Aeroelasticity & Structural Dynamics in a Fast Changing World
17 – 21 June 2024, The Hague, The Netherlands
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Surrogate Modeling of Highly Flexible Structures and Aerodynamics Using Neural Networks


Go-down ifasd2024 Tracking Number 132

Presentation:
Session: Data driven methods 2
Room: Room 1.1
Session start: 11:00 Thu 20 Jun 2024

Vitor Borges Santos   vitor.santos@ga.ita.br
Affifliation: Instituto Tecnológico de Aeronáutica

Breno Soares da Costa Vieira   breno.vieira64@gmail.com
Affifliation: Instituto Tecnológico de Aeronáutica

Flávio Luiz Cardoso-Ribeiro   flavio.ribeiro@gp.ita.br
Affifliation: Instituto Tecnológico de Aeronáutica

Antônio Bernardo Guimarães Neto   antonio@ita.br
Affifliation: Instituto Tecnológico de Aeronáutica


Topics: - Highly Flexible Aircraft Structures (High and low fidelity (un)coupled analysis methods:), - Reduced Order Modeling (High and low fidelity (un)coupled analysis methods:), - Aeroelasticity in Conceptual Aircraft Design (Vehicle analysis/design using model-based and data driven models)

Abstract:

The renaissance of neural networks in the scientific community in recent years has brought new perspectives for improving the computational efficiency of traditional modeling techniques. Hamiltonian neural networks leverage the energy-preserving properties of the Hamiltonian formalism to provide surrogate models with increased interpretability compared to conventional feed-forward models. In this study, we employ a lumped-mass multibody method to derive the equations of motion of two highly flexible structures. We perform a model order reduction via modal decomposition while preserving the nonlinearities with the use of exact kinematic relations. After validating full- and reduced-order models, we use them to produce datasets and train the neural networks, which serve as ready-to-use surrogate models. Preliminary findings show that the surrogate models based on neural networks can significantly reduce the time necessary to simulate the free response of the structures. Furthermore, we demonstrate that surrogate models based on Hamiltonian neural networks have energy-preserving capabilities, maintaining accuracy levels even for long simulations. Due to their architecture, when external loads are considered, the surrogate models require the analytical calculation of the generalized forces, jeopardizing the efficiency gains obtained by our approach. We also present initial findings on the use of neural networks for faster aerodynamic models for flexible aircraft, particularly as surrogate models for the vortex-lattice method. By using a neural network as the aerodynamic surrogate model in a specific flexible aircraft simulation framework, the computational costs were reduced by a factor of 100, on average. The outcomes of this study demonstrate that surrogate models based on neural networks can soon become an efficient and reliable alternative for modeling arbitrarily flexible aircraft, provided the current limitations are addressed.