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An Incorrect Data Detection Method for Big Data Cleaning of Machinery Condition Monitoring

机译:机械状态监测大数据清洗的错误数据检测方法

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摘要

The presence of incorrect data leads to the decrease of condition-monitoring big data quality. As a result, unreliable or misleading results are probably obtained by analyzing these poor-quality data. In this paper, to improve the data quality, an incorrect data detection method based on an improved local outlier factor (LOF) is proposed for data cleaning. First, a sliding window technique is used to divide data into different segments. These segments are considered as different objects and their attributes consist of time-domain statistical features extracted from each segment, such as mean, maximum and peak-to-peak value. Second, a kernel-based LOF (KLOF) is calculated using these attributes to evaluate the degree of each segment being incorrect data. Third, according to these KLOF values and a threshold value, incorrect data are detected. Finally, a simulation of vibration data generated by a defective rolling element bearing and three real cases concerning a fixed-axle gearbox, a wind turbine, and a planetary gearbox are used to verify the effectiveness of the proposed method, respectively. The results demonstrate that the proposed method is able to detect both missing segments and abnormal segments, which are two typical incorrect data, effectively, and thus is helpful for big data cleaning of machinery condition monitoring.
机译:错误数据的存在导致状态监视大数据质量下降。结果,通过分析这些质量较差的数据可能会获得不可靠或误导性的结果。为了提高数据质量,提出了一种基于改进的局部离群因子(LOF)的错误数据检测方法。首先,使用滑动窗口技术将数据划分为不同的段。这些段被认为是不同的对象,它们的属性由从每个段提取的时域统计特征组成,例如平均值,最大值和峰峰值。其次,使用这些属性计算基于内核的LOF(KLOF),以评估每个段作为不正确数据的程度。第三,根据这些KLOF值和阈值,检测到错误的数据。最后,通过对有缺陷的滚动元件轴承产生的振动数据进行仿真,并分别对涉及固定轴齿轮箱,风力涡轮机和行星齿轮箱的三个实际情况进行了验证,以验证该方法的有效性。结果表明,该方法能够有效地检测出两个典型的不正确数据,即缺失段和异常段,从而有助于对机械状态监测的大数据清洗。

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