Forgione et al., 2025 - Google Patents
Manifold meta-learning for reduced-complexity neural system identificationForgione et al., 2025
View PDF- Document ID
- 11859584036557447404
- Author
- Forgione M
- Chakrabarty A
- Piga D
- Rufolo M
- Bemporad A
- Publication year
- Publication venue
- arXiv preprint arXiv:2504.11811
External Links
Snippet
System identification has greatly benefited from deep learning techniques, particularly for modeling complex, nonlinear dynamical systems with partially unknown physics where traditional approaches may not be feasible. However, deep learning models often require …
Classifications
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- G—PHYSICS
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