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📄 Abstract
Abstract: The task of flying in tight formations is challenging for teams of quadrotors
because the complex aerodynamic wake interactions can destabilize individual
team members as well as the team. Furthermore, these aerodynamic effects are
highly nonlinear and fast-paced, making them difficult to model and predict. To
overcome these challenges, we present L1 KNODE-DW MPC, an adaptive, mixed
expert learning based control framework that allows individual quadrotors to
accurately track trajectories while adapting to time-varying aerodynamic
interactions during formation flights. We evaluate L1 KNODE-DW MPC in two
different three-quadrotor formations and show that it outperforms several MPC
baselines. Our results show that the proposed framework is capable of enabling
the three-quadrotor team to remain vertically aligned in close proximity
throughout the flight. These findings show that the L1 adaptive module
compensates for unmodeled disturbances most effectively when paired with an
accurate dynamics model. A video showcasing our framework and the physical
experiments is available here: https://youtu.be/9QX1Q5Ut9Rs
Authors (3)
Pei-An Hsieh
Kong Yao Chee
M. Ani Hsieh
Key Contributions
Presents L1 KNODE-DW MPC, an adaptive, mixed-expert learning control framework that allows quadrotors to accurately track trajectories while adapting to time-varying aerodynamic interactions during formation flights. It outperforms traditional MPC baselines in challenging formation scenarios.
Business Value
Enables more reliable and coordinated operation of drone fleets for applications like aerial surveying, delivery, surveillance, and infrastructure inspection, improving efficiency and safety.