Analyzing deep reinforcement learning model decisions with Shapley additive explanations for counter drone operations
Ender Çetin,
Cristina Barrado,
Esther Salamí
et al.
Abstract:As the use of drones continues to increase, their capabilities pose a threat to airspace safety when they are misused. Deploying AI models for intercepting these unwanted drones becomes crucial. However, these AI models, such as deep learning models, often operate as “black boxes”, making it hard to trust their decision-making system. This also affects end-users’ confidence in these AI systems. In this paper, the explainability of deep reinforcement learning is investigated and a deep reinforcement learning (D… Show more
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