Sim-to-Real Transfer in Reinforcement Learning for Maneuver Control of a Variable-Pitch MAV
By: Zhikun Wang, Shiyu Zhao
Potential Business Impact:
Drones learn to do flips and tricky moves.
Reinforcement learning (RL) algorithms can enable high-maneuverability in unmanned aerial vehicles (MAVs), but transferring them from simulation to real-world use is challenging. Variable-pitch propeller (VPP) MAVs offer greater agility, yet their complex dynamics complicate the sim-to-real transfer. This paper introduces a novel RL framework to overcome these challenges, enabling VPP MAVs to perform advanced aerial maneuvers in real-world settings. Our approach includes real-to-sim transfer techniques-such as system identification, domain randomization, and curriculum learning to create robust training simulations and a sim-to-real transfer strategy combining a cascade control system with a fast-response low-level controller for reliable deployment. Results demonstrate the effectiveness of this framework in achieving zero-shot deployment, enabling MAVs to perform complex maneuvers such as flips and wall-backtracking.
Similar Papers
Non-Equilibrium MAV-Capture-MAV via Time-Optimal Planning and Reinforcement Learning
Robotics
Drones catch fast, tricky flying targets.
Learning on the Fly: Rapid Policy Adaptation via Differentiable Simulation
Robotics
Robots learn to fix mistakes instantly in real world.
Deep RL-based Autonomous Navigation of Micro Aerial Vehicles (MAVs) in a complex GPS-denied Indoor Environment
Robotics
Drones fly themselves indoors, faster and smarter.