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Unsupervised Fault Detection Based on Laplacian Score and TEDA

机译:基于Laplacian得分和TEDA的无监督故障检测

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The drawback to Typicality and Eccentricity Data Analytics(TEDA), a classic unsupervised learning algorithm, is that TEDA requires strict priori knowledge during the stage of data preprocessing. In view of the disadvantage, a method of unsupervised fault detection called Laplacian Score with TEDA (LS-TEDA) is proposed. Features are selected by LS and unsupervised fault detection is realized by using TEDA in this method. LS-TEDA has been applied with Lublin Sugar Factory and the result shows high accuracy in fault detection.
机译:典型程度和偏心数据分析(TEDA)是经典无监督的学习算法的缺点是TEDA在数据预处理阶段需要严格的先验知识。鉴于缺点,提出了一种令人难过的故障检测方法,称为Laplacian评分与TEDA(LS-TEDA)。通过在此方法中使用TEDA,通过LS和无监督故障检测选择功能。 LS-TEDA已应用于卢布林糖厂,结果显示出高精度检测。

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