Vincent Mageshkumar, Amit Baxi, Venkat Natarajan, Girish S. Murthy
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引用次数: 0
Abstract
In this work, we propose an advanced energy consumption model for an Autonomous Mobile Robots and validate the model on a real-world robot testbed. We show how our model can enable intelligent offloading of computationally heavy functions from the robot to an Edge server, over a wireless network, to minimize robot's energy consumption and maximize operating time on battery. Furthermore, we also present practical scenarios to show how our energy model can enable real-time adaptation of the Edge robotics system to constraints such as compute availability on the Edge server, available wireless network bandwidth, robot-specific camera frame rate requirements, robot navigation speeds and thereby improve robot energy efficiency. We show the benefits of our approach by offloading computationally heavy SLAM function from robot to the Edge server in simulation and through experiments on a real-world hardware testbed.
在这项工作中,我们为自主移动机器人(Autonomous Mobile Robots)提出了一种先进的能耗模型,并在真实世界的机器人测试平台上对该模型进行了验证。我们展示了我们的模型如何通过无线网络实现智能卸载,将计算繁重的功能从机器人转移到边缘服务器,从而最大限度地降低机器人的能耗,并最大限度地延长电池的工作时间。此外,我们还介绍了一些实际应用场景,以展示我们的能源模型如何使边缘机器人系统实时适应各种约束条件,如边缘服务器上的计算可用性、可用无线网络带宽、机器人特定相机帧速率要求、机器人导航速度等,从而提高机器人的能源效率。我们在仿真中将计算量很大的 SLAM 功能从机器人卸载到 Edge 服务器,并在真实世界的硬件测试平台上进行了实验,从而展示了我们这种方法的优势。