In recent years, cloud and edge architectures have gained tremendous focus for offloading computationally heavy applications. From machine learning and Internet of Thing (IOT) to industrial procedures and robotics, cloud computing have been used extensively for data processing and storage purposes, thanks to its "infinite" resources. On the other hand, cloud computing is characterized by long time delays due to the long distance between the cloud servers and the machine requesting the resources. In contrast, edge computing provides almost real-time services since edge servers are located significantly closer to the source of data. This capability sets edge computing as an ideal option for real-time applications, like high level control, for resource-constrained platforms. In order to utilize the edge resources, several technologies, with basic ones as containers and orchestrators like Kubernetes, have been developed to provide an environment with many features, based on each application's requirements. In this context, this works presents the implementation and evaluation of a novel edge architecture based on Kubernetes orchestration for controlling the trajectory of a resource-constrained Unmanned Aerial Vehicle (UAV) by enabling Model Predictive Control (MPC).
翻译:近几年来,云层和边缘结构在卸载大量计算应用方面获得了巨大的关注。从机器学习和互联网(IOT)到工业程序和机器人,云计算由于“无限”资源被广泛用于数据处理和储存目的。另一方面,云计算由于云服务器和请求资源的机器之间的距离遥远而长期拖延。相反,边缘计算提供了几乎实时的服务,因为边缘服务器离数据来源很近。这种能力将计算作为实时应用的理想选择,如高水平控制、资源限制平台。为了利用边缘资源,已经开发了若干技术,以基本技术作为库伯涅茨等容器和管弦乐器,根据每个应用程序的要求提供具有多种特点的环境。在这方面,这项工作介绍了基于Kubernetes调制的新型边缘结构的实施和评价,以控制资源限制的无人驾驶飞行器(UAVE)的轨迹,办法是通过建立模型预测控制(MPC)。