论文标题
具有预测控制的轨迹计划的概率约束收紧技术
Probabilistic Constraint Tightening Techniques for Trajectory Planning with Predictive Control
论文作者
论文摘要
为了使自动化的移动车辆在现实世界中以最小的碰撞风险导航,其计划算法必须考虑测量和环境干扰的不确定性。在本文中,我们考虑了在这种不确定性存在下两种机器人车辆之间碰撞碰撞概率的保守近似的分析解决方案。在其中,我们提出了两种方法,我们称之为单位缩放和主轴旋转,用于取消有效近似(包括方向效应)之间碰撞概率的有效近似所需的双变量积分。我们在分析和数值上比较了这些方法的保守主义。通过通过模型预测指导方案结束控制循环,我们通过蒙特卡洛模拟观察到直接实施保守近似值的碰撞避免限制的限制对于实时计划仍然是不可行的。然后,我们根据紧密的碰撞约束提出和实施凸化方法,从而显着提高了预测指导方案的计算效率和鲁棒性。
In order for automated mobile vehicles to navigate in the real world with minimal collision risks, it is necessary for their planning algorithms to consider uncertainties from measurements and environmental disturbances. In this paper, we consider analytical solutions for a conservative approximation of the mutual probability of collision between two robotic vehicles in the presence of such uncertainties. Therein, we present two methods, which we call unitary scaling and principal axes rotation, for decoupling the bivariate integral required for efficient approximation of the probability of collision between two vehicles including orientation effects. We compare the conservatism of these methods analytically and numerically. By closing a control loop through a model predictive guidance scheme, we observe through Monte-Carlo simulations that directly implementing collision avoidance constraints from the conservative approximations remains infeasible for real-time planning. We then propose and implement a convexification approach based on the tightened collision constraints that significantly improves the computational efficiency and robustness of the predictive guidance scheme.