Engineering and Technology
Synthetic data generation for system identification: leveraging knowledge transfer from similar systems
D. Piga, M. Rufolo, et al.
This innovative research by Dario Piga, Matteo Rufolo, Gabriele Maroni, Manas Mejari, and Marco Forgione explores a groundbreaking method for generating synthetic data, enhancing model generalization and robustness in system identification, especially when real training data is hard to come by. Discover how a pre-trained meta-model predicts system behavior and generates synthetic output!
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