基于 DNN 的相对定位技术,用于移动式无人蜂群机器人的实时定位

In-Young Hyun, Seung-Mi Yun, Eui-Rim Jeong
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引用次数: 0

摘要

无人蜂群机器人系统可使多个机器人协作执行各种任务,其潜在应用已得到广泛研究。在运行过程中,准确确定蜂群机器人的位置至关重要,为此采用了各种定位算法。具体来说,在全球定位系统(GPS)信号不可用的情况下,可利用具有已知位置信息的固定锚节点进行定位。然而,在没有固定锚节点的情况下,机器人以蜂群的形式运行,应用这种技术会带来挑战,因此需要一种完全依赖机器人之间距离信息的定位技术。本文提出了一种深度神经网络(DNN)技术,该技术仅利用移动节点之间的距离信息来预测每个节点的实时相对坐标。假设节点之间的距离按照预定的测量周期依次定期更新。基于网格的定位技术被用作性能比较的现有方法。计算机仿真结果表明,与现有的基于网格的方法相比,拟议的基于 DNN 的相对定位技术表现出更优越的定位性能。此外,无论距离测量周期如何,所提出的技术都显示出相似的性能,这表明它受周期的影响不大。因此,将所提出的相对定位算法应用于蜂群机器人可以实现实时和精确的相对定位,从而促进蜂群机器人的精确位置跟踪。
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DNN-Based Relative Localization Technique for Real-Time Positioning of Moving Unmanned Swarm Robots
The unmanned swarm robot system, which enables multiple robots to collaborate and perform a variety of tasks, is extensively researched for its potential applications. Accurate determination of the location of swarm robots during operation is of paramount importance, and various positioning algorithms are employed to achieve this. Specifically, in situations where global positioning system (GPS) signals are unavailable, fixed anchor nodes with known location information can be utilized for localization. However, in scenarios where fixed anchor nodes are not present, and the robots operate in a swarm, applying this technology poses challenges, necessitating a localization technique that relies solely on distance information between the robots. This paper proposes a deep neural network (DNN) technique that utilizes only the distance information between moving nodes to predict the real-time relative coordinates of each node. It is assumed that the distances between nodes are updated sequentially and periodically according to a predetermined measurement cycle. A grid-based localization technique is used as the existing method for performance comparison. Computer simulation results demonstrate that the proposed DNN-based relative Localization technique exhibits superior localization performance compared to the existing Grid-based method. Furthermore, the proposed technique shows similar performance regardless of the distance measurement cycle, indicating that it is not significantly affected by the cycle. Therefore, applying the proposed relative Localization algorithm to swarm robots could enable real-time and accurate relative positioning, facilitating precise location tracking of the swarm.
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