Gradient-Based Online Trajectory Planning for Quadrotor Transportation Systems

Tengfei Pei, Ying Jin,Hai Yu,Yongchun Fang,Jianda Han,Xiao Liang

2023 IEEE 13th International Conference on CYBER Technology in Automation, Control, and Intelligent Systems (CYBER)(2023)

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摘要
Trajectory planning has been an important research area for quadrotor transportation systems for a long time. However, generating feasible trajectories in real-time that allow quadrotor transportation systems to navigate safely in complex environments remains a challenging issue. This article proposes an efficient gradient-based safety constraint that helps keep the system away from obstacles. Furthermore, this paper combines safety constraint with a novel B-spline-based optimization method that utilizes an improved hybrid-state A* algorithm for path searching to generate desired trajectory. Strategies to speed up path searching and unconstrained optimization problem constructed in B-spline optimization guarantee the computational efficiency. The feasibility of the resulting trajectory has been verified through simulation.
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关键词
B-spline-based optimization method,computational efficiency,gradient-based online trajectory planning,gradient-based safety constraint,hybrid-state A* algorithm,path searching,quadrotor transportation system,safe navigation,unconstrained optimization problem
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