This paper proposes a rapidly-exploring random trees (RRT) algorithm to solve the motion planning problem for hybrid systems. At each iteration, the proposed algorithm, called HyRRT, randomly picks a state sample and extends the search tree by flow or jump, which is also chosen randomly when both regimes are possible. Through a definition of concatenation of functions defined on hybrid time domains, we show that HyRRT is probabilistically complete, namely, the probability of failing to find a motion plan approaches zero as the number of iterations of the algorithm increases. This property is guaranteed under mild conditions on the data defining the motion plan, which include a relaxation of the usual positive clearance assumption imposed in the literature of classical systems. The motion plan is computed through the solution of two optimization problems, one associated with the flow and the other with the jumps of the system. The proposed algorithm is applied to a walking robot so as to highlight its generality and computational features.
翻译:本文建议快速探索随机树算法( RRT) 来解决混合系统的运动规划问题。 在每次迭代中, 提议的算法( 称为 HyRRT ) 随机选择州样本, 并通过流动或跳跃扩展搜索树, 在两种制度都有可能时也可以随机选择。 通过混合时间域定义功能的组合定义, 我们显示 HyRRT 具有概率性完整性, 即无法找到运动计划接近零的可能性, 即算法的迭代数增加。 在确定运动计划的数据的温和条件下, 此属性得到保障, 包括放宽古典系统文献中通常设定的积极清除假设。 运动计划通过两种优化问题的解决方案来计算, 一种与流动相关, 另一种则与系统跳动相关。 拟议的算法适用于行走机器人, 以突出其一般性和计算特征 。