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Inicio  /  Aerospace  /  Vol: 9 Par: 10 (2022)  /  Artículo
ARTÍCULO
TITULO

Good Match between ?Stop-and-Go? Strategy and Robust Guidance Based on Deep Reinforcement Learning

Hao Yuan and Dongxu Li    

Resumen

This paper deals with the guidance problem of close approaching small celestial bodies while autonomously navigating with an optical camera. A combination of a deep reinforcement learning (DRL)-based guidance method and a ?Stop-and-Go? (SaG) strategy is here proposed to increase the mission adaptability. Firstly, a robust guidance strategy optimizing fuel consumption and angle-only navigation (AON) observability is trained by DRL. Secondly, the SAG strategy is designed to introduce the mission adaptability and further improve the AON observability. Thirdly, a good match between the SAG strategy and the DRL-based robust guidance is demonstrated. The proposed method was tested in a typical R-bar approaching scenario. Then, the mission adaptability with an onboard application was successfully verified, investigating the policy performance with SAG.

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