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Modelling and Forecasting of the ~(222)Rn Radiation Level Time Series at the Canfranc Underground Laboratory

机译:坎弗朗克地下实验室〜(222)Rn辐射水平时间序列的建模和预测

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The ~(222)Rn level at underground laboratories, where Physics experiments of low-background are installed, is the largest source of background; and it is the main distortion for obtaining high accuracy results. At Spain, the Canfranc Underground Laboratory hosts ground-breaking experiments, such as Argon Dark Matter-It aimed at the dark matter direct searches. For the collaborations exploiting these experiments, the modelling and forecasting of the ~(222)Rn level are very relevant tasks for efficient planning activities of installation and maintenance. In this paper, four years of values of ~(222)Rn level from the Canfranc Underground Laboratory are analysed using methods such as Holt-Winters, AutoRe-gressive Integrated Moving Averages, Seasonal and Trend Decomposition using Loess, Feed-Forward Neural Networks, and Convolutional Neural Networks. In order to evaluate the performance of these methods, both the Mean Squared Error and the Mean Absolute Error are used. Both metrics determine that the Seasonal and Trend Decomposition using Loess no periodic, and the Convolutional Neural Networks, are the techniques which obtain the best predictive results. This is the first time that the mentioned data are investigated, and it constitutes an excellent example of scientific time series with relevant implications for the quality of the scientific results of the experiments.
机译:地下实验室的〜(222)Rn水平是低背景的物理来源,该实验室安装了低背景的物理实验。它是获得高精度结果的主要失真。在西班牙,坎弗朗克地下实验室主持了一些突破性的实验,例如Argon Dark Matter-It,它旨在直接搜索暗物质。对于利用这些实验的协作,〜(222)Rn级别的建模和预测对于有效规划安装和维护活动非常重要。在本文中,使用Holt-Winters,自回归综合移动平均线,基于黄土的季节和趋势分解,前馈神经网络,和卷积神经网络。为了评估这些方法的性能,均使用了均方误差和均值绝对误差。两种度量标准都确定使用Loess无周期的季节和趋势分解以及卷积神经网络是获得最佳预测结果的技术。这是首次对上述数据进行调查,它是科学时间序列的一个极好的示例,对实验科学结果的质量具有重要意义。

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