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首页> 外文期刊>Nuclear science and engineering >Prediction of the Power Peaking Factor in a Boron-Free Small Modular Reactor Based on a Support Vector Regression Model and Control Rod Bank Positions
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Prediction of the Power Peaking Factor in a Boron-Free Small Modular Reactor Based on a Support Vector Regression Model and Control Rod Bank Positions

机译:基于支持向量回归模型和控制杆堤位置预测无硼小模块化反应器中的功率峰值因子

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摘要

In order to ensure safety in a nuclear power plant, operation and protection systems must take into account safety parameters, whether to guide operators or to trip the reactor in emergency cases. Especially in a boron-free small modular reactor (SMR) where reactivity and power are controlled exclusively by rod banks, the power distribution is mostly influenced by its movements affecting the power peaking factor (PPF), which is an important parameter to be considered. The PPF relates the maximum local linear power density to the average power density in a fuel rod indicating a high neutron flux that can cause fuel rod damage. In this technical note, 2117 samples from simulations of an idealized boron-free SMR controlled exclusively by rod banks were used to generate a Support Vector Machine (SVM) model capable of estimating the PPF as a function of control rod bank positions. Such model could be used to predict the maximum PPF in the reactor core by carrying out simple calculation. Residing in a SVM parameter grid search and a 10-cross-validation process in the training set to reach an optimized and robust model, the results have shown a root-mean-squared error of about 0.1% consistent for both training and testing sets.
机译:为了确保核电站的安全,操作和保护系统必须考虑到安全参数,是否指导操作员或在紧急情况下跳闸反应器。特别是在无硼的小模块化反应器(SMR)中,其中仅由杆堤控制的反应性和功率,功率分布主要受影响功率峰值因子(PPF)的运动的影响,这是要考虑的重要参数。 PPF将最大局部线性功率密度与表示能够引起燃料杆损坏的高中中子磁通的燃料棒中的平均功率密度涉及最大局部线性功率密度。在该技术说明中,由杆堤自由控制的理想化的无硼SMR的模拟2117个样本用于产生能够估计PPF的支持向量机(SVM)模型作为控制杆堤位置的函数。这种模型可用于通过执行简单计算来预测反应器核中的最大PPF。驻留在SVM参数网格搜索和培训集中的10交叉验证过程中以达到优化和强大的模型,结果显示了培训和测试集的根本平均误差约为0.1%。

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