Distributed Online Learning for Coexistence in Cognitive Radar Networks
William Howard, Anthony Martone, R. Michael Buehrer

TL;DR
This paper introduces an online machine learning approach using multi-player multi-armed bandits for resource sharing in cognitive radar networks, enabling independent nodes to improve tracking without prior environmental knowledge.
Contribution
It adapts the MMAB model to the radar network scenario and demonstrates its effectiveness over traditional methods through simulations.
Findings
MMAB-based online learning outperforms traditional sense-and-avoid methods.
The approach enables independent radar nodes to adaptively select frequencies and waveforms.
Simulation results validate the effectiveness of the proposed method.
Abstract
This work addresses the coexistence problem for radar networks. Specifically, we model a network of cooperative, independent, and non-communicating radar nodes which must share resources within the network as well as with non-cooperative nearby emitters. We approach this problem using online Machine Learning (ML) techniques. Online learning approaches are specifically preferred due to the fact that each radar node has no prior knowledge of the environment nor of the positions of the other radar nodes, and due to the sequential nature of the problem. For this task we specifically select the multi-player multi-armed bandit (MMAB) model, which poses the problem as a sequential game, where each radar node in a network makes independent selections of center frequency and waveform with the same goal of improving tracking performance for the network as a whole. For accurate tracking, each…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Cognitive Radio Networks and Spectrum Sensing · Distributed Sensor Networks and Detection Algorithms
