速度守护程序:基于经验的移动机器人速度调度

C. Ostafew, Angela P. Schoellig, T. Barfoot, J. Collier
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引用次数: 14

摘要

时间最优速度调度导致移动机器人沿着计划路径行驶,达到或接近机器人能力的极限。然而,推导模型来预测速度增加的影响是非常困难的。在本文中,我们提出了一个速度调度程序,它使用以往的经验,而不是复杂的模型,以产生时间最优的速度调度。该算法设计用于基于视觉的路径重复移动机器人,并利用经验确保可靠的定位,低路径跟踪误差和可实现的控制输入,同时最大化沿路径的速度。据我们所知,这是第一个结合以前的路径遍历经验来解决系统约束的速度调度器。所提出的速度调度器在室外地形中进行了超过4公里的路径穿越测试,使用的是一个大型阿克曼操纵机器人,速度在0.5米/秒到2.0米/秒之间。速度调度方法可以在机器人的能力范围内生成快速的速度调度。
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Speed Daemon: Experience-Based Mobile Robot Speed Scheduling
A time-optimal speed schedule results in a mobile robot driving along a planned path at or near the limits of the robot's capability. However, deriving models to predict the effect of increased speed can be very difficult. In this paper, we present a speed scheduler that uses previous experience, instead of complex models, to generate time-optimal speed schedules. The algorithm is designed for a vision-based, path-repeating mobile robot and uses experience to ensure reliable localization, low path-tracking errors, and realizable control inputs while maximizing the speed along the path. To our knowledge, this is the first speed scheduler to incorporate experience from previous path traversals in order to address system constraints. The proposed speed scheduler was tested in over 4 km of path traversals in outdoor terrain using a large Ackermann-steered robot travelling between 0.5 m/s and 2.0 m/s. The approach to speed scheduling is shown to generate fast speed schedules while remaining within the limits of the robot's capability.
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