Anomaly detection by neural network models and statistical time series analysis

R. Kozma, M. Kitamura, M. Sakuma, Y. Yokoyama
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引用次数: 44

Abstract

The problem of detecting weak anomalies in temporal signals is addressed. The performance of statistical methods utilizing the evaluation of the intensity of time-dependent fluctuations is compared with the results obtained by a layered artificial neural network model. The desired accuracy of the approximation by the neural network at the end of the learning phase has been estimated by analyzing the statistics of the learning data. The application of the obtained results to the analysis of actual anomaly data from a nuclear reactor showed that neural networks can identify the onset of anomalies with a reasonable success, while usual statistical methods were unable to make distinction between normal and abnormal patterns.<>
利用神经网络模型和统计时间序列分析进行异常检测
解决了时间信号中微弱异常的检测问题。利用时间相关波动强度评价的统计方法的性能与分层人工神经网络模型得到的结果进行了比较。通过分析学习数据的统计量,估计了神经网络在学习阶段结束时所期望的逼近精度。将所得结果应用于核反应堆实际异常数据的分析表明,神经网络可以较好地识别异常的开始,而通常的统计方法无法区分正常和异常模式。
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