Anomaly detection of hydro-turbine based on audio feature extraction of deep convolutional neural network
by Shengming He; Zhaocheng Wang; Bo Liao; Jie Zeng; Haorui Liu
International Journal of Computer Applications in Technology (IJCAT), Vol. 73, No. 3, 2023

Abstract: Anomaly detection of the hydro-turbine operating status is required to achieve safe monitoring of the operating status of hydro-turbines. The detection of hydro-turbine anomalies based on sound signals pertains to acoustic scene recognition. In this study, the features of sound signals were extracted based on the MobileFaceNet neural networks. Using the feature vectors, an improved Gaussian Mixed Model (i-GMM) was built, and the anomaly detection on the test samples was performed. The effectiveness of the i-GMM model anomaly detection method was verified to be capable of achieving 100% based on the bearing data set. The sound data collected from different measurement points in the hydro-turbine served as the training samples to develop the i-GMM model for the operation state. The model results output the anomalous sound events that occurred in the range of the hydro-turbine, which were manually labelled as a wide variety of construction activities.

Online publication date: Mon, 18-Dec-2023

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