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Robust Functional Regression for Outlier Detection

机译:对异常值检测的强大功能回归

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In this paper we propose an outlier detection algorithm for temperature sensor data from jet engine tests. Effective identification of outliers would enable engine problems to be examined and resolved efficiently. Outlier detection in this data is challenging because a human controller determines the speed of the engine during each manoeuvre. This introduces variability which can mask abnormal behaviour in the engine response. We therefore suggest modelling the dependency between speed and temperature in the process of identifying abnormalities. The engine temperature has a delayed response with respect to the engine speed, which we will model using robust functional regression. We then apply functional depth with respect to the residuals to rank the samples and identify the outliers. The effectiveness of the outlier detection algorithm is shown in a simulation study. The algorithm is also applied to real engine data, and identifies samples that warrant further investigation.
机译:在本文中,我们提出了一种来自喷气发动机测试的温度传感器数据的异常检测算法。有效的异常值的识别将使发动机问题有效地检查和解决。在此数据中的异常检测是具有挑战性的,因为人类控制器在每个操纵期间确定发动机的速度。这引入了可变性,可以掩盖发动机响应中的异常行为。因此,我们建议在识别异常的过程中建立速度和温度之间的依赖性。发动机温度对发动机速度具有延迟响应,我们将使用鲁棒功能回归模拟。然后,我们将功能深度相对于残差施加,以对样品进行排序并识别异常值。异常检测算法的有效性显示在模拟研究中。该算法也应用于真实的发动机数据,并识别保证进一步调查的样本。

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