A least squares-based heading direction estimation for a robot swarm with only ranging capability

S. Hara, T. Ishimoto
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引用次数: 1

Abstract

For a wirelessly networked robot swarm, we have developed a method of generating a set of common coordinates with only ranging capability in the wireless communication protocol being used to network robots and have evaluated its performance by computer simulations and experiments. The proposed method essentially gives a robot swarm an initial step to notify each robot of its own heading direction in a set of generated coordinates, before the swarm tries to accomplish a given unified task. However, the estimated heading direction for each robot is not accurate enough to be able to control the motion of the swarm as a group, so a method for improving the accuracy of the heading direction is necessary after the initial step. In this paper, we propose a Least Squares (LS)-based method of improving the initially estimated heading direction for each robot, which is applicable during a series of the motions of the swarm. We evaluate the performance of the proposed method by computer simulations and experiments.
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基于最小二乘的仅具有测距能力的机器人群航向估计
对于一个无线网络机器人群,我们开发了一种方法来生成一组公共坐标,仅具有用于网络机器人的无线通信协议中的测距能力,并通过计算机模拟和实验评估了其性能。提出的方法本质上是给机器人群体一个初始步骤,在群体尝试完成给定的统一任务之前,在一组生成的坐标中通知每个机器人自己的前进方向。然而,每个机器人的航向估计不够精确,无法控制群体的运动,因此在初始步骤之后需要一种提高航向精度的方法。在本文中,我们提出了一种基于最小二乘(LS)的方法来改进每个机器人的初始估计方向,该方法适用于群体的一系列运动。通过计算机仿真和实验对所提方法的性能进行了评价。
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