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A Hybrid Scheme for Fault Diagnosis with Partially Labeled Sets of Observations

机译:带有部分标记观测值的混合故障诊断方案

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Machine learning techniques are widely used for diagnosing faults to guarantee the safe and reliable operation of the systems. Among various techniques, semi-supervised learning can help in diagnosing faulty states and decision making in partially labeled data, where only a few number of labeled observations along with a large number of unlabeled observations are collected from the process. Thus, it is crucial to conduct a critical study on the use of semi-supervised techniques for both dimensionality reduction and fault classification. In this work, three state-of-the- art semi-supervised dimensionality reduction techniques are used to produce informative features for semi-supervised fault classifiers. This study aims to achieve the best pair of the semisupervised dimensionality reduction and classification techniques that can be integrated into the diagnostic scheme for decision making under partially labeled sets of observations.
机译:机器学习技术被广泛用于诊断故障,以确保系统的安全可靠运行。在各种技术中,半监督学习可以帮助诊断故障状态并做出部分标记数据的决策,其中从该过程中仅收集少量标记的观察值以及大量未标记的观察值。因此,对使用半监督技术进行降维和断层分类的研究至关重要。在这项工作中,使用了三种最新的半监督降维技术来为半监督故障分类器提供有用的信息。这项研究旨在获得最好的一对半监督降维和分类技术,这些技术可以集成到诊断方案中,以在部分标记的观察结果集下进行决策。

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