English

NMPC-Augmented Visual Navigation and Safe Learning Control for Large-Scale Mobile Robots

Robotics 2026-04-03 v1 Systems and Control Systems and Control

Abstract

A large-scale mobile robot (LSMR) is a high-order multibody system that often operates on loose, unconsolidated terrain, which reduces traction. This paper presents a comprehensive navigation and control framework for an LSMR that ensures stability and safety-defined performance, delivering robust operation on slip-prone terrain by jointly leveraging high-performance techniques. The proposed architecture comprises four main modules: (1) a visual pose-estimation module that fuses onboard sensors and stereo cameras to provide an accurate, low-latency robot pose, (2) a high-level nonlinear model predictive control that updates the wheel motion commands to correct robot drift from the robot reference pose on slip-prone terrain, (3) a low-level deep neural network control policy that approximates the complex behavior of the wheel-driven actuation mechanism in LSMRs, augmented with robust adaptive control to handle out-of-distribution disturbances, ensuring that the wheels accurately track the updated commands issued by high-level control module, and (4) a logarithmic safety module to monitor the entire robot stack and guarantees safe operation. The proposed low-level control framework guarantees uniform exponential stability of the actuation subsystem, while the safety module ensures the whole system-level safety during operation. Comparative experiments on a 6,000 kg LSMR actuated by two complex electro-hydrostatic drives, while synchronizing modules operating at different frequencies.

Keywords

Cite

@article{arxiv.2601.00609,
  title  = {NMPC-Augmented Visual Navigation and Safe Learning Control for Large-Scale Mobile Robots},
  author = {Mehdi Heydari Shahna and Pauli Mustalahti and Jouni Mattila},
  journal= {arXiv preprint arXiv:2601.00609},
  year   = {2026}
}
R2 v1 2026-07-01T08:48:17.977Z