论文标题

FERECO:一种基于预测的机器人操纵器实时遥控器的恢复机制

FoReCo: a forecast-based recovery mechanism for real-time remote control of robotic manipulators

论文作者

Groshev, Milan, Martín-Pérez, Jorge, Guimarães, Carlos, de la Oliva, Antonio, Bernardos, Carlos J.

论文摘要

无线通信代表了未来制造工厂的游戏规则改变者,可以通过机械和其他组件限制在工厂地板上的刚性有线连接到一个位置,从而使灵活的生产链启用了灵活的生产链。但是,无线频谱中电磁干扰的存在可能会导致数据包丢失和延迟,从而使其成为满足工业应用极端可靠性要求的具有挑战性的环境。在这种情况下,从边缘或云实现实时遥控器变得复杂。在本文中,我们研究了一种基于预测的恢复机制,用于使用机器人学习(ML)的机器人操纵器(FERECO)实时遥控器来推断由于无线通道中干扰引起的丢失命令。通过仿真和实验在干扰易于IEEE 802.11无线链接中评估了FERECO,并使用执行选择任务的商业研究机器人进行评估。结果表明,在干涉的情况下,在仿真和实验中,X18和X2次释放轨迹误差会降低,并且该遗体足够轻巧,可以在现有解决方案中已经使用的硬件中部署。

Wireless communications represent a game changer for future manufacturing plants, enabling flexible production chains as machinery and other components are not restricted to a location by the rigid wired connections on the factory floor. However, the presence of electromagnetic interference in the wireless spectrum may result in packet loss and delay, making it a challenging environment to meet the extreme reliability requirements of industrial applications. In such conditions, achieving real-time remote control, either from the Edge or Cloud, becomes complex. In this paper, we investigate a forecast-based recovery mechanism for real-time remote control of robotic manipulators (FoReCo) that uses Machine Learning (ML) to infer lost commands caused by interference in the wireless channel. FoReCo is evaluated through both simulation and experimentation in interference prone IEEE 802.11 wireless links, and using a commercial research robot that performs pick-and-place tasks. Results show that in case of interference, FoReCo trajectory error is decreased by x18 and x2 times in simulation and experimentation, and that FoReCo is sufficiently lightweight to be deployed in the hardware of already used in existing solutions.

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