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Optimised Informed RRTs for Mobile Robot Path Planning

机译:用于移动机器人路径规划的优化的知情RRT

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Path planners based on basic rapidly-exploring random trees (RRTs) are quick and effcient, and thus favourable for real-time robot path planning, but are almost-surely suboptimal. In contrast, the optimal RRT (RRT*) converges to the optimal solution, but may be expensive in practice. Recent work has focused on accelerating the RRT*’s convergence rate. The most successful strategies are informed sampling, path optimisation, and a combination thereof. However, informed sampling and its combination with path optimisation have not been applied to the basic RRT. Moreover, while a number of path optimisers can be used to accelerate the convergence rate, a comparison of their effectiveness is lacking. This paper investigates the use of informed sampling and path optimisation to accelerate planners based on both the basic RRT and the RRT*, resulting in a family of algorithms known as optimised informed RRTs. We apply different path optimisers and compare their effectiveness. The goal is to ascertain if applying informed sampling and path optimisation can help the quick, though almost-surely suboptimal, path planners based on the basic RRT attain comparable or better performance than RRT*-based planners. Analyses show that RRT-based optimised informed RRTs do attain better performance than their RRT*-based counterparts, both when planning time is limited and when there is more planning time.
机译:基于基本的快速探索随机树(RRT)的路径规划者是快速而有效的,因此有利于实时机器人路径规划,但几乎是肯定的。相反,最佳RRT(RRT *)会聚到最佳解决方案,但在实践中可能是昂贵的。最近的工作致力于加快RRT *的收敛速度。最成功的策略是通知采样,路径优化和其组合。但是,知情采样及其与路径优化的组合尚未应用于基本RRT。此外,虽然可以使用多个路径优化器来加速收敛速度,但缺乏其有效性的比较。本文调查了使用知情采样和路径优化,以基于基本RRT和RRT *加速规划者,从而导致称为已知优化的通知RRT的算法系列。我们应用不同的路径优化器并比较它们的效果。目标是确定应用知情采样和路径优化是否可以帮助快速,尽管几乎肯定地,基于基本RRT的路径规划者比RRT *基于策划者实现了可比或更好的性能。分析表明,基于RRT的优化明智的RRT可以获得比计划时间有限的RRT *基数的更好的性能,并且当有更多规划时间时。

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