DU Mingbo, MEI Tao, CHEN Jiajia, ZHAO Pan, LIANG Huawei, HUANG Rulin, TAO Xiang. RRT-based Motion Planning Algorithm for Intelligent Vehicle in Complex Environments[J]. ROBOT, 2015, 37(4): 443-450. DOI: 10.13973/j.cnki.robot.2015.0443
Citation: DU Mingbo, MEI Tao, CHEN Jiajia, ZHAO Pan, LIANG Huawei, HUANG Rulin, TAO Xiang. RRT-based Motion Planning Algorithm for Intelligent Vehicle in Complex Environments[J]. ROBOT, 2015, 37(4): 443-450. DOI: 10.13973/j.cnki.robot.2015.0443

RRT-based Motion Planning Algorithm for Intelligent Vehicle in Complex Environments

  • The existing planning algorithms can not properly solve the motion planning problem of intelligent vehicle in complex environments with many irregular and random obstacles. To solve the problem, a simple and practical RRT-based algorithm, continuous-curvature RRT algorithm, is proposed. This algorithm combines the environmental constraints and the constraints of intelligent vehicle with RRTs. Firstly, a goal-biased sampling strategy and a reasonable metric function are introduced to greatly increase the planning speed and quality. And then, a post-processing method based on the maximum curvature constraint is presented to generate a smooth, continuous-curvature and executable trajectory. Simulation experiments and real intelligent vehicle test verify the correctness, validity and practicability of this algorithm.
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