Recurrent neural networks, such as Gated Recurrent Unit (GRU) networks, are widely adopted in system identification due to their ability to model nonlinear dynamical behaviors. However, their complexity poses barriers for embedded applications requiring low memory footprint and fast inference. Furthermore, standard training does not guarantee Input-to-State Stability (ISS) or Incremental ISS (δISS). These properties are vital not only for safe control deployment [3], but also to ensure that the identified model is physically consistent, preventing unbounded predictions in long-term simulations. In this work, we analyze Minimal Gated Unit (MGU) networks [1], lightweight architectures simplifying GRU networks. We extend the stability analysis framework from [3] to the MGU network, deriving sufficient parametric conditions for δISS, and propose a stability-promoting training strategy. Validation shows this yields safe models without sacrificing accuracy

(2026). Stability Properties of Minimal Gated Unit Neural Networks . Retrieved from https://hdl.handle.net/10446/327451

Stability Properties of Minimal Gated Unit Neural Networks

De Carli, Stefano;Previtali, Davide;Mazzoleni, Mirko
2026-01-01

Abstract

Recurrent neural networks, such as Gated Recurrent Unit (GRU) networks, are widely adopted in system identification due to their ability to model nonlinear dynamical behaviors. However, their complexity poses barriers for embedded applications requiring low memory footprint and fast inference. Furthermore, standard training does not guarantee Input-to-State Stability (ISS) or Incremental ISS (δISS). These properties are vital not only for safe control deployment [3], but also to ensure that the identified model is physically consistent, preventing unbounded predictions in long-term simulations. In this work, we analyze Minimal Gated Unit (MGU) networks [1], lightweight architectures simplifying GRU networks. We extend the stability analysis framework from [3] to the MGU network, deriving sufficient parametric conditions for δISS, and propose a stability-promoting training strategy. Validation shows this yields safe models without sacrificing accuracy
2026
Inglese
45th Benelux Meeting on Systems and Control - Book of Abstracts
Bianchin, Gianluca; Hendrickx,Julien; Jungers, Raphaël
183
183
online
Belgium
Louvain-la-Neuve
UCLouvain
45th Benelux Meeting on Systems and Control, Lommel, Belgium, 24-26 March 2026
45th
Lommel, Belgium
24-26 March 2026
internazionale
contributo
Settore IINF-04/A - Automatica
   Knowledge Extraction, Machine Learning and other AI approaches for secure, robust, frugal and explainable solutions in Defence Applications
   KOIOS
   UNIONE EUROPEA - COMMISSIONE EUROPEA
   101103770
https://beneluxmeeting.be/2026/uploads/boa2026.pdf
De Carli, Stefano; Previtali, Davide; Mazzoleni, Mirko
reserved
3
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.02 Abstract in atti di convegno - Conference abstracts
Non definito
274
info:eu-repo/semantics/conferenceObject
(2026). Stability Properties of Minimal Gated Unit Neural Networks . Retrieved from https://hdl.handle.net/10446/327451
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/327451
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