safety Research,Safety, Risk, Reliability and Quality

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