A Digital Twin Framework for Generation-IV Reactors with Reinforcement Learning-Enabled Health-Aware Supervisory Control
Jasmin Y. Lim, Dimitrios Pylorof, Humberto E. Garcia, Karthik Duraisamy

TL;DR
This paper presents a digital twin framework for Generation-IV reactors that integrates surrogate modeling, reinforcement learning, and Bayesian inference to optimize operation, maintenance, and safety in real-time.
Contribution
It introduces a novel digital twin architecture specifically designed for Gen-IV reactors, combining advanced data-driven methods for health-aware supervisory control.
Findings
Demonstrated long-term maintenance planning capabilities.
Achieved high accuracy in short-term operational predictions.
Validated real-time recalibration during system shocks.
Abstract
Generation IV (Gen-IV) nuclear power plants are envisioned to replace the current reactor fleet, bringing improvements in performance, safety, reliability, and sustainability. However, large cost investments currently inhibit the deployment of these advanced reactor concepts. Digital twins bridge real-world systems with digital tools to reduce costs, enhance decision-making, and boost operational efficiency. In this work, a digital twin framework is designed to operate the Gen-IV Fluoride-salt-cooled High-temperature Reactor, utilizing data-enhanced methods to optimize operational and maintenance policies while adhering to system constraints. The closed-loop framework integrates surrogate modeling, reinforcement learning, and Bayesian inference to streamline end-to-end communication for online regulation and self-adjustment. Reinforcement learning is used to consider component health…
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