Mechanism-driven improved SVMD: an indirect approach for rail corrugation detection using axle box acceleration
Peishan Liu,
Jianwei Yang,
Changdong Liu
et al.
Abstract:Addressing the challenge of the current inability to qualitatively identify rail corrugation damage accurately from axle box acceleration data, this study proposes a novel approach. To indirectly identify rail corrugation from axle box acceleration, we introduce an improved successive variational mode decomposition (SVMD) algorithm, coupled with a deep learning model for corrugation recognition. First, a numerical model of the vehicle-rail-track slab system is established, considering rail corrugation. Indicat… Show more
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