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DIAGNOSING UNDERSAMPLING IN MONTE CARLO EIGENVALUE AND FLUX TALLY ESTIMATES

机译:诊断蒙特卡罗特征值和助焊剂估计

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This study explored the impact of undersampling on the accuracy of tally estimates in Monte Carlo (MC) calculations. Steady-state MC simulations were performed for models of several critical systems with varying degrees of spatial and isotopic complexity, and the impact of undersampling on eigenvalue and fuel pin flux/fission estimates was examined. This study observed biases in MC eigenvalue estimates as large as several percent and biases in fuel pin flux/fission tally estimates that exceeded tens, and in some cases hundreds, of percent. This study also investigated five statistical metrics for predicting the occurrence of undersampling biases in MC simulations. Three of the metrics (the Heidelberger-Welch RHW, the Geweke Z-Score, and the Gelman-Rubin diagnostics) are commonly used for diagnosing the convergence of Markov chains, and two of the methods (the Contributing Particles per Generation and Tally Entropy) are new convergence metrics developed in the course of this study. These metrics were implemented in the KENO MC code within the SCALE code system and were evaluated for their reliability at predicting the onset and magnitude of undersampling biases in MC eigenvalue and flux tally estimates in two of the critical models. Of the five methods investigated, the Heidelberger-Welch RHW, the Gelman-Rubin diagnostics, and Tally Entropy produced test metrics that correlated strongly to the size of the observed undersampling biases, indicating their potential to effectively predict the size and prevalence of undersampling biases in MC simulations.
机译:本研究探讨了欠采样对蒙特卡罗(MC)计算中的计数估计准确性的影响。针对具有不同空间和同位素复杂性的若干关键系统的模型进行稳态MC模拟,并检查了欠采样对特征值和燃料引脚通量/裂变估计的影响。本研究观察了MC特征值估计的偏差,估计数百分之几,燃料引脚通量/裂变估计的百分比,超过数十,在某些情况下百分比的百分比本研究还研究了五种统计指标,以预测MC模拟中的欠采样偏差的发生。三个指标(Heidelberger-Welch RhW,Geweke Z评分和Gelman-Rubin诊断)通常用于诊断Markov链的收敛,以及两种方法(每个产生的贡献颗粒和熵)是在本研究过程中开发的新融合指标。这些度量标准在秤代码系统内的KENO MC代码中实施,并且在预测MC特征值中的下采样偏差的起始和大小并在两个关键模型中进行了评估了在预测下采样的起始和幅度的可靠性。在调查的五种方法中,Heidelberger-Welch Rhw,Gelman-Rubin诊断和Taly熵产生了测试度量,这些测试度量与观察到的未采样偏差的大小强烈相关,表明它们有效地预测欠采样偏差的尺寸和患病率MC模拟。

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