AI RESEARCH
Adaptive Outer-Loop Control of Quadrotors via Reinforcement Learning
arXiv CS.LG
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ArXi:2605.16015v1 Announce Type: cross Deep Reinforcement Learning (DRL) for quadrotor flight control typically relies on Domain Randomization (DR) for sim-to-real transfer, resulting in overly conservative policies that struggle with dynamic disturbances. To overcome this, we propose a novel adaptive control architecture that actively perceives and reacts to instantaneous perturbations. First, we train an optimal outer-loop policy, then replace its reliance on ground-truth disturbance data with a Residual Dynamics Predictor.