Point-to-Cloud NMPC with Smooth Avoidance Constraints
Abstract
This paper proposes a finite-horizon optimal control strategy for set-point tracking using a nonlinear model predictive control framework with integrated avoidance capabilities. The formulation employs a smooth point-to-cloud distance metric that ensures continuously differentiable and numerically well-conditioned gradients, even in the presence of regions with complex and nonconvex geometries. This smoothness allows safety constraints to be formulated consistently and differentiably through control barrier functions, resulting in a reliable avoidance behavior for the closed-loop system. Additionally, stationary artificial variables are introduced in the optimal control problem to preserve feasibility under changing set-points. The proposed approach is validated through numerical experiments of an aerial robot, demonstrating accurate tracking and smooth obstacle avoidance in complex environments.
Cite
@article{arxiv.2605.01431,
title = {Point-to-Cloud NMPC with Smooth Avoidance Constraints},
author = {Brener G. Ferreira and Vinicius M. Gonçalves and Marcelo A. Santos and Guilherme V. Raffo},
journal= {arXiv preprint arXiv:2605.01431},
year = {2026}
}
Comments
Accepted for publication at the 2026 European Control Conference (ECC 2026)