Основные понятия
Neural networks can rapidly and accurately predict the communication and navigation attributes of swarming autonomous agents, enabling real-time inference of their overall tactics.
Аннотация
This study explores the use of supervised neural network time series classification (NN TSC) to predict key attributes and tactics of swarming autonomous agents for military contexts. The researchers focused on two binary attributes - communication and proportional navigation - which combine to define four mutually exclusive swarm tactics.
The key findings are:
- Neural networks can predict swarm behaviors with 97% accuracy using short observation windows of 20 time steps.
- The models demonstrate graceful degradation down to 80% accuracy under 50% noise, indicating strong robustness.
- The models exhibit excellent scalability to swarm sizes from 10 to 100 agents.
- Velocity emerged as the most important feature across all models, highlighting the significance of agent dynamics in classifying swarm tactics.
- The top performing models were the Convolutional Neural Network (CNN), Fully Convolutional Network (FCN), Long Short-Term Memory Vector (LSTMV), Transformer Vector (TRV), and Transformer Sequence (TRS) configurations.
- There is a trade-off between model performance and inference speed, where slightly less accurate classifications available faster may be more practical in defense scenarios.
The implications of these findings are significant for real-time decision-making support in defense scenarios, as the rapid inference of swarm behavior can inform effective counter-maneuvers.
Статистика
The dataset was generated using Matlab simulations of swarm-on-swarm engagements. Key statistics include:
4800 total engagement instances, with 1200 per tactic
Each engagement truncated to 58 time steps
Swarm sizes of 10v10, 25v25, 50v50, 75v75, and 100v100 agents
Цитаты
"Neural networks exhibited a strong capability to predict both the underlying characteristic attributes and overall tactics of swarms."
"A nuanced finding was that while more time data generally contributed to improved results, the increment was often marginal. This suggests an important trade-off in defense scenarios where time is a critical resource."
"Velocity emerged as the most important feature across all models, highlighting the significance of agent dynamics in classifying swarm tactics."