The anomaly detection problem for univariate or multivariate time series is a critical question in many practical applications as industrial processes control, biological measures, engine monitoring, supervision of all kinds of behavior. In this paper we propose a simple and empirical approach to detect anomalies in the behavior of multivariate time series. The approach is based on the empirical estimation of the conditional quantiles of the data, which provides upper and lower bounds for the confidence tubes. The method is tested on artificial data and its effectiveness has been proven in a real framework such as that of the monitoring of aircraft engines.
翻译:在工业流程控制、生物措施、发动机监测、各种行为的监督等许多实际应用中,单体或多变时间序列异常现象的探测问题是关键问题。在本文件中,我们提出了一种简单和实证的方法,以探测多变时间序列行为中的异常现象。这种方法基于对数据有条件的分数的实证估计,该数据为信任管提供了上下限。该方法以人工数据进行测试,其有效性在监测飞机引擎等实际框架内得到了证明。