SPAILGOct 14, 2021

CNN-DST: ensemble deep learning based on Dempster-Shafer theory for vibration-based fault recognition

arXiv:2110.07191v118 citations
Originality Incremental advance
AI Analysis

This work addresses fault detection in structures like turbine blades, which is critical for maintenance and safety, but it is incremental as it builds on existing ensemble and deep learning methods.

The study tackled fault recognition in turbine blades using vibration data by proposing an ensemble deep learning framework combining CNNs and Dempster-Shafer theory, achieving an average prediction accuracy of 97.19% and demonstrating high noise-resistance.

Nowadays, using vibration data in conjunction with pattern recognition methods is one of the most common fault detection strategies for structures. However, their performances depend on the features extracted from vibration data, the features selected to train the classifier, and the classifier used for pattern recognition. Deep learning facilitates the fault detection procedure by automating the feature extraction and selection, and classification procedure. Though, deep learning approaches have challenges in designing its structure and tuning its hyperparameters, which may result in a low generalization capability. Therefore, this study proposes an ensemble deep learning framework based on a convolutional neural network (CNN) and Dempster-Shafer theory (DST), called CNN-DST. In this framework, several CNNs with the proposed structure are first trained, and then, the outputs of the CNNs selected by the proposed technique are combined by using an improved DST-based method. To validate the proposed CNN-DST framework, it is applied to an experimental dataset created by the broadband vibrational responses of polycrystalline Nickel alloy first-stage turbine blades with different types and severities of damage. Through statistical analysis, it is shown that the proposed CNN-DST framework classifies the turbine blades with an average prediction accuracy of 97.19%. The proposed CNN-DST framework is benchmarked with other state-of-the-art classification methods, demonstrating its high performance. The robustness of the proposed CNN-DST framework with respect to measurement noise is investigated, showing its high noise-resistance. Further, bandwidth analysis reveals that most of the required information for detecting faulty samples is available in a small frequency range.

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