Learn to efficiently exploit cost maps by combining RRT* with Reinforcement Learning

Riccardo Franceschini, M. Fumagalli, J. Becerra
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引用次数: 0

Abstract

Safe autonomous navigation of robots in complex and cluttered environments is a crucial task and is still an open challenge even in 2D environments. Being able to efficiently minimize multiple constraints such as safety or battery drain requires the ability to understand and leverage information from different cost maps. Rapid-exploring random trees (RRT) methods are often used in current path planning methods, thanks to their efficiency in finding a quick path to the goal. However, these approaches suffer from a slow convergence towards an optimal solution, especially when the planner's goal must consider other aspects like safety or battery consumption besides simply achieving the goal. Therefore, it is proposed a sample-efficient and cost-aware sampling RRT* method that can overcome previous methods by exploiting the information gathered from map analysis. In particular, the use of a Reinforcement Learning agent is leveraged to guide the RRT* sampling toward an almost optimal solution. The performance of the proposed method is demonstrated against different RRT* implementations in multiple synthetic environments.
通过将RRT*与强化学习相结合,学习有效地利用成本图
机器人在复杂和杂乱环境中的安全自主导航是一项至关重要的任务,即使在二维环境中仍然是一个开放的挑战。为了能够有效地减少安全或电池消耗等多重限制,需要能够理解和利用来自不同成本图的信息。快速探索随机树(RRT)方法在当前的路径规划方法中经常使用,因为它可以快速找到到达目标的路径。然而,这些方法都存在趋同于最优解决方案的缓慢问题,特别是当规划者的目标除了简单地实现目标之外,还必须考虑安全性或电池消耗等其他方面时。因此,本文提出了一种采样效率高、成本敏感的RRT*方法,该方法可以利用从地图分析中收集的信息来克服以往的方法。特别地,利用强化学习代理来引导RRT*采样接近最优解。在多个合成环境中针对不同的RRT*实现演示了所提出方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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