Guaranteed Safe Reachability-based Trajectory Design for a High-Fidelity Model of an Autonomous Passenger Vehicle

2019 AMERICAN CONTROL CONFERENCE (ACC)(2019)

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摘要
Trajectory planning is challenging for autonomous cars since they operate in unpredictable environments with limited sensor horizons. To incorporate new information as it is sensed, planning is done in a loop, with the next plan being computed as the previous plan is executed. Reachability-based Trajectory Design (RTD) is a recent, provably safe, real-time algorithm for trajectory planning. RTD consists of an offline Forward Reachable Set (FRS) computation of the vehicle tracking parameterized trajectories; and online trajectory optimization using the FRS to map obstacles to constraints in a provably-safe way. In the literature, RTD has only been applied to small mobile robots. The contribution of this work is RTD on a passenger vehicle in CarSim, with a full powertrain model, chassis and tire dynamics. RTD operates the vehicle safely at up to 15 m/s on a two-lane road around randomly placed obstacles only known to the vehicle when detected within its sensor horizon. RTD is compared with a Nonlinear Model Predictive Control (NMPC) and a Rapidly-exploring Random Tree (RRT) approach. The experiment demonstrates RTD's ability to plan safe trajectories in real time, in contrast to the existing state-of-the-art approaches.
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关键词
provably safe algorithm,trajectory planning,FRS,vehicle tracking parameterized trajectories,online trajectory optimization,provably-safe way,powertrain model,sensor horizon,autonomous passenger vehicle,autonomous cars,real-time algorithm,reachable set computation,nonlinear model-predictive control,high-fidelity model,safe reachability-based trajectory design,RTD ability,rapidly-exploring random tree
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