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Utilization of alternating conditional expectation method for pin power reconstruction in CANDU reactor physics analyses

机译:交替条件期望法在CANDU反应堆物理分析中用于引脚功率重构的应用

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This paper presents a new methodology using the Alternating Conditional Expectation (ACE) algorithm for reconstructing fuel pin powers in the Canada Deuterium Uranium (CANDU) reactor. Variations in assembly powers in neighboring fuel bundles are used as predictor variables to determine the response, e.g. power in each of the fuel pin. When a sufficient number of cases have been evaluated, the relation between the predictor variables and the response can be treated as a multi-variable regression problem. The ACE algorithm which is a non-parametric approach (i.e., no predetermined functional relationship between the predictors and the response is assumed) is then utilized for estimating optimal transformations of the predictors and the response. The geometry used is a two-dimensional, 3-by-3 fuel bundles configuration. Three hundred different configurations, which represent various power distributions, were evaluated to develop these optimal transformations. The optimal transformation is determined for each of 37 pins in a CANDU natural uranium fuel bundle. The quality of these transformations for predicting fuel pin power has been verified against an independent set of 50 two-dimensional, 3-by-3 fuel bundle configurations. The results indicate that the proposed pin power reconstruction algorithm is sufficiently accurate, giving an RMS (root-mean-squared) error of around 0.59% for all pins. The RMS error in predicting the maximum pin power is 0.60%. The development of the proposed methodology continued with the examination of its robustness. The impact of employing different training sets on the overall relative error in predicting the pin power is examined. In addition, the impact of employing different sizes of training sets is also investigated. For each training set size, a bias in predicting the maximum pin power is determined statistically based on the numerical results observed during the study. The results indicate that the methodology is likely to under-predict the maximum pin power; to circumvent this issue a multiplicative bias of 1.0118 needs to be applied, based on evaluating results from various sizes of the training sets. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文提出了一种使用交替条件期望(ACE)算法的新方法,用于重构加拿大氘铀(CANDU)反应堆中的燃料销功率。相邻燃料束中装配功率的变化用作预测变量,以确定响应,例如每个燃料销上都有电源。在评估了足够多的案例后,可以将预测变量与响应之间的关系视为多变量回归问题。然后利用非参数方法(即,假设预测变量和响应之间没有预定的功能关系)的ACE算法来估计预测变量和响应的最佳变换。使用的几何形状是二维3×3燃料束配置。评估了代表不同功率分布的300种不同配置,以开发这些最佳转换。针对CANDU天然铀燃料束中的37个销钉中的每个销钉确定最佳转换。这些预测燃料销功率的转换的质量已针对50套二维,3×3燃料束独立配置进行了验证。结果表明,所提出的引脚功率重构算法足够准确,所有引脚的RMS(均方根)误差约为0.59%。预测最大引脚功率时的RMS误差为0.60%。提议的方法的发展继续其稳健性的检验。研究了在预测引脚功率时采用不同训练集对整体相对误差的影响。此外,还研究了采用不同大小的训练集的影响。对于每种训练集的大小,将根据研究期间观察到的数值结果,以统计方式确定预测最大引脚功率的偏差。结果表明,该方法可能会低估最大引脚功率。为避免此问题,需要根据来自各种规模的训练集的评估结果,应用1.0118的乘法偏差。 (C)2017 Elsevier Ltd.保留所有权利。

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