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Recognition of Acoustic Emission Signal based on the Algorithms of TDNN and GMM
2014
Applied Mathematics & Information Sciences
Friction fault diagnosis of rotating machinery based on acoustic emission (AE) technique is a research hotspot in recent years. The rotating machinery will produce multi-source noise during the operation process, so how to correctly identify the friction acoustic emission signals has become a key factor for accurate diagnosis of the fault. In this paper, it proposes a Gaussian mixed model (GMM) based on an embedded time delay neural network (TDNN) to identify friction acoustic emission signals.
doi:10.12785/amis/080254
fatcat:k3uyqyuczvbrxghwrutb435aia