Research on Accident Diagnosis Method of Reactor System Based on XGBoost Using Bayesian Optimization

Yong Liu, Xiangyu Li, Biao Liang, Bo Wang, Sichao Tan, P. Gao
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Abstract

Traditional machine learning algorithms have problems such as overfitting, low accuracy, and difficulty in hyperparameter optimization when performing fault diagnosis.In order to improve the accident diagnosis ability of nuclear power plant reactor system, this paper combines Bayesian optimization (BO) algorithm with eXtreme Gradient Boosting (XGBoost) algorithm to develop a reactor accident diagnosis model.First, data preprocessing and feature quantity analysis are performed on accident data samples.Then, the BO algorithm is used to optimize the hyperparameters of the XGBoost model. Finally, the BO-XGBoost model is used to diagnose the operating conditions of seven nuclear power plants, and the diagnostic effects of various traditional machine learning classification algorithms are compared and analyzed.The results show that the BO-XGBoost model can achieve more efficient and accurate identification of reactor accident types, and the model has better generalization ability.This research can help nuclear power plant operators to accurately identify the types of reactor accidents, assist decision-making, and ensure the safe operation of nuclear power plants.
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基于XGBoost的反应堆系统事故诊断方法研究
传统的机器学习算法在进行故障诊断时存在过拟合、准确率低、超参数优化困难等问题。为了提高核电站反应堆系统的事故诊断能力,本文将贝叶斯优化(BO)算法与极限梯度增强(XGBoost)算法相结合,建立了反应堆事故诊断模型。首先,对事故数据样本进行数据预处理和特征量分析。然后,利用BO算法对XGBoost模型的超参数进行优化。最后,利用BO-XGBoost模型对7座核电站运行工况进行诊断,对比分析了各种传统机器学习分类算法的诊断效果。结果表明,BO-XGBoost模型能够实现更高效、准确的反应堆事故类型识别,模型具有较好的泛化能力。该研究可以帮助核电站运营商准确识别反应堆事故类型,辅助决策,确保核电站安全运行。
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