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A Hierarchical Surrogate Model for Efficient Multi-Task Parameter Learning in Closed-Loop Control

Published: August 18, 2025 | arXiv ID: 2508.12738v2

By: Sebastian Hirt , Lukas Theiner , Maik Pfefferkorn and more

Potential Business Impact:

Teaches robots to learn new tasks faster.

Many control problems require repeated tuning and adaptation of controllers across distinct closed-loop tasks, where data efficiency and adaptability are critical. We propose a hierarchical Bayesian optimization (BO) framework that is tailored to efficient controller parameter learning in sequential decision-making and control scenarios for distinct tasks. Instead of treating the closed-loop cost as a black-box, our method exploits structural knowledge of the underlying problem, consisting of a dynamical system, a control law, and an associated closed-loop cost function. We construct a hierarchical surrogate model using Gaussian processes that capture the closed-loop state evolution under different parameterizations, while the task-specific weighting and accumulation into the closed-loop cost are computed exactly via known closed-form expressions. This allows knowledge transfer and enhanced data efficiency between different closed-loop tasks. The proposed framework retains sublinear regret guarantees on par with standard black-box BO, while enabling multi-task or transfer learning. Simulation experiments with model predictive control demonstrate substantial benefits in both sample efficiency and adaptability when compared to purely black-box BO approaches.

Country of Origin
🇩🇪 Germany

Page Count
8 pages

Category
Electrical Engineering and Systems Science:
Systems and Control