Data-driven prediction and uncertainty quantification of PWR crud-induced power shift using convolutional neural networks

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2 Scopus citations

Abstract

The development of Crud-Induced Power Shift (CIPS) is an operational challenge in Pressurized Water Reactors that is due to the development of crud on the fuel rod cladding. The available predictive tools developed previously, usually based on fundamental physics, are computationally expensive and have shown differing degrees of accuracy. This work proposes a completely “top-down” approach to predict CIPS instances on an assembly level with reactor-specific calibration built-in. Built using artificial neural networks, this work uses a three-dimensional convolutional approach to leverage the image-like layout of the input data. As a classifier, the convolutional neural network model predicts whether a given assembly will experience CIPS as well as the time of occurrence during a given cycle. This surrogate model is both trained and tested using a combination of calculated core model parameters and measured plant data from Unit 1 of the Catawba Nuclear Station. After the evaluation of its performance using various metrics, Monte Carlo dropout is employed for extensive uncertainty quantification of the model predictions. The results indicate that this methodology could be a viable approach in predicting CIPS with an assembly-level resolution across both clean and afflicted cycles, while using limited computational resources.

Original languageEnglish
Article number134447
JournalEnergy
Volume316
DOIs
StatePublished - Feb 1 2025
Externally publishedYes

Funding

This work was supported by Duke Energy through the Consortium for Nuclear Power (CNP) at the Department of Nuclear Engineering of North Carolina State University .

Keywords

  • Convolutional neural network
  • Crud-induced power shift
  • Uncertainty quantification

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