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Communication Dans Un Congrès Année : 2022

Autonomous drone interception with Deep Reinforcement Learning

Résumé

Driven by recent successes in artificial intelligence, new autonomous navigation systems are emerging in the urban space. The adoption of such systems raises questions about certification criteria and their vulnerability to external threats. This work focuses on the automated anti-collision systems designed for autonomous drones evolving in an urban context, less controlled than the conventional airspace and more vulnerable to potential intruders. In particular, we highlight the vulnerabilities of such systems to hijacking, taking as example the scenario of an autonomous delivery drone diverted from its mission by a malicious agent. We demonstrate the possibility of training Reinforcement Learning agents to deflect a drone equipped with an automated anti-collision system. Our contribution is threefold. Firstly, we illustrate the security vulnerabilities of these systems. Secondly, we demonstrate the effectiveness of Reinforcement Learning for automatic detection of security flaws. Thirdly, we provide the community with an original benchmark based on an industrial use case.
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Dates et versions

hal-03930080 , version 1 (09-01-2023)

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  • HAL Id : hal-03930080 , version 1

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David Bertoin, Adrien Gauffriau, Damien Grasset, Jayant Sen Gupta. Autonomous drone interception with Deep Reinforcement Learning. 12th International Workshop on Agents in Traffic and Transportation (ATT 2022) in conjunction with IJCAI-ECAI 2022, Jul 2022, Vienne, Austria. ⟨hal-03930080⟩
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