LGFeb 5, 2025

Swarm Characteristic Classification using Robust Neural Networks with Optimized Controllable Inputs

arXiv:2502.03619v1h-index: 3IEEE Trans Aerosp Electron Syst
Originality Incremental advance
AI Analysis

This work addresses the problem of enhancing the practicality of swarm classification for defense and security applications, though it is incremental by building on previous supervised neural network methods.

The paper tackles the challenge of classifying swarm characteristics under uncertainty by enriching datasets with operational variations, resulting in robust neural networks that improve classification accuracy and offer operational flexibility, such as reducing resource requirements.

Having the ability to infer characteristics of autonomous agents would profoundly revolutionize defense, security, and civil applications. Our previous work was the first to demonstrate that supervised neural network time series classification (NN TSC) could rapidly predict the tactics of swarming autonomous agents in military contexts, providing intelligence to inform counter-maneuvers. However, most autonomous interactions, especially military engagements, are fraught with uncertainty, raising questions about the practicality of using a pretrained classifier. This article addresses that challenge by leveraging expected operational variations to construct a richer dataset, resulting in a more robust NN with improved inference performance in scenarios characterized by significant uncertainties. Specifically, diverse datasets are created by simulating variations in defender numbers, defender motions, and measurement noise levels. Key findings indicate that robust NNs trained on an enriched dataset exhibit enhanced classification accuracy and offer operational flexibility, such as reducing resources required and offering adherence to trajectory constraints. Furthermore, we present a new framework for optimally deploying a trained NN by the defenders. The framework involves optimizing defender trajectories that elicit adversary responses that maximize the probability of correct NN tactic classification while also satisfying operational constraints imposed on the defenders.

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