Litcius/Paper detail

GTO-MPC-Based Target Chasing Using a Quadrotor in Cluttered Environments

Lele Xi, Xinyi Wang, Lei Jiao, Shupeng Lai, Zhihong Peng, Ben M. Chen

2021IEEE Transactions on Industrial Electronics37 citationsDOI

Abstract

This article addresses the challenging problem of chasing an escaping target using a quadrotor in cluttered environments. To tackle these challenges, we propose a guided time-optimal model predictive control (GTO-MPC)-based practical framework to generate chasing trajectories for the quadrotor. A jerk limited approach is first adopted to find a time-optimal jerk limited trajectory (JLT), an initial reference for the quadrotor to track, without taking into account surrounding obstacles and potential threats. An MPC-based replanning framework is then applied to approximate the JLT together with the consideration of other issues such as flight safety, line-of-sight maintenance, and deadlock avoidance. Combined with a neural network, the proposed GTO-MPC framework can efficiently generate chasing trajectories that guarantee flight smoothness and kinodynamic feasibility. Our simulation and actual experimental results show that the proposed technique is highly effective.

Topics & Concepts

JerkComputer scienceTrajectorySmoothnessControl theory (sociology)Model predictive controlCollision avoidanceArtificial intelligenceControl (management)MathematicsCollisionComputer securityAstronomyAccelerationPhysicsClassical mechanicsMathematical analysisRobotic Path Planning AlgorithmsAdaptive Control of Nonlinear SystemsDistributed Control Multi-Agent Systems