Offloading SLAM for Indoor Mobile Robots with Edge-Fog-Cloud Computing

V. Sarker, J. P. Queralta, Tuan Anh Nguyen Gia, H. Tenhunen, Tomi Westerlund
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引用次数: 44

Abstract

Indoor mobile robots are widely used in industrial environments such as large logistic warehouses. They are often in charge of collecting or sorting products. For such robots, computation-intensive operations account for a significant percentage of the total energy consumption and consequently affect battery life. Besides, in order to keep both the power consumption and hardware complexity low, simple micro-controllers or single-board computers are used as onboard local control units. This limits the computational capabilities of robots and consequently their performance. Offloading heavy computation to Cloud servers has been a widely used approach to solve this problem for cases where large amounts of sensor data such as real-time video feeds need to be analyzed. More recently, Fog and Edge computing are being leveraged for offloading tasks such as image processing and complex navigation algorithms involving non-linear mathematical operations. In this paper, we present a system architecture for offloading computationally expensive localization and mapping tasks to smart Edge gateways which use Fog services. We show how Edge computing brings computational capabilities of the Cloud to the robot environment without compromising operational reliability due to connection issues. Furthermore, we analyze the power consumption of a prototype robot vehicle in different modes and show how battery life can be significantly improved by moving the processing of data to the Edge layer.
基于边缘雾云计算的室内移动机器人SLAM卸载
室内移动机器人广泛应用于大型物流仓库等工业环境。他们通常负责收集或分类产品。对于这样的机器人,计算密集型操作占总能耗的很大比例,因此影响电池寿命。此外,为了保持低功耗和硬件复杂性,使用简单的微控制器或单板计算机作为板载本地控制单元。这限制了机器人的计算能力,从而限制了它们的性能。在需要分析大量传感器数据(如实时视频馈送)的情况下,将繁重的计算任务卸载到云服务器上已经成为解决这一问题的一种广泛使用的方法。最近,雾和边缘计算被用于卸载图像处理和涉及非线性数学运算的复杂导航算法等任务。在本文中,我们提出了一种系统架构,用于将计算上昂贵的定位和映射任务卸载到使用雾服务的智能边缘网关。我们将展示边缘计算如何将云计算能力引入机器人环境,而不会因连接问题而影响操作可靠性。此外,我们分析了原型机器人车辆在不同模式下的功耗,并展示了如何通过将数据处理移动到边缘层来显着提高电池寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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