2024
DOI: 10.1038/s41467-024-48670-x
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Revealing principles of autonomous thermal soaring in windy conditions using vulture-inspired deep reinforcement-learning

Yoav Flato,
Roi Harel,
Aviv Tamar
et al.

Abstract: Thermal soaring, a technique used by birds and gliders to utilize updrafts of hot air, is an appealing model-problem for studying motion control and how it is learned by animals and engineered autonomous systems. Thermal soaring has rich dynamics and nontrivial constraints, yet it uses few control parameters and is becoming experimentally accessible. Following recent developments in applying reinforcement learning methods for training deep neural-network (deep-RL) models to soar autonomously both in simulation… Show more

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