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The Outlier Interval Detection Algorithms on Astronautical Time Series Data

机译:航天时间序列数据的异常值间隔检测算法

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摘要

The Outlier Interval Detection is a crucial technique to analyze spacecraft fault, locate exception, and implement intelligent fault diagnosis system. The paper proposes two OID algorithms on astronautical Time Series Data, that is, variance based OID (VOID) and FFT and k nearest Neighbour based OID (FKOID). The VOID algorithm divides TSD into many intervals and measures each interval's outlier score according to its variance. This algorithm can detect the outlier intervals with great fluctuation in the time domain. It is a simple and fast algorithm with less time complexity, but it ignores the frequency information. The FKOID algorithm extracts the frequency information of each interval by means of Fast Fourier Transform, so as to calculate the distances between frequency features, and adopts the KNN method to measure the outlier score according to the sum of distances between the interval's frequency vector and the K nearest frequency vectors. It detects the outlier intervals in a refined way at an appropriate expense of the time and is valid to detect the outlier intervals in both frequency and time domains.
机译:离群值间隔检测是分析航天器故障,定位异常并实现智能故障诊断系统的关键技术。本文针对航天时间序列数据提出了两种OID算法,即基于方差的OID(VOID)和FFT,以及基于k最近邻的OID(FKOID)。 VOID算法将TSD分为多个间隔,并根据其方差来测量每个间隔的离群值。该算法可以检测到时域波动较大的离群值区间。这是一种简单,快速的算法,时间复杂度较低,但是它忽略了频率信息。 FKOID算法通过快速傅立叶变换提取每个间隔的频率信息,从而计算出频率特征之间的距离,并采用KNN方法根据间隔频率矢量与距离之间的距离之和来测量离群值。 K个最近的频率向量。它以适当的时间开销以精确的方式检测异常值间隔,并且有效地检测频域和时域中的异常值间隔。

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  • 来源
    《Mathematical Problems in Engineering》 |2013年第2期|979035.1-979035.6|共6页
  • 作者

    Wei Hu; Junpeng Bao;

  • 作者单位

    School of Electronic and Information Engineering, Xi'an Jiaotong University, Xi'an 710049, China;

    School of Electronic and Information Engineering, Xi'an Jiaotong University, Xi'an 710049, China;

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