Stable linear subspace identification: A machine learning approach

L Di Natale, M Zakwan, B Svetozarevic… - 2024 European …, 2024 - ieeexplore.ieee.org
2024 European Control Conference (ECC), 2024ieeexplore.ieee.org
Machine Learning (ML) and linear System Identification (SI) have been historically
developed independently. In this paper, we leverage well-established ML tools—especially
the automatic differentiation framework—to introduce SIMBa, a family of discrete linear multi-
step-ahead state-space SI methods using backpropagation. SIMBa relies on a novel Linear-
Matrix-Inequality-based free parametrization of Schur matrices to ensure the stability of the
identified model. We show how SIMBa generally outperforms traditional linear state-space …
Machine Learning (ML) and linear System Identification (SI) have been historically developed independently. In this paper, we leverage well-established ML tools — especially the automatic differentiation framework — to introduce SIMBa, a family of discrete linear multi-step-ahead state-space SI methods using backpropagation. SIMBa relies on a novel Linear-Matrix-Inequality-based free parametrization of Schur matrices to ensure the stability of the identified model. We show how SIMBa generally outperforms traditional linear state-space SI methods, and sometimes significantly, although at the price of a higher computational burden. This performance gap is particularly remarkable compared to other SI methods with stability guarantees, where the gain is frequently above 25% in our investigations, hinting at SIMBa's ability to simultaneously achieve state-of-the-art fitting performance and enforce stability. Interestingly, these observations hold for a wide variety of input-output systems and on both simulated and real-world data, showcasing the flexibility of the proposed approach. We postulate that this new SI paradigm presents a great extension potential to identify structured nonlinear models from data, and we hence open-source SIMBa on https://github.com/Cemempamoi/simba.
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