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Real-Time Path Planning Based on Harmonic Functions under a Proper Generalized Decomposition-Based Framework

机译:基于谐波函数的基于谐波函数的实时路径规划

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摘要

This paper presents a real-time global path planning method for mobile robots using harmonic functions, such as the Poisson equation, based on the Proper Generalized Decomposition (PGD) of these functions. The main property of the proposed technique is that the computational cost is negligible in real-time, even if the robot is disturbed or the goal is changed. The main idea of the method is the off-line generation, for a given environment, of the whole set of paths from any start and goal configurations of a mobile robot, namely the computational vademecum, derived from a harmonic potential field in order to use it on-line for decision-making purposes. Up until now, the resolution of the Laplace or Poisson equations has been based on traditional numerical techniques unfeasible for real-time calculation. This drawback has prevented the extensive use of harmonic functions in autonomous navigation, despite their powerful properties. The numerical technique that reverses this situation is the Proper Generalized Decomposition. To demonstrate and validate the properties of the PGD-vademecum in a potential-guided path planning framework, both real and simulated implementations have been developed. Simulated scenarios, such as an L-Shaped corridor and a benchmark bug trap, are used, and a real navigation of a LEGO®MINDSTORMS robot running in static environments with variable start and goal configurations is shown. This device has been selected due to its computational and memory-restricted capabilities, and it is a good example of how its properties could help the development of social robots.
机译:本文介绍了使用谐波函数的移动机器人的实时全局路径规划方法,例如Poisson方程,基于这些功能的适当的广义分解(PGD)。所提出的技术的主要性质是,即使机器人受到干扰或改变目标,计算成本也可以实时忽略不计。该方法的主要思想是离线生成,对于给定的环境中,整个组的从移动机器人,即计算vademecum,从一个谐波势场衍生的任何起始和目标配置路径,以便使用它在线以获取决策目的。到目前为止,Laplace或Poisson方程的分辨率一直基于传统的数值技术不可行,可用于实时计算。尽管有强大的财产,但缺点阻止了广泛利用自主导航中的谐波函数。逆转这种情况的数值技术是正确的广义分解。为了证明和验证在潜在引导的路径规划框架中PGD-vademecum的属性,已经开发了真实和模拟的实现。使用模拟场景,例如L形走廊和基准Bug陷阱,并显示了在具有变量开始和目标配置的静态环境中运行的Lego®Mindstorms机器人的实际导航。由于其计算和内存限制功能,该设备已选择,并且其特性如何有助于社会机器人的发展是一个很好的例子。

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