FLARE: Agile Flights for Quadrotor Cable-Suspended Payload System via Reinforcement Learning
By: Dongcheng Cao , Jin Zhou , Xian Wang and more
Potential Business Impact:
Drones fly faster and safer through obstacles.
Agile flight for the quadrotor cable-suspended payload system is a formidable challenge due to its underactuated, highly nonlinear, and hybrid dynamics. Traditional optimization-based methods often struggle with high computational costs and the complexities of cable mode transitions, limiting their real-time applicability and maneuverability exploitation. In this letter, we present FLARE, a reinforcement learning (RL) framework that directly learns agile navigation policy from high-fidelity simulation. Our method is validated across three designed challenging scenarios, notably outperforming a state-of-the-art optimization-based approach by a 3x speedup during gate traversal maneuvers. Furthermore, the learned policies achieve successful zero-shot sim-to-real transfer, demonstrating remarkable agility and safety in real-world experiments, running in real time on an onboard computer.
Similar Papers
RoVerFly: Robust and Versatile Learning-based Control of Quadrotor Across Payload Configurations
Robotics
Drones fly better, even with swinging loads.
Agile and Cooperative Aerial Manipulation of a Cable-Suspended Load
Robotics
Drones carry heavy things faster and more safely.
Reactive Aerobatic Flight via Reinforcement Learning
Robotics
Drones learn to do amazing flips and loops.