Research on the method of predicting CEFR core thermal hydraulic parameters based on adaptive radial basis function neural network

Yi, Jinhao and Ji, Nan and Zhao, Pengcheng and Wu, Hong (2022) Research on the method of predicting CEFR core thermal hydraulic parameters based on adaptive radial basis function neural network. Frontiers in Energy Research, 10. ISSN 2296-598X

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Abstract

Alterations in thermal hydraulic parameters directly affect the safety of reactors. Accurately predicting the trends of key thermal hydraulic parameters under various working conditions can greatly improve reactor safety, thereby effectively preventing the occurrence of nuclear power plant accidents. The thermal hydraulic characteristic parameters in the reactor are affected by many factors, in order to preliminarily study whose forecasting methods and determine the feasibility of neural network forecasting, the China Experimental Fast Reactor (CEFR) is selected as the research target in this study, and the maximum surface temperature of fuel rod sheath and mass flow rate are used as predictive variables. After data samples are generated through the reactor sub channel analysis code (named SUBCHANFLOW), two widely used adaptive neural networks are used to perform the thermal hydraulic parameter forecast analysis of CEFR fuel assembly under steady-state conditions. The 1/2 core model of CEFR is used to perform a single-step predictive analysis of thermal hydraulic parameters under transient conditions. The results show that the adaptive radial basis function (RBF) neural network exhibits a better fitting ability and higher forecasting accuracy than that of the adaptive back propagation neural network, and the maximum error under steady-state conditions is 0.5%. Under transient conditions, poor forecasting accuracy is observed for some local points; however, the adaptive RBF neural network is generally excellent at predicting temperature and mass flow. The mean relative error of temperature does not exceed 1%, and the mean relative error of flow does not exceed 6.5%. The proposed RBF neural network model can provide real-time forecasting in a short time under unstable flow conditions, and its forecasting results have a certain reference value.

Item Type: Article
Subjects: Open STM Article > Energy
Depositing User: Unnamed user with email support@openstmarticle.com
Date Deposited: 11 May 2023 07:27
Last Modified: 05 Sep 2024 11:22
URI: http://asian.openbookpublished.com/id/eprint/757

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