KinoJGM: A framework for efficient and accurate quadrotor trajectory generation and tracking in dynamic environments

IEEE International Conference on Robotics and Automation(2022)

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摘要
Unmapped areas and aerodynamic disturbances render autonomous navigation with quadrotors extremely challenging. To fly safely and efficiently, trajectory planners and trackers must be able to navigate unknown environments with unpredictable aerodynamic effects in real-time. When encountering aerodynamic effects such as strong winds, most current approaches to quadrotor trajectory planning and tracking will not attempt to deviate from a determined plan, even if it is risky, in the hope that any aerodynamic disturbances can be resisted by a robust controller. This paper presents a novel systematic trajectory planning and tracking framework for autonomous quadrotors. We propose a Kinodynamic Jump Space Search (Kino-JSS) to generate a safe and efficient route in unknown environments with aerodynamic disturbances. A real-time Gaussian Process is employed to model the errors caused by aerodynamic disturbances, which we then integrate with a Model Predictive Controller to achieve efficient and accurate trajectory optimization and tracking. We demonstrate our system to improve the efficiency of trajectory generation in unknown environments by up to 75% in the cases tested, compared with recent state-of-the-art. We also show that our system improves the accuracy of tracking in selected environments with unpredictable aerodynamic effects. Our implementation is available in an open source package11https://github.com/Alex-yanranwang/Imperial-KinoJGM.
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关键词
efficient quadrotor trajectory generation,accurate quadrotor trajectory generation,dynamic environments,aerodynamic disturbances render autonomous navigation,trajectory planners,trackers,unpredictable aerodynamic effects,encountering aerodynamic effects,quadrotor trajectory planning,determined plan,systematic trajectory planning,autonomous quadrotors,Kinodynamic Jump Space Search,safe route,real-time Gaussian Process,Model Predictive Controller,accurate trajectory optimization,selected environments
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