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Nonlinear aeroelastic reduced order modeling by recurrent neural networks
Institution:1. State Key Laboratory for Strength and Vibration of Mechanical Structures, Shaanxi Key Laboratory of Environment and Control for Flight Vehicle, School of Aerospace, Xi''an Jiaotong University, Xi''an, China;2. Mechanics and Environment Research Center, Xi''an Aerospace Propulsion Institute, Xi''an, China;3. School of Aeronautics, Northwestern Polytechnical University, Xi''an, China
Abstract:The paper develops a reduction scheme based on the identification of continuous time recursive neural networks from input–output data obtained through high fidelity simulations of a nonlinear aerodynamic model at hand. The training of network synaptic weights is accomplished either with standard or automatic differentiation integration techniques. Particular emphasis is given to using such a reduced system in the determination of aeroelastic limit cycles. The related solutions are obtained with the adoption of two different approaches: one trivially producing a limit cycle through time marching simulations, and the other solving a periodic boundary value problem through a direct periodic time collocation with unknown period. The presented formulations are verified for a typical section and the BACT wing.
Keywords:Continuous time recurrent neural networks  Limit cycle oscillation  Periodic collocation method  Nonlinear aeroelasticity
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