Data-Driven Modelling - Machine Learning and Dynamical Systems

Data-Driven Modelling - Machine Learning and Dynamical Systems

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Machine learning enablers for system optimization and design

24 of 32

24 of 32

Machine learning enablers for system optimization and design

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Data-Driven Modelling - Machine Learning and Dynamical Systems

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  1. 1 Interpretable and Generalizable Machine Learning for Modeling and Control
  2. 2 Learning Missing Dynamics from Data
  3. 3 Collective variables in complex systems
  4. 4 Data-driven learning of control signals, parameters, and governing equations
  5. 5 Big Data and Machine Learning for Analysis of Numerical PDEs
  6. 6 Data-driven PDE modelling: Trick or treat!
  7. 7 Hidden Markov Models and Dynamical Systems
  8. 8 Optimising linear response of kernel dynamics and transfer operator extraction of the ENSO cycle
  9. 9 Data-Driven Prediction of Multistable Systems from Sparse Measurements
  10. 10 Output-Weighted Active Sampling for Uncertainty Quantification and Prediction of Rare Events
  11. 11 Data driven model reduction and the Koopman-Mori-Zwanzig formalism
  12. 12 Challenges for Building Surrogate Model for Nuclear Reaction Systems
  13. 13 Interpreted machine learning in fluid dynamics: Explaining relaminarisation events in wall-bounded
  14. 14 Recurrent Neural Networks for Spatiotemporal Prediction of Chaotic Dynamics
  15. 15 Data-driven approximation of the Koopman generator and Schrödinger operator
  16. 16 Data Driven Port Hamiltonian systems modelling and control
  17. 17 Learning Dynamical Systems with Side Information
  18. 18 Supervised learning from noisy observations
  19. 19 Probabilistic aggregation of large under-sampled Markov chains
  20. 20 Machine-learning of model error in ODEs
  21. 21 Modeling synchronization in forced turbulent oscillator flows
  22. 22 SINDy-PI: A Robust Algorithym for Parallel Implicit Sparse Identification of Nonlinear Dynamics
  23. 23 On mean subtraction and Dynamic Mode Decomposition
  24. 24 Machine learning enablers for system optimization and design
  25. 25 Transforming Signals to Images Using Attractor Reconstruction for Deep Learning
  26. 26 Gedmd: Data-Driven Analysis of Stochastic Dynamical Systems
  27. 27 Linear response for the dynamic Laplacian and finite-time coherent sets
  28. 28 Learning sparse dynamics of interacting systems
  29. 29 Variational methods and deep learning for high-dimensional dynamical systems
  30. 30 Resampling with neural networks for data-driven stochastic parameterization
  31. 31 Nonparametric Nonlinear Model Reduction for slow-fast SDEs near manifolds
  32. 32 Learning Dynamical Systems using Local Stability Priors

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