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📄 Abstract
Abstract: This paper presents an integrated Reinforcement Learning (RL) and Model
Predictive Control (MPC) framework for autonomous satellite docking with a
partially filled fuel tank. Traditional docking control faces challenges due to
fuel sloshing in microgravity, which induces unpredictable forces affecting
stability. To address this, we integrate Proximal Policy Optimization (PPO) and
Soft Actor-Critic (SAC) RL algorithms with MPC, leveraging MPC's predictive
capabilities to accelerate RL training and improve control robustness. The
proposed approach is validated through Zero-G Lab of SnT experiments for planar
stabilization and high-fidelity numerical simulations for 6-DOF docking with
fuel sloshing dynamics. Simulation results demonstrate that SAC-MPC achieves
superior docking accuracy, higher success rates, and lower control effort,
outperforming standalone RL and PPO-MPC methods. This study advances
fuel-efficient and disturbance-resilient satellite docking, enhancing the
feasibility of on-orbit refueling and servicing missions.