A Meta-Cognitive Swarm Intelligence Framework for Resilient UAV Navigation in GPS-Denied and Cluttered Environments
Mathias Mankoe (1), Fuqiang Lu (1), Hualing Bi (1), and Abdulsalam Sibidoo Mubashiru (2) ((1) Yanshan University (2) Kwame Nkrumah University of Science, Technology)

TL;DR
This paper presents a novel meta-cognitive swarm intelligence framework for UAVs that enhances resilience and adaptability in GPS-denied, cluttered environments, significantly improving mission success rates and recovery capabilities.
Contribution
It introduces the Self-Learning Slime Mould Algorithm (SLSMA) with three meta-cognitive layers for resilient, autonomous UAV navigation in complex environments.
Findings
Achieved 99.5% mission success rate in simulations.
Outperformed state-of-the-art metaheuristics in recovery speed.
Generated resilient trajectories in complex 3D worlds.
Abstract
Autonomous navigation of UAV swarms in perceptually-degraded environments, where GPS is unavailable and terrain is densely cluttered, presents a critical bottleneck for real-world deployment. Existing optimization-based planners lack the resilience to avoid catastrophic convergence to local optima under such uncertainty. Inspired by principles of computational meta-cognition, this paper introduces a novel swarm intelligence framework that enables a fleet of UAVs to autonomously sense, adapt, and recover from planning failures in real-time. At its core is the Self-Learning Slime Mould Algorithm (SLSMA), which integrates three meta-cognitive layers: a situation-aware search strategy that dynamically selects between exploration and exploitation based on perceived search stagnation; a collective memory mechanism that allows the swarm to learn from and avoid previously failed trajectories;…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization · UAV Applications and Optimization
