Guaranteed-Safe MPPI Through Composite Control Barrier Functions for Efficient Sampling in Multi-Constrained Robotic Systems
We present a new guaranteed-safe model predictive path integral (GS-MPPI) control algorithm that enhances sample efficiency in nonlinear systems with multiple safety constraints. The approach use a composite control barrier function (CBF) along with MPPI to ensure all sampled trajectories are provab...
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Zusammenfassung: | We present a new guaranteed-safe model predictive path integral (GS-MPPI)
control algorithm that enhances sample efficiency in nonlinear systems with
multiple safety constraints. The approach use a composite control barrier
function (CBF) along with MPPI to ensure all sampled trajectories are provably
safe. We first construct a single CBF constraint from multiple safety
constraints with potentially differing relative degrees, using it to create a
safe closed-form control law. This safe control is then integrated into the
system dynamics, allowing MPPI to optimize over exclusively safe trajectories.
The method not only improves computational efficiency but also addresses the
myopic behavior often associated with CBFs by incorporating long-term
performance considerations. We demonstrate the algorithm's effectiveness
through simulations of a nonholonomic ground robot subject to position and
speed constraints, showcasing safety and performance. |
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DOI: | 10.48550/arxiv.2410.02154 |