Deep Surrogate Models for Multi-dimensional Regression of Reactor Power
Akshay J. Dave, Jarod Wilson, Kaichao Sun

TL;DR
This paper demonstrates that neural networks can accurately serve as surrogate models for multi-dimensional reactor power distribution, enabling fast and precise autonomous control of nuclear reactors.
Contribution
It establishes the effectiveness of neural network surrogates for reactor power regression, validated against a MCNP5 model of the MIT reactor, with high accuracy.
Findings
MAPE < 1.16% across datasets
Standard deviation < 0.77%
Suitable for autonomous reactor control
Abstract
There is renewed interest in developing small modular reactors and micro-reactors. Innovation is necessary in both construction and operation methods of these reactors to be financially attractive. For operation, an area of interest is the development of fully autonomous reactor control. Significant efforts are necessary to demonstrate an autonomous control framework for a nuclear system, while adhering to established safety criteria. Our group has proposed and received support for demonstration of an autonomous framework on a subcritical system: the MIT Graphite Exponential Pile. In order to have a fast response (on the order of miliseconds), we must extract specific capabilities of general-purpose system codes to a surrogate model. Thus, we have adopted current state-of-the-art neural network libraries to build surrogate models. This work focuses on establishing the capability of…
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Taxonomy
TopicsNuclear reactor physics and engineering · Advanced Multi-Objective Optimization Algorithms · Machine Learning in Materials Science
