A geometric neural encoder supplies fast distance estimates from LiDAR to an MPPI controller, enabling map-free collision avoidance for articulated tractor-trailer vehicles in simulation.
GPU-Accelerated Barrier-Rate Guided MPPI Control for Tractor-Trailer Systems
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Articulated vehicles such as tractor-trailers, yard trucks, and similar platforms must often reverse and maneuver in cluttered spaces where pedestrians are present. We present how Barrier-Rate guided Model Predictive Path Integral (BR-MPPI) control can solve navigation in such challenging environments. BR-MPPI embeds Control Barrier Function (CBF) constraints directly into the path-integral update. By steering the importance-sampling distribution toward collision-free, dynamically feasible trajectories, BR-MPPI enhances the exploration strength of MPPI and improves robustness of resulting trajectories. The method is evaluated in the high-fidelity CarMaker simulator on a 12 [m] tractor-trailer tasked with reverse and forward parking in a parking lot. BR-MPPI computes control inputs in above 100 [Hz] on a single GPU (for scenarios with eight obstacles) and maintains better parking clearance than a standard MPPI baseline and an MPPI with collision cost baseline.
citation-role summary
citation-polarity summary
fields
cs.RO 1years
2026 1verdicts
UNVERDICTED 1roles
background 1polarities
background 1representative citing papers
citing papers explorer
-
Neural Distance-Guided Path Integral Control for Tractor-Trailer Navigation
A geometric neural encoder supplies fast distance estimates from LiDAR to an MPPI controller, enabling map-free collision avoidance for articulated tractor-trailer vehicles in simulation.