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Estimation of Axial and radial in-core power peaking in PWR plant using artificial neural network technique

机译:利用人工神经网络技术估计PWR植物轴向和径向核心功率峰值

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Axial and radial power peaking factors (Fq, Fah) were estimated in Chashma Nuclear Power Plant Unit-1 (C-1) core using artificial Neural Network Technique (ANNT). Position of T4 control bank, axial offsets in four quadrants and quadrant power tilt ratios were taken as input variables in neural network designing. Power Peaking Factors (PPF) were calculated using computer codes FCXS, TWODFD and 3D-NB-2P for 52 core critical conditions made during C-1 fuel cycle-7. A multilayered Perceptron (MLP) neural network was trained by applying a set of measured input parameters and calculated output data for each core state. Training average relative errors between targets and ANNT estimated peaking factors were ranged from 0.018% to 0.054%, implies that ANNT introduces negligible error during training and exactly map the values. For validation process, PPF were estimated using ANNT for 36 cases devised at the time when power distribution measurement test and in-core/ex-core detectors calibration test were performed during fuel cycle. ANNT Results were compared with C-1 peaking factors measured with in-core flux mapping system and INCOPW computer code. Results showed that ANNT estimated PPF deviated from C-1 measured values within ±3%. The results of this study indicate that ANNT is an alternate technique for PPF measurement using only ex-core detectors signals data and independent of in-core flux mapping system. It might increase the time interval between in-core flux maps to 180 Effective Full Power Days (EFPDs) and reduce usage frequency of in-core flux mapping system during fuel cycle as present in Advanced Countries Nuclear Power Plants.
机译:采用人工神经网络技术(ANNT),在Chashma核电站核核电站-1(C-1)核中估计了轴向和径向功率峰值因子(FQ,FAH)。 T4控制体的位置,四个象限和象限功率倾斜比中的轴向偏移是神经网络设计中的输入变量。使用计算机代码FCX,TWODFD和3D-NB-2P计算功率峰值因子(PPF),用于在C-1燃料循环-7期间制造的52个核心临界条件。通过应用一组测量的输入参数和计算每个核心状态的计算输出数据来训练多层的Perceptron(MLP)神经网络。目标和Annt估计峰值因子之间的培训平均相对误差范围为0.018%至0.054%,意味着Annt在训练期间引入可忽略的错误,并准确地映射值。对于验证过程,使用Annt估计PPF,以便在燃料循环期间进行配电测量测试和核心/前核检测器校准测试时设计的36例。将Annt结果与用内核通量映射系统测量的C-1峰值因子进行比较,并识别计算机代码。结果表明,估计估计从±3%的C-1测量值偏离的PPF。该研究的结果表明,Annt是仅使用外核检测器信号数据和独立于核心通量映射系统的PPF测量的替代技术。它可能会增加核心通量映射到180有效的全功率天(EFPDS)之间的时间间隔,并在高级国家核电站的燃料循环期间减少核心磁通映射系统的使用频率。

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