LGSYAug 20, 2025

Federated Nonlinear System Identification

arXiv:2508.15025v21 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses federated learning for nonlinear dynamical systems, offering incremental improvements in convergence for distributed control applications.

The paper tackles federated learning for nonlinear system identification, showing that convergence rates improve with more clients and depend on the feature map choice, with experimental validation on physical systems like pendulums and quadrotors.

We consider federated learning of linearly-parameterized nonlinear systems. We establish theoretical guarantees on the effectiveness of federated nonlinear system identification compared to centralized approaches, demonstrating that the convergence rate improves as the number of clients increases. Although the convergence rates in the linear and nonlinear cases differ only by a constant, this constant depends on the feature map $φ$, which can be carefully chosen in the nonlinear setting to increase excitation and improve performance. We experimentally validate our theory in physical settings where client devices are driven by i.i.d. control inputs and control policies exhibiting i.i.d. random perturbations, ensuring non-active exploration. Experiments use trajectories from nonlinear dynamical systems characterized by real-analytic feature functions, including polynomial and trigonometric components, representative of physical systems including pendulum and quadrotor dynamics. We analyze the convergence behavior of the proposed method under varying noise levels and data distributions. Results show that federated learning consistently improves convergence of any individual client as the number of participating clients increases.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes