Agile Interception of a Flying Target using Competitive Reinforcement Learning

Gavin, Timothée, Lacroix, Simon, Bronz, Murat

arXiv.org Machine Learning 

The interception of agile aerial targets using autonomous drones is a challenging and increasingly relevant problem in robotics and security. The increasing presence of unmanned aerial vehicles (UAVs) in unauthorized, restricted airspaces poses significant safety and security risks and has spurred interest in developing effective interception strategies [1] In particular, scenarios such as airspace protection, infrastructure security, and event safety require the ability to capture or neutralize unauthorized drones with high precision and minimal collateral risk. Deploying interceptor drones equipped with nets is apromising approach, but it demandsadvanced control capabilities to match or exceed the agility of evasive targets. Traditional interception methods often rely on accurate models, preplanned strategies, or predictable target behaviour [2]. However, modern quadrotor drones can perform highly dynamic manoeuvres, and will actively evade capture, rendering their trajectories unpredictable and challenging the effectiveness of classical methods [3].

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