Uncertainty estimation in the forecasting of the 222Rn radiation level time series at the Canfranc Underground Laboratory

M. Cárdenas-Montes
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引用次数: 3

Abstract

Nowadays decision making is strongly supported by the high-confident point estimations produced by deep learning algorithms. In many activities, they are sufficient for the decision-making process. However, in some other cases, confidence intervals are required too for an appropriate decision-making process. In this work, a first attempt to generate point estimations with confidence intervals for the $^{222}$Rn radiation level time series at Canfranc Underground Laboratory is presented. To predict the low-radiation periods allows correctly scheduling the unshielded periods for maintenance operations in the experiments hosted in this facility. This should minimize the deposition of radioactive dust on the exposed surfaces during these unshielded periods. An approach based on deep learning with stochastic regulation is evaluated in the forecasting of point estimations and confidence intervals of the $^{222}$Rn time series and compared with a second approach based on Gaussian processes. As a consequence of this work, an evaluation of the capacity of Gaussian process and deep learning with stochastic regularization for generating point estimations and their confidence intervals for this time series is stated.
Canfranc地下实验室222Rn辐射水平时间序列预报中的不确定性估计
目前,深度学习算法产生的高置信度点估计为决策提供了强有力的支持。在许多活动中,它们对于决策过程是足够的。然而,在其他一些情况下,也需要置信区间来进行适当的决策过程。在这项工作中,首次尝试为Canfranc地下实验室的$^{222}$Rn辐射水平时间序列生成具有置信区间的点估计。对低辐射期的预测可以正确地安排该设施中实验维护操作的非屏蔽期。在这些未屏蔽期间,这将最大限度地减少放射性尘埃在暴露表面上的沉积。在$^{222}$Rn时间序列的点估计和置信区间预测中,评估了一种基于随机调节的深度学习方法,并与基于高斯过程的第二种方法进行了比较。作为这项工作的结果,对高斯过程和深度学习随机正则化的能力进行了评估,以生成该时间序列的点估计及其置信区间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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