A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plants

A deep learning-based multi-node framework is constructed in this work to provide a data-driven platform that provides predictions for the operation condition of the primary heat transfer (PHT) loop in nuclear power plants (NPPs). Several deep learning models that have been verified and demonstrated...

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Main Authors: Tianzi Shi, Jingke She, Pingfan Li, Jianjian Jiang, Wei Chen
Format: Article
Language:English
Published: Frontiers Media S.A. 2023-02-01
Series:Frontiers in Energy Research
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fenrg.2023.1099326/full
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author Tianzi Shi
Jingke She
Pingfan Li
Jianjian Jiang
Wei Chen
author_facet Tianzi Shi
Jingke She
Pingfan Li
Jianjian Jiang
Wei Chen
author_sort Tianzi Shi
collection DOAJ
description A deep learning-based multi-node framework is constructed in this work to provide a data-driven platform that provides predictions for the operation condition of the primary heat transfer (PHT) loop in nuclear power plants (NPPs). Several deep learning models that have been verified and demonstrated in previous researches, such as Long-Short Term Memory (LSTM), Convolutional Neural Network (CNN), and zigmoid-based LSTM (zLSTM), are applied to modeling critical system parameters at three important nodes in the PHT loop. The feature extraction and process memory are enhanced via the collaborative work of CNN and LSTM. zLSTM, on the other hand, is successfully utilized to strengthen the long-term memory, especially for predictions of a node with multivariate inputs such as the steam generator. The node prediction results are also adopted for a polynomial fitting that generates an additional input to the next node, allowing each node to select a more accurate input. According to the verification experiments based on Loss of Coolant Accident (LOCA), the Mean Squared Error (MSE) result (1.29 × 10−3) and the Mean Absolute Error (MAE) result (1.37 × 10−2) of 0.7 cm2 LOCA case demonstrate the functionality and accuracy of the proposed framework. It is found that the fitting error (MSE) in the outlet node at 0.7 cm2 case is 38.5% lower than the prediction, showing the advantage of applying both deep learning and fitting methods. The best performance, in term of MSE, is obtained at SG node in the 0.7 cm2 case, where its processing error (0.001285) is 93.2% lower than that of the baseline models. Both the validation and verification experiments successfully proved the feasibility and advantages of the proposed framework, which offers an alternative option for the operation analysis of PHT performance.
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spelling doaj.art-67fac3f6e8764cffac34f3442bad92092023-02-10T05:20:57ZengFrontiers Media S.A.Frontiers in Energy Research2296-598X2023-02-011110.3389/fenrg.2023.10993261099326A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plantsTianzi Shi0Jingke She1Pingfan Li2Jianjian Jiang3Wei Chen4College of Computer Science and Electronic Engineering, Hunan University, Changsha, ChinaCollege of Computer Science and Electronic Engineering, Hunan University, Changsha, ChinaCollege of Computer Science and Electronic Engineering, Hunan University, Changsha, ChinaCollege of Computer Science and Electronic Engineering, Hunan University, Changsha, ChinaNuclear Power Institute of China, Chengdu, ChinaA deep learning-based multi-node framework is constructed in this work to provide a data-driven platform that provides predictions for the operation condition of the primary heat transfer (PHT) loop in nuclear power plants (NPPs). Several deep learning models that have been verified and demonstrated in previous researches, such as Long-Short Term Memory (LSTM), Convolutional Neural Network (CNN), and zigmoid-based LSTM (zLSTM), are applied to modeling critical system parameters at three important nodes in the PHT loop. The feature extraction and process memory are enhanced via the collaborative work of CNN and LSTM. zLSTM, on the other hand, is successfully utilized to strengthen the long-term memory, especially for predictions of a node with multivariate inputs such as the steam generator. The node prediction results are also adopted for a polynomial fitting that generates an additional input to the next node, allowing each node to select a more accurate input. According to the verification experiments based on Loss of Coolant Accident (LOCA), the Mean Squared Error (MSE) result (1.29 × 10−3) and the Mean Absolute Error (MAE) result (1.37 × 10−2) of 0.7 cm2 LOCA case demonstrate the functionality and accuracy of the proposed framework. It is found that the fitting error (MSE) in the outlet node at 0.7 cm2 case is 38.5% lower than the prediction, showing the advantage of applying both deep learning and fitting methods. The best performance, in term of MSE, is obtained at SG node in the 0.7 cm2 case, where its processing error (0.001285) is 93.2% lower than that of the baseline models. Both the validation and verification experiments successfully proved the feasibility and advantages of the proposed framework, which offers an alternative option for the operation analysis of PHT performance.https://www.frontiersin.org/articles/10.3389/fenrg.2023.1099326/fullCNNLSTMzLSTMLOCApredictionpolynomial fitting
spellingShingle Tianzi Shi
Jingke She
Pingfan Li
Jianjian Jiang
Wei Chen
A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plants
Frontiers in Energy Research
CNN
LSTM
zLSTM
LOCA
prediction
polynomial fitting
title A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plants
title_full A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plants
title_fullStr A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plants
title_full_unstemmed A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plants
title_short A deep learning-based framework for the operation prediction of primary heat transfer loop in nuclear power plants
title_sort deep learning based framework for the operation prediction of primary heat transfer loop in nuclear power plants
topic CNN
LSTM
zLSTM
LOCA
prediction
polynomial fitting
url https://www.frontiersin.org/articles/10.3389/fenrg.2023.1099326/full
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