Data Augmented of Mechanical Fault Sound Signal based on Generative Adversarial Networks
Yining Yang,
Xiang Su,
Nan Li
Abstract:In this paper, a global average pooling convolutional neural network based on CNN is proposed for mechanical fault sound detection, which called as GCMD. To solve the data scarcity of mechanical fault sound data, a spectrum frame selection augmented method based on log Mel spectrum feature is proposed to augment the original data, that aim is to train GCMD and generate counter networks. In order to solve the unbalance problem of data set and further improve the generalization ability of GCMD, an augmented neur… Show more
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