Position-Based Flocking for Persistent Alignment without Velocity Sensing
Abstract
Coordinated collective motion in bird flocks and fish schools inspires algorithms for cohesive swarm robotics. This paper presents a position-based flocking model that achieves persistent velocity alignment without velocity sensing. By approximating relative velocity differences from changes between current and initial relative positions and incorporating a time- and density-dependent alignment gain with a non-zero minimum threshold to maintain persistent alignment, the model sustains coherent collective motion over extended periods. Simulations with a collective of 50 agents demonstrate that the position-based flocking model attains faster and more sustained directional alignment and results in more compact formations than a velocity-alignment-based baseline. This position-based flocking model is particularly well-suited for real-world robotic swarms, where velocity measurements are unreliable, noisy, or unavailable. Experimental results using a team of nine real wheeled mobile robots are also presented.
Cite
@article{arxiv.2602.22154,
title = {Position-Based Flocking for Persistent Alignment without Velocity Sensing},
author = {Hossein B. Jond and Veli Bakırcıoğlu and Logan E. Beaver and Nejat Tükenmez and Adel Akbarimajd and Martin Saska},
journal= {arXiv preprint arXiv:2602.22154},
year = {2026}
}