Path Integral Methods with Stochastic Control Barrier Functions
Safe control designs for robotic systems remain challenging because of the difficulties of explicitly solving optimal control with nonlinear dynamics perturbed by stochastic noise. However, recent technological advances in computing devices enable online optimization or sampling-based methods to sol...
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Zusammenfassung: | Safe control designs for robotic systems remain challenging because of the
difficulties of explicitly solving optimal control with nonlinear dynamics
perturbed by stochastic noise. However, recent technological advances in
computing devices enable online optimization or sampling-based methods to solve
control problems. For example, Control Barrier Functions (CBFs), a
Lyapunov-like control algorithm, have been proposed to numerically solve convex
optimizations that determine control input to stay in the safe set. Model
Predictive Path Integral (MPPI) uses forward sampling of stochastic
differential equations to solve optimal control problems online. Both control
algorithms are widely used for nonlinear systems because they avoid calculating
the derivatives of the nonlinear dynamic function. In this paper, we utilize
Stochastic Control Barrier Functions (SCBFs) constraints to limit sample
regions in the sample-based algorithm, ensuring safety in a probabilistic sense
and improving sample efficiency with a stochastic differential equation. We
provide a sampling complexity analysis for the required sample size of our
algorithm and show that our algorithm needs fewer samples than the original
MPPI algorithm does. Finally, we apply our algorithm to a path planning problem
in a cluttered environment and compare the performance of the algorithms. |
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DOI: | 10.48550/arxiv.2206.11985 |