Active Jammer Localization via Acquisition-Aware Path Planning
By: Luis González-Gudiño , Mariona Jaramillo-Civill , Pau Closas and more
Potential Business Impact:
Finds hidden signals faster by planning smart routes.
We propose an active jammer localization framework that combines Bayesian optimization with acquisition-aware path planning. Unlike passive crowdsourced methods, our approach adaptively guides a mobile agent to collect high-utility Received Signal Strength measurements while accounting for urban obstacles and mobility constraints. For this, we modified the A* algorithm, A-UCB*, by incorporating acquisition values into trajectory costs, leading to high-acquisition planned paths. Simulations on realistic urban scenarios show that the proposed method achieves accurate localization with fewer measurements compared to uninformed baselines, demonstrating consistent performance under different environments.
Similar Papers
Bayesian Jammer Localization with a Hybrid CNN and Path-Loss Mixture of Experts
Machine Learning (CS)
Finds hidden signals in cities better.
Mobile Jamming Mitigation in 5G Networks: A MUSIC-Based Adaptive Beamforming Approach
Networking and Internet Architecture
Stops secret signals from blocking phone calls.
Agent-Based Anti-Jamming Techniques for UAV Communications in Adversarial Environments: A Comprehensive Survey
Signal Processing
Drones learn to fight off jamming signals.