Paper ID: 2503.23818 • Published Mar 31, 2025
Free Parametrization of L2-bounded State Space Models
Leonardo Massai, Giancarlo Ferrari-Trecate
Institute of Mechanical Engineering, Ecole Polytechnique Fédérale de Lausanne (EPFL)
TL;DR
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Structured state-space models (SSMs) have emerged as a powerful architecture
in machine learning and control, featuring stacked layers where each consists
of a linear time-invariant (LTI) discrete-time system followed by a
nonlinearity. While SSMs offer computational efficiency and excel in
long-sequence predictions, their widespread adoption in applications like
system identification and optimal control is hindered by the challenge of
ensuring their stability and robustness properties. We introduce L2RU, a novel
parametrization of SSMs that guarantees input-output stability and robustness
by enforcing a prescribed L-bound for all parameter values. This design
eliminates the need for complex constraints, allowing unconstrained
optimization over L2RUs by using standard methods such as gradient descent.
Leveraging tools from system theory and convex optimization, we derive a
non-conservative parametrization of square discrete-time LTI systems with a
specified L2-bound, forming the foundation of the L2RU architecture.
Additionally, we enhance its performance with a bespoke initialization strategy
optimized for long input sequences. Through a system identification task, we
validate L2RU's superior performance, showcasing its potential in learning and
control applications.
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