Signatures Meet Dynamic Programming: Generalizing Bellman Equations for Trajectory Following
This work provides a new control framework for robotics and optimal control tasks, offering incremental improvements in handling adaptive time steps and robustness.
The authors tackled the problem of generalizing Bellman equations for trajectory following by connecting value functions in optimal control with path signatures, resulting in a novel control framework that efficiently handles varying time steps, propagates higher-level information, and is robust to dynamical system misspecification.
Path signatures have been proposed as a powerful representation of paths that efficiently captures the path's analytic and geometric characteristics, having useful algebraic properties including fast concatenation of paths through tensor products. Signatures have recently been widely adopted in machine learning problems for time series analysis. In this work we establish connections between value functions typically used in optimal control and intriguing properties of path signatures. These connections motivate our novel control framework with signature transforms that efficiently generalizes the Bellman equation to the space of trajectories. We analyze the properties and advantages of the framework, termed signature control. In particular, we demonstrate that (i) it can naturally deal with varying/adaptive time steps; (ii) it propagates higher-level information more efficiently than value function updates; (iii) it is robust to dynamical system misspecification over long rollouts. As a specific case of our framework, we devise a model predictive control method for path tracking. This method generalizes integral control, being suitable for problems with unknown disturbances. The proposed algorithms are tested in simulation, with differentiable physics models including typical control and robotics tasks such as point-mass, curve following for an ant model, and a robotic manipulator.