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Prediction of Decay Heat Using Non-Destructive Assay

NUCLEAR INSTRUMENTS & METHODS IN PHYSICS RESEARCH SECTION A-ACCELERATORS SPECTROMETERS DETECTORS AND ASSOCIATED EQUIPMENT(2025)

Uppsala Univ

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Abstract
This research paper introduces a novel approach to predict the decay heat of spent nuclear fuel assemblies (SNFs) using data from non-destructive gamma and neutron measurements, addressing the challenge of ensuring safety in geological repositories. Because calorimetric measurements are time-consuming, it is envisioned that gamma and neutron measurements can be used for decay heat prediction before encapsulation. This paper analyses gamma and neutron data to extract key features, specifically the activities of Cs-137, Eu154, and the total neutron count rate. A Gaussian process model is then employed to estimate SNF decay heat. The methodology involves training a prediction model on a calibrated simulated dataset designed to mimic real experimental conditions closely. The model is then successfully used to predict the decay heat for unseen experimental data. The results highlight the potential of using gamma and neutron measurements for reliable decay heat prediction. It is shown that the magnitude of the relative deviation obtained is 2-4 %. Furthermore, the study explores the impact of removing certain input features or adjusting their uncertainty levels on the decay heat prediction model precision, in particular for the Eu-154 activity and neutron count rate. This comprehensive methodology paves the way for applying these techniques to a larger experimental scale offering a significant advancement in the safety assessment of SNFs prior to encapsulation and long-term storage.
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Decay heat,SNF,SKB-50,Gamma measurements,Neutron measurements,Calorimetric measurements
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要点】:本研究提出了一种新的方法,利用非破坏性伽马和 neutron 测量数据预测废弃核燃料组件(SNFs)的衰变热,以提高地质储存安全性。

方法】:通过分析伽马和 neutron 数据提取关键特征(Cs-137 活性、Eu-154 活性和总 neutron 计数率),并使用高斯过程模型估计 SNF 衰变热。

实验】:研究在模拟数据集上进行模型训练,并成功预测了未见实验数据的衰变热,相对偏差为 2-4%,并探究了移除某些输入特征或调整其不确定性水平对预测精度的影响。