ArXiv TLDR

Exploiting Differential Flatness for Efficient Learning-based Model Predictive Control of Constrained Multi-Input Control Affine Systems

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2604.24706

Tobias A. Farger, Adam W. Hall, Angela P. Schoellig

eess.SYcs.LGcs.RO

TLDR

This paper proposes an efficient learning-based Model Predictive Control (MPC) approach for constrained multi-input systems by exploiting differential flatness.

Key contributions

  • Proposes an efficient learning-based MPC by exploiting differential flatness.
  • Controls general multi-input, nonlinear, affine systems with constraints.
  • Guarantees probabilistic Lyapunov decrease via two sequential convex optimizations.
  • Outperforms GP-MPC in efficiency and achieves competitive real-hardware tracking.

Why it matters

Learning-based controllers are often computationally inefficient. This work significantly improves their efficiency and broadens applicability to constrained multi-input systems, making data-driven control more practical for robotics.

Original Abstract

Learning-based control techniques use data from past trajectories to control systems with uncertain dynamics. However, learning-based controllers are often computationally inefficient, limiting their practicality. To address this limitation, we propose a learning-based controller that exploits differential flatness, a property of many robotic systems. Recent research on using flatness for learning-based control either is limited in that it (i) ignores input constraints, (ii) applies only to single-input systems, or (iii) is tailored to specific platforms. In contrast, our approach uses a system extension and block-diagonal cost formulation to control general multi-input, nonlinear, affine systems. Furthermore, it satisfies input and half-space flat state constraints and guarantees probabilistic Lyapunov decrease using only two sequential convex optimizations. We show that our approach performs similarly to, but is multiple times more efficient than, a Gaussian process model predictive controller in simulation, and achieves competitive tracking in real hardware experiments.

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