NMPCB: A Lightweight and Safety-Critical Motion Control Framework

In multi-obstacle environments, real-time performance and safety in robot motion control have long been challenging issues, as conventional methods often struggle to balance the two. In this paper, we propose a novel motion control framework composed of a Neural network-based path planner and a Model Predictive Control (MPC) controller based on control Barrier function (NMPCB) . The planner predicts the next target point through a lightweight neural network and generates a reference trajectory for the controller. In the design of the controller, we introduce the dual problem of control barrier function (CBF) as the obstacle avoidance constraint, enabling it to ensure robot motion safety while significantly reducing computation time. The controller directly outputs control commands to the robot by tracking the reference trajectory. This framework achieves a balance between real-time performance and safety. We validate the feasibility of the framework through numerical simulations and real-world experiments.
View on arXiv@article{zheng2025_2505.01752, title={ NMPCB: A Lightweight and Safety-Critical Motion Control Framework }, author={ Longze Zheng and Qinghe Liu }, journal={arXiv preprint arXiv:2505.01752}, year={ 2025 } }