Smart Grids of collaborative netted radars accelerate kill chains through more efficient cross-cueing over centralized command and control. In this paper, we propose two novel reward-based learning approaches to decentralized netted radar coordination based on black-box optimization and Reinforcement Learning (RL). To make the RL approach tractable, we use a simplification of the problem that we proved to be equivalent to the initial formulation. We apply these techniques on a simulation where radars can follow multiple targets at the same time and show they can learn implicit cooperation by comparing them to a greedy baseline.
@article{arxiv.2010.11733,
title = {Multi-Radar Tracking Optimization for Collaborative Combat},
author = {Nouredine Nour and Reda Belhaj-Soullami and Cédric Buron and Alain Peres and Frédéric Barbaresco},
journal= {arXiv preprint arXiv:2010.11733},
year = {2020}
}
Comments
Conference On Artificial Intelligence in Defense (CAID'2020), Nov 2020, Rennes, France