Quad-LCD: Layered Control Decomposition Enables Actuator-Feasible Quadrotor Trajectory Planning
In this work, we specialize contributions from prior work on data-driven trajectory generation for a quadrotor system with motor saturation constraints. When motors saturate in quadrotor systems, there is an ``uncontrolled drift" of the vehicle that results in a crash. To tackle saturation, we apply a control decomposition and learn a tracking penalty from simulation data consisting of low, medium and high-cost reference trajectories. Our approach reduces crash rates by around compared to baselines on aggressive maneuvers in simulation. On the Crazyflie hardware platform, we demonstrate feasibility through experiments that lead to successful flights. Motivated by the growing interest in data-driven methods to quadrotor planning, we provide open-source lightweight code with an easy-to-use abstraction of hardware platforms.
View on arXiv@article{srikanthan2025_2505.10228, title={ Quad-LCD: Layered Control Decomposition Enables Actuator-Feasible Quadrotor Trajectory Planning }, author={ Anusha Srikanthan and Hanli Zhang and Spencer Folk and Vijay Kumar and Nikolai Matni }, journal={arXiv preprint arXiv:2505.10228}, year={ 2025 } }