Adaptive satellite attitude control for varying masses using deep reinforcement learning

Wiebke Retagne, Jonas Dauer, Günther Waxenegger-Wilfing
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Abstract

Traditional spacecraft attitude control often relies heavily on the dimension and mass information of the spacecraft. In active debris removal scenarios, these characteristics cannot be known beforehand because the debris can take any shape or mass. Additionally, it is not possible to measure the mass of the combined system of satellite and debris object in orbit. Therefore, it is crucial to develop an adaptive satellite attitude control that can extract mass information about the satellite system from other measurements. The authors propose using deep reinforcement learning (DRL) algorithms, employing stacked observations to handle widely varying masses. The satellite is simulated in Basilisk software, and the control performance is assessed using Monte Carlo simulations. The results demonstrate the benefits of DRL with stacked observations compared to a classical proportional–integral–derivative (PID) controller for the spacecraft attitude control. The algorithm is able to adapt, especially in scenarios with changing physical properties.
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利用深度强化学习实现不同质量的自适应卫星姿态控制
传统的航天器姿态控制通常在很大程度上依赖于航天器的尺寸和质量信息。在主动清除碎片的情况下,这些特征无法事先知道,因为碎片可以是任何形状或质量。此外,也无法测量轨道上卫星和碎片物体组合系统的质量。因此,开发一种能从其他测量中提取卫星系统质量信息的自适应卫星姿态控制至关重要。作者建议使用深度强化学习(DRL)算法,利用堆叠观测数据来处理千差万别的质量。在 Basilisk 软件中对卫星进行了模拟,并使用蒙特卡罗模拟对控制性能进行了评估。结果表明,与用于航天器姿态控制的经典比例-积分-派生(PID)控制器相比,使用堆叠观测数据的 DRL 更具优势。该算法能够适应,尤其是在物理特性不断变化的情况下。
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