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Article Dans Une Revue Applied Acoustics Année : 2021

Performances of the double modal synthesis for the prediction of the transient self-sustained vibration and squeal noise

Résumé

This paper presents an efficient reduction method for predicting the nonlinear transient and steady state squeal events in mechanical systems subjected to friction-induced vibration and noise. This proposed reduction technique is based on the Double Modal Synthesis (DMS) method that involves the use of a classical Craig & Bampton modal reduction on each substructure considering the interface surfaces associated to a condensation at the frictional interface based on complex modes. In this paper, the performances of some reduced bases based on the DMS strategy are investigated in the case of a finite element model of a simplified disc/pads system. The originality of the present work is to propose a comprehensive study on the convergence of the DMS method in order to predict not only the stability or the limit cycles of a simplified brake system but also the transient nonlinear self-excited vibrations, as well as the squeal noise. A special attention is brought to the convergence of the DMS method and more precisely the number of interfaces modes required to provide satisfactory results in regard to various criterion used to characterize the squeal.
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hal-03260508 , version 1 (15-06-2021)

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G. Corradi, Jean-Jacques Sinou, S. Besset. Performances of the double modal synthesis for the prediction of the transient self-sustained vibration and squeal noise. Applied Acoustics, 2021, 175, pp.107807. ⟨10.1016/j.apacoust.2020.107807⟩. ⟨hal-03260508⟩
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