Nonlinear system identification heavily relies on the accuracy of nonlinear unit model selection. To improve recognition accuracy, the Sparse Bayesian Learning method is incorporated into the nonlinear subspace. Enhanced nonlinear subspace identification is proposed. The nonlinear term in the system is treated as an internal excitation. By applying low-level excitation, the response of the structure can be approximated as linear, allowing for the determination of the linear frequency response function of the structure. High-level excitation is then applied to separate the response caused by intrinsic nonlinear force excitation. The type of nonlinearity is evaluated using Spike-and-Slab Priors for Sparse Bayesian Learning. Finally, the screened nonlinear elements are substituted into subspace identification to determine nonlinear parameters. The effectiveness of this method in dealing with nonlinear stiffness and damping is verified through a simulation example and its robustness is further discussed. Experiments on negative stiffness systems also demonstrate the method's good applicability when dealing with complex damping.

Enhancing Nonlinear Subspace Identification Using Sparse Bayesian Learning with Spike and Slab Priors / Zhu, Rui; Chen, Sufang; Jiang, Dong; Xie, Shitao; Ma, Lei; Marchesiello, Stefano; Anastasio, Dario. - In: JOURNAL OF VIBRATION ENGINEERING & TECHNOLOGIES. - ISSN 2523-3920. - ELETTRONICO. - (2023). [10.1007/s42417-023-01030-3]

Enhancing Nonlinear Subspace Identification Using Sparse Bayesian Learning with Spike and Slab Priors

Marchesiello, Stefano;Anastasio, Dario
2023

Abstract

Nonlinear system identification heavily relies on the accuracy of nonlinear unit model selection. To improve recognition accuracy, the Sparse Bayesian Learning method is incorporated into the nonlinear subspace. Enhanced nonlinear subspace identification is proposed. The nonlinear term in the system is treated as an internal excitation. By applying low-level excitation, the response of the structure can be approximated as linear, allowing for the determination of the linear frequency response function of the structure. High-level excitation is then applied to separate the response caused by intrinsic nonlinear force excitation. The type of nonlinearity is evaluated using Spike-and-Slab Priors for Sparse Bayesian Learning. Finally, the screened nonlinear elements are substituted into subspace identification to determine nonlinear parameters. The effectiveness of this method in dealing with nonlinear stiffness and damping is verified through a simulation example and its robustness is further discussed. Experiments on negative stiffness systems also demonstrate the method's good applicability when dealing with complex damping.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2979324