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Titel:

Reducing Safety Interventions in Provably Safe Reinforcement Learning

Dokumenttyp:
Konferenzbeitrag
Autor(en):
Thumm, Jakob; Pelat, Guillaume; Althoff, Matthias
Abstract:
Deep Reinforcement Learning (RL) has shown promise in addressing complex robotic challenges. In real-world applications, RL is often accompanied by failsafe controllers as a last resort to avoid catastrophic events. While necessary for safety, these interventions can result in undesirable behaviors, such as abrupt braking or aggressive steering. This paper proposes two safety intervention reduction methods: proactive replacement and proactive projection, which change the action of the agent i...     »
Horizon 2020:
Horizon 2020 EU Framework Project CONCERT under grant 101016007
Kongress- / Buchtitel:
Proceedings of the IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)
Jahr:
2023
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