ArXiv TLDR

Uncertainty-Aware 3D Position Refinement for Multi-UAV Systems

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2605.13500

Hosam Alamleh, Damir Pulatov

cs.ROcs.CR

TLDR

This paper introduces a decentralized, uncertainty-aware 3D position refinement layer for multi-UAV systems, improving localization robustness.

Key contributions

  • Decentralized, lightweight 3D position refinement layer for multi-UAV systems.
  • Fuses local estimates with neighbor data, weighting by covariance, link quality, and learned trust.
  • Handles cold start and temporary localization loss by inflating weak priors for stability.
  • Mitigates faulty/malicious nodes using local range-consistency checks smoothed over time.

Why it matters

This paper offers a practical solution to enhance multi-UAV localization in environments with GNSS issues or interference. It significantly improves robustness against cold starts, temporary signal loss, and malicious actors. This makes swarm operations more reliable and safer.

Original Abstract

Reliable real-time 3D localization is essential for multi-UAV navigation, collision avoidance, and coordinated flight, yet onboard estimates can degrade under GNSS multipath, non-line-of-sight reception, vertical drift, and intentional interference. This paper presents a decentralized, lightweight 3D position-refinement layer that improves robustness by fusing each Unmanned Aerial Vehicle (UAV)'s local estimate with neighbor-shared state summaries and inter-UAV range or proximity constraints. The method performs uncertainty-aware neighborhood fusion by weighting each UAV's prior according to its reported covariance and weighting neighbor constraints according to link quality, ranging uncertainty, and a learned trust score. To support practical deployment, the framework explicitly handles cold start and temporary localization loss by inflating or substituting weak priors, allowing trusted neighborhood constraints to bootstrap and stabilize estimates until absolute sensing recovers. To mitigate the impact of faulty or malicious participants, each UAV applies a local range-consistency check, smoothed over time, to down-weight or exclude neighbors whose reported positions are incompatible with observed inter-UAV distances. Simulation experiments with 10 UAVs in a 3D volume show that the proposed refinement substantially reduces mean localization error during cold start, remains competitive after local estimators stabilize, and maintains lower error as the fraction of malicious nodes increases compared with fusion without trust. These results suggest that the approach can serve as a practical resilience layer for swarm operation in challenging environments.

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