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A Semi-Supervised Diagnostic Framework Based on the Surface Estimation of Faulty Distributions

机译:基于故障分布的表面估计的半监督诊断框架

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Design of the data-driven diagnostic systems usually requires to have labeled data during the training session. This paper aims to design a hybrid data-driven framework for diagnosing faults, where the data labels are not available to a large extent. This hybrid framework has five steps for transforming raw vibration signals to informative sets of samples for decision making. It uses several state-of-the-art approaches for feature extraction and semi-supervised feature reduction. The decision-making step uses a number of state-of-the-art semi-supervised learners. This step also comprises a novel surface estimation approach that is developed for SSL. The proposed hybrid framework is applied for diagnosing bearing defects in induction motors and validated based on four scenarios, each of which is experimented with different amounts of labeled samples. The attained diagnostic accuracies show the efficiency of the proposed hybrid framework, including the novel semi-supervised learner in classifying bearing defects, regardless of the number of labeled samples.
机译:数据驱动的诊断系统的设计通常需要在培训期间加标签的数据。本文旨在设计一种用于诊断故障的混合数据驱动框架,在该框架中,数据标签在很大程度上不可用。该混合框架有五个步骤,可将原始振动信号转换为内容丰富的样本集,以供决策。它使用几种最先进的方法进行特征提取和半监督特征缩减。决策步骤使用了许多最新的半监督学习者。此步骤还包括针对SSL开发的新颖表面估计方法。提出的混合框架用于诊断感应电动机中的轴承缺陷,并基于四种情况进行了验证,每种情况均使用不同数量的标记样品进行了实验。所获得的诊断准确性表明了所提出的混合框架的效率,包括新型的半监督学习者对轴承缺陷进行分类的方法,无论标记样品的数量如何。

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