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Intelligent fault diagnosis approach with unsupervised feature learning by stacked denoising autoencoder

机译:叠加去噪自动编码器的无监督特征学习智能故障诊断方法

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摘要

Condition monitoring and fault diagnosis are important for maintaining the system performance and guaranteeing the operational safety. The traditional data-driven approaches mostly incorporate well-defined features and methodologies such as supervised artificial intelligence algorithms. Prior knowledge of possible features and a large quantity of labelled condition data are needed. Besides, many traditional approaches require rebuilding or a retraining of the original model to diagnosis new conditions. The present study proposes an intelligent fault diagnosis approach that uses a deep neural network (DNN) based on stacked denoising autoencoder. Representative features are learned by applying the denoising autoencoder to the unlabelled data in an unsupervised manner. A DNN is then constructed and fine-tuned with just a few items of labelled data. The trained DNN achieves high performance in fault classification. Furthermore, new conditions can be correctly classified by simply fine-tuning the trained DNN model using a small amount of labelled data under the new conditions. The effectiveness of the proposed approach is evaluated using a case study of fault diagnosis of a bearing unit. The results indicate that the proposed method can extract representative features from massive unlabelled data on the system condition and achieve high performance in fault diagnosis.
机译:状态监视和故障诊断对于维持系统性能和确保操作安全至关重要。传统的数据驱动方法大多结合了定义明确的功能和方法,例如监督型人工智能算法。需要可能的特征和大量标记的条件数据的先验知识。此外,许多传统方法需要重建或重新训练原始模型以诊断新情况。本研究提出了一种智能故障诊断方法,该方法使用基于堆叠降噪自动编码器的深度神经网络(DNN)。通过以无监督的方式将降噪自动编码器应用于未标记的数据来学习代表性特征。然后,仅用几项标记数据构建DNN并对其进行微调。经过训练的DNN可以在故障分类中实现高性能。此外,可以通过在新条件下使用少量标记数据简单地微调训练后的DNN模型来正确分类新条件。通过对轴承单元故障诊断的案例研究来评估所提出方法的有效性。结果表明,该方法可以从系统条件下的大量未标记数据中提取出具有代表性的特征,并具有较高的故障诊断性能。

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