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首页> 外文期刊>Engineering Applications of Artificial Intelligence >The model of an anomaly detector for HiLumi LHC magnets based on Recurrent Neural Networks and adaptive quantization
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The model of an anomaly detector for HiLumi LHC magnets based on Recurrent Neural Networks and adaptive quantization

机译:基于递归神经网络和自适应量化的HiLumi LHC磁体异常检测器模型

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This paper focuses on an examination of an applicability of Recurrent Neural Network models for detecting anomalous behavior of the CERN superconducting magnets. In order to conduct the experiments, the authors designed and implemented an adaptive signal quantization algorithm and a custom Gated Recurrent Unit-based detector and developed a method for the detector parameters selection.Three different datasets were used for testing the detector. Two artificially generated datasets were used to assess the raw performance of the system whereas the dataset intended for real-life experiments and model training was composed of the signals acquired from a new type of magnet, to be used during High-Luminosity Large Hadron Collider project. Several different setups of the developed anomaly detection system were evaluated and compared with state-of-the-art One Class Support Vector Machine (OC-SVM) reference model operating on the same data. The OC-SVM model was equipped with a rich set of feature extractors accounting for a range of the input signal properties.It was determined in the course of the experiments that the detector, along with its supporting design methodology, reaches F1 equal or very close to 1 for almost all test sets. Due to the profile of the data, the setup with the lowest maximum false anomaly length of the detector turned out to perform the best among all five tested configuration schemes of the detection system. The quantization parameters have the biggest impact on the overall performance of the detector with the best values of input/output grid equal to 16 and 8, respectively. The proposed solution of the detection significantly outperformed OC-SVM-based detector in most of the cases, with much more stable performance across all the datasets.
机译:本文着重研究递归神经网络模型在检测CERN超导磁体异常行为方面的适用性。为了进行实验,作者设计并实现了自适应信号量化算法和定制的基于门控循环单元的探测器,并开发了一种用于探测器参数选择的方法。使用了三个不同的数据集来测试探测器。两个人工生成的数据集用于评估系统的原始性能,而用于现实生活中的实验和模型训练的数据集则由从新型磁体获取的信号组成,这些信号将在高光度大型强子对撞机项目中使用。对已开发的异常检测系统的几种不同设置进行了评估,并与对相同数据进行操作的最新一类支持向量机(OC-SVM)参考模型进行了比较。 OC-SVM模型配备了一组丰富的特征提取器,这些特征提取器考虑了一系列输入信号特性。在实验过程中,确定了检测器及其支持的设计方法可以达到F1相等或非常接近几乎所有测试集为1。由于数据的概况,在检测器的所有五个测试配置方案中,检测器具有最低的最大最大错误异常长度的设置被证明是性能最好的。量化参数对检测器的整体性能影响最大,输入/输出网格的最佳值分别等于16和8。在大多数情况下,所提出的检测解决方案明显优于基于OC-SVM的检测器,并且在所有数据集上的性能都更加稳定。

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