Symplectic encoders for physics-constrained variational dynamics inference

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作者
Kiran Bacsa
Zhilu Lai
Wei Liu
Michael Todd
Eleni Chatzi
机构
[1] Future Resilient Systems,Singapore
[2] Environmental and Geomatic Engineering,ETH Centre
[3] NUS,ETH Zurich, Department of Civil
[4] HKUST (GZ),Department of Industrial Systems and Management
[5] Internet of Things Thrust,Department of Civil and Environmental Engineering
[6] HKUST,Department of Structural Engineering
[7] UC San Diego,undefined
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We propose a new variational autoencoder (VAE) with physical constraints capable of learning the dynamics of Multiple Degree of Freedom (MDOF) dynamic systems. Standard variational autoencoders place greater emphasis on compression than interpretability regarding the learned latent space. We propose a new type of encoder, based on the recently developed Hamiltonian Neural Networks, to impose symplectic constraints on the inferred a posteriori distribution. In addition to delivering robust trajectory predictions under noisy conditions, our model is capable of learning an energy-preserving latent representation of the system. This offers new perspectives for the application of physics-informed neural networks on engineering problems linked to dynamics.
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