Neural Distance-Guided Path Integral Control for Tractor-Trailer Navigation

2026-05-11Robotics

Robotics
AI summary

The authors developed a new method to help tractor-trailer vehicles safely navigate tricky farm environments without relying on a pre-made map. They created a neural network that quickly estimates the distance between the vehicle and obstacles using raw sensor data. This information is used in a control system to plan safe and doable routes in real time, even when the surroundings are complex and unknown. Their tests in simulations show that this approach leads to better and safer navigation compared to older methods.

tractor-trailer systemscollision avoidanceLiDAR perceptiongeometric neural encoderModel Predictive Path Integral (MPPI) controllerarticulated geometryreal-time navigationdynamic feasibilityagricultural robotics
Authors
Peng Wei, Chen Peng, Stavros Vougioukas
Abstract
Autonomous and safe navigation of tractor-trailer systems requires accurate, real-time collision avoidance and dynamically feasible control, particularly in cluttered and complex agricultural environments. This is challenging due to their articulated, deformable geometries and nonlinear dynamics. Traditional methods oversimplify vehicle geometry or rely on precomputed distance fields that assume a known map, limiting their applicability in dynamic, partially unknown environments. To address these limitations, we propose a geometric neural encoder that provides fast and accurate distance estimates between the full tractor-trailer body and raw LiDAR perception, enabling real-time, map-free geometric reasoning. These learned distances are integrated into a Model Predictive Path Integral (MPPI) controller, allowing the system to incorporate true articulated geometry directly into its cost evaluation and enabling more responsive navigation in challenging agricultural settings. Simulation results demonstrate that the proposed framework generates dynamically feasible and safe trajectories for navigating tractor-trailer systems in cluttered and complex environments.