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首页> 外文期刊>IEEE Robotics and Automation Letters >Optimal Stochastic Vehicle Path Planning Using Covariance Steering
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Optimal Stochastic Vehicle Path Planning Using Covariance Steering

机译:使用协方差转向的最优随机车辆路径规划

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This letter addresses the problem of vehicle path planning in the presence of obstacles and uncertainties, a fundamental robotics problem. While several path planning algorithms have been proposed over the years, many of them have dealt with only deterministic environments or with only open-loop uncertainty, i.e., the uncertainty of the system state is not controlled and, typically, increases with time because of exogenous disturbances. This may lead to potentially conservative nominal paths. The typical approach to deal with disturbances and reduce uncertainty is to use a lower level feedback controller. We advocate the premise that, if a path planner can consider the closed-loop evolution of the system uncertainty, it can lead to less conservative, but still feasible, paths. To this end, in this letter, we develop an approach that is based on optimal covariance steering, which explicitly steers the state covariance for stochastic linear systems. We verify the proposed framework using extensive numerical simulations.
机译:这封信解决了存在障碍和不确定性的车辆路径规划问题,这是一个基本的机器人技术问题。尽管多年来已经提出了几种路径规划算法,但是其中许多算法仅处理确定性环境或仅处理开环不确定性,即,系统状态的不确定性不受控制,并且由于外源性而通常随时间增加干扰。这可能导致潜在的保守标称路径。处理干扰并减少不确定性的典型方法是使用较低级别的反馈控制器。我们主张的前提是,如果路径规划者可以考虑系统不确定性的闭环演化,那么它可能会导致路径的保守性降低,但仍然可行。为此,在这封信中,我们开发了一种基于最佳协方差转向的方法,该方法可明确控制随机线性系统的状态协方差。我们使用大量的数值模拟来验证所提出的框架。

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