System Level Synthesis for Affine Control Policies: Model Based and Data-Driven Settings
System Level Synthesis for Affine Control Policies: Model Based and Data-Driven Settings
There is an increasing need for effective control of systems with complex dynamics, particularly through data-driven approaches. System Level Synthesis (SLS) has emerged as a powerful framework that facilitates the control of large-scale systems while accounting for model uncertainties. SLS approaches are currently limited to linear systems and time-varying linear control policies, thus limiting the class of achievable control strategies. We introduce a novel closed-loop parameterization for time-varying affine control policies, extending the SLS framework to a broader class of systems and policies. We show that the closed-loop behavior under affine policies can be equivalently characterized using past system trajectories, enabling a fully data-driven formulation. This parameterization seamlessly integrates affine policies into optimal control problems, allowing for a closed-loop formulation of general Model Predictive Control (MPC) problems. To the best of our knowledge, this is the first work to extend SLS to affine policies in both model-based and data-driven settings, enabling an equivalent formulation of MPC problems using closed-loop maps. We validate our approach through numerical experiments, demonstrating that our model-based and data-driven affine SLS formulations achieve performance on par with traditional model-based MPC.
Lukas Schüepp、Giulia De Pasquale、Florian D?rfler、Carmen Amo Alonso
自动化基础理论自动化技术、自动化技术设备计算技术、计算机技术
Lukas Schüepp,Giulia De Pasquale,Florian D?rfler,Carmen Amo Alonso.System Level Synthesis for Affine Control Policies: Model Based and Data-Driven Settings[EB/OL].(2025-04-02)[2025-05-05].https://arxiv.org/abs/2504.01677.点此复制
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