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Calculation Of The Power Peaking Factor In A Nuclear Reactor Using Support Vector Regression Models

机译:支持向量回归模型计算核反应堆功率峰值因数

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Local power density (LPD) at the hottest part of a hot nuclear fuel rod should be estimated accurately to confirm that the rod does not melt. The power peaking factor (PPF) is defined as the highest LPD divided by the average power density in the reactor core. In this paper, the PPF is calculated by support vector regression (SVR) models using numerous measured signals from the reactor cooling system. SVR models are regression analysis models using a kernel function for artificial neural networks. Their neural network weights are found by solving a quadratic programming problem under linear constraints. SVR models are trained using a training data set and then verified against another test data set. The proposed SVR models were applied to the first fuel cycle of the Yonggwang nuclear power plant unit 3. The root mean square errors of the SVR model, with and without in-core neutron flux sensor signal inputs, were 0.1113% and 0.0968%, respectively. This level of errors is sufficiently low for use in LPD monitoring.
机译:应该准确估算热核燃料棒最热部分的局部功率密度(LPD),以确保棒不会融化。功率峰值因数(PPF)定义为最高LPD除以反应堆堆芯的平均功率密度。在本文中,通过使用来自反应堆冷却系统的大量测量信号,通过支持向量回归(SVR)模型来计算PPF。 SVR模型是使用用于人工神经网络的核函数的回归分析模型。通过解决线性约束下的二次规划问题,可以找到它们的神经网络权重。使用训练数据集对SVR模型进行训练,然后针对另一个测试数据集进行验证。拟议的SVR模型应用于永光核电站3号机组的第一个燃料循环。带和不带核中子通量传感器信号输入的SVR模型的均方根误差分别为0.1113%和0.0968%。 。此错误级别足够低,可用于LPD监视。

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