Journal Article10.1109/TIE.2018.2844805
Multiscale Convolutional Neural Networks for Fault Diagnosis of Wind Turbine Gearbox
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TL;DR: Experimental results and comprehensive comparison analysis have demonstrated the superiority of the proposed MSCNN approach, thus providing an end-to-end learning-based fault diagnosis system for WT gearbox without additional signal processing and diagnostic expertise.
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Abstract: This paper proposes a novel intelligent fault diagnosis method to automatically identify different health conditions of wind turbine (WT) gearbox. Unlike traditional approaches, where feature extraction and classification are separately designed and performed, this paper aims to automatically learn effective fault features directly from raw vibration signals while classify the type of faults in a single framework, thus providing an end-to-end learning-based fault diagnosis system for WT gearbox without additional signal processing and diagnostic expertise. Considering the multiscale characteristics inherent in vibration signals of a gearbox, a new multiscale convolutional neural network (MSCNN) architecture is proposed to perform multiscale feature extraction and classification simultaneously. The proposed MSCNN incorporates multiscale learning into the traditional CNN architecture, which has two merits: 1) high-level fault features can be effectively learned by the hierarchical learning structure with multiple pairs of convolutional and pooling layers; and 2) multiscale learning scheme can capture complementary and rich diagnosis information at different scales. This greatly improves the feature learning ability and enables better diagnosis performance. The proposed MSCNN approach is evaluated through experiments on a WT gearbox test rig. Experimental results and comprehensive comparison analysis with respect to the traditional CNN and traditional multiscale feature extractors have demonstrated the superiority of the proposed method.
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Citations
Temporal Attention Convolutional Neural Network for Estimation of Icing Probability on Wind Turbine Blades
TL;DR: This novel data-driven model introduces a temporal attention module into a convolutional neural network, with the goal of determining the importance of sensors and timesteps and automatically identifying discriminative features from raw sensor data.
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Dynamic Routing-based Multimodal Neural Network for Multi-sensory Fault Diagnosis of Induction Motor
TL;DR: The effectiveness and robustness of developed DRMNN is demonstrated in the experimental studies performed on a motor test rig, and in comparison with similar neural networks without data fusion and other state-of-art fusion techniques, the proposed DRMNN yields better performance.
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Self-supervised signal representation learning for machinery fault diagnosis under limited annotation data
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TL;DR: Li et al. as mentioned in this paper proposed a self-supervised representation learning (SS-Learning) framework for the classification of low-labeled signals in the field of machinery fault diagnosis, which can directly learn representative features that can be used for signal classification from unlabeled signals.
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Planetary gearbox fault diagnosis using bidirectional-convolutional LSTM networks
TL;DR: In this paper , a deep neural network based on bidirectional-convolutional long short-term memory (BiConvLSTM) networks was proposed to determine the type, location, and direction of planetary gearbox faults by extracting spatial and temporal features from both vibration and rotational speed measurements automatically and simultaneously.
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Discriminative feature learning using a multiscale convolutional capsule network from attitude data for fault diagnosis of industrial robots
TL;DR: In this article , a multiscale convolutional capsule network (MCCN) is proposed to learn discriminative features from the attitude data collected by the attitude sensor.
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