Exoatmospheric Evasion Guidance Law with Total Energy Limit via Constrained Reinforcement Learning
Mengda Yan,
Rennong Yang,
Yu Zhao
et al.
Abstract:Due to the lack of aerodynamic forces, the available propulsion for exoatmospheric pursuit-evasion problem is strictly limited, which has not been thoroughly investigated. This paper focuses on the evasion guidance in an exoatmospheric environment with total energy limit. A Constrained Reinforcement Learning (CRL) method is proposed to solve the problem. Firstly, the acceleration commands of the evader are defined as cost and an Actor-Critic-Cost (AC2) network structure is established to predict the accumulate… Show more
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