Swarm Characteristics Classification Using Neural Networks

DW Peltier, I Kaminer, A Clark… - IEEE Transactions on …, 2024 - ieeexplore.ieee.org
IEEE Transactions on Aerospace and Electronic Systems, 2024ieeexplore.ieee.org
Understanding the characteristics of swarming autonomous agents is critical for defense and
security applications. This article presents a study on using supervised neural network time
series classification (NN TSC) to predict key attributes and tactics of swarming autonomous
agents for military contexts. Specifically, NN TSC is applied to infer two binary attributes-
communication and proportional navigation-which combine to define four mutually exclusive
swarm tactics. We identify a gap in literature on using NNs for swarm classification and …
Understanding the characteristics of swarming autonomous agents is critical for defense and security applications. This article presents a study on using supervised neural network time series classification (NN TSC) to predict key attributes and tactics of swarming autonomous agents for military contexts. Specifically, NN TSC is applied to infer two binary attributes - communication and proportional navigation - which combine to define four mutually exclusive swarm tactics. We identify a gap in literature on using NNs for swarm classification and demonstrate the effectiveness of NN TSC in rapidly deducing intelligence about attacking swarms to inform counter-maneuvers. Through simulated swarm-vs-swarm engagements, we evaluate NN TSC performance in terms of observation window requirements, noise robustness, and scalability to swarm size. Key findings show NNs can predict swarm behaviors with 97% accuracy using short observation windows of 20 time steps, while also demonstrating graceful degradation down to 80% accuracy under 50% noise, as well as excellent scalability to swarm sizes from 10 to 100 agents. These capabilities are promising for real-time decision-making support in defense scenarios by rapidly inferring insights about swarm behavior.
ieeexplore.ieee.org