Multi-Physics Model Bias Correction with Data-Driven Reduced Order Modelling Techniques: Application to Nuclear Case Studies
Stefano Riva, Carolina Introini, Antonio Cammi

TL;DR
This paper explores the use of data-driven reduced order modeling techniques to correct biases in multi-physics models of nuclear reactors, aiming to enhance accuracy and reliability in complex nuclear simulations.
Contribution
It applies two novel DDROM techniques to nuclear case studies, demonstrating their potential for model bias correction and improved predictive performance.
Findings
Promising numerical results in bias correction
Potential for improved nuclear model accuracy
Validation of DDROM techniques in nuclear applications
Abstract
Nowadays, interest in combining mathematical knowledge about phenomena and data from the physical system is growing. Past research was devoted to developing so-called high-fidelity models, intending to make them able to catch most of the physical phenomena occurring in the system. Nevertheless, models will always be affected by uncertainties related, for example, to the parameters and inevitably limited by the underlying simplifying hypotheses on, for example, geometry and mathematical equations; thus, in a way, there exists an upper threshold of model performance. Now, research in many engineering sectors also focuses on the so-called data-driven modelling, which aims at extracting information from available data to combine it with the mathematical model. Focusing on the nuclear field, interest in this approach is also related to the Multi-Physics modelling of nuclear reactors. Due to…
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Taxonomy
TopicsHydraulic and Pneumatic Systems · Model Reduction and Neural Networks · Real-time simulation and control systems
