Title data
Grüne, Lars ; Sperl, Mario ; Chatterjee, Debasish:
Representation of practical nonsmooth control Lyapunov functions by piecewise affine functions and neural networks.
Bayreuth
,
2025
. - 9 p.
DOI: https://doi.org/10.15495/EPub_UBT_00008178
This is the latest version of this item.
Project information
Project title: |
Project's official title Project's id Curse-of-dimensionality-free nonlinear optimal feedback control with deep neural networks. A compositionality-based approach via Hamilton-Jacobi-Bellman PDEs 463912816 |
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Project financing: |
Deutsche Forschungsgemeinschaft |
Abstract in another language
In this paper we give conditions under which control Lyapunov functions exist that can be represented by either piecewise affine functions or by neural networks with a suitable number of ReLU layers. The results provide a theoretical foundation for recent computational approaches for computing control Lyapunov functions with optimization-based and machine-learning techniques.
Further data
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Representation of practical nonsmooth control Lyapunov functions by piecewise affine functions and neural networks. (deposited 07 Jan 2025 14:17)
- Representation of practical nonsmooth control Lyapunov functions by piecewise affine functions and neural networks. (deposited 10 Feb 2025 07:40) [Currently Displayed]