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Keywords: Unsupervised learning
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Journal Articles
Semisupervised fault diagnosis of aeroengine based on denoising autoencoder and deep belief network
Available to Purchase
Aircraft Engineering and Aerospace Technology: An International Journal (2022) 94 (10): 1772–1779.
Published: 05 May 2022
...) is proposed for aeroengine. Multiple state parameters of aeroengine with long time series are processed to form high-dimensional fault samples and corresponding fault types are taken as sample labels. DAE is applied for unsupervised learning of fault samples, so as to achieve denoised dimension-reduction...
