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High-dimensional time series prediction using kernel-based Koopman mode regression
Authors:Jia-Chen Hua  Farzad Noorian  Duncan Moss  Philip H W Leong  Gemunu H Gunaratne
Institution:1.Department of Mechanical Engineering,Tarbiat Modares University,Tehran,Iran;2.Department of Mechanical Engineering,Shahid Rajaee Teacher Training University,Tehran,Iran;3.Mechanical Rotary Equipment Department,Niroo Research Institute,Tehran,Iran
Abstract:This paper investigates the nonlinear dynamics of a doubly clamped piezoelectric nanobeam subjected to a combined AC and DC loadings in the presence of three-to-one internal resonance. Surface effects are taken into account in the governing equation of motion to incorporate the associated size effects at nanoscales. The reduced-order model equation (ROM) is obtained based on the Galerkin method. The multiple scales method is applied directly to the nonlinear equation of motion and associated boundary conditions to obtain the modulation equations. The equilibrium solutions of the modulation equations and the dynamic solutions of the ROM equation are investigated in the case of primary and principal parametric resonances of the first mode. Stability, bifurcations and frequency response curves of the nanobeam are investigated. Dynamic behaviors of the motion are shown in the form of time traces, phase portraits, Poincare sections and fast Fourier transforms. The results indicate rich dynamic behaviors such as Hopf bifurcations, periodic and quasiperiodic motions in both directly and indirectly excited modes illustrating the influence of modal interactions on the response.
Keywords:
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