The energy sustainability of multi-access edge computing (MEC) platforms is here addressed by developing Energy-Aware job Scheduling at the Edge (EASE), a computing resource scheduler for edge servers co-powered by renewable energy resources and the power grid. The scenario under study involves the optimal allocation and migration of time-sensitive computing tasks in a resource-constrained internet of vehicles (IoV) context. This is achieved by tackling, as the main objective, the minimization of the carbon footprint of the edge network, whilst delivering adequate quality of service (QoS) to the end users (e.g., meeting task execution deadlines). EASE integrates i) a centralized optimization step, solved through model predictive control (MPC), to manage the renewable energy that is locally collected at the edge servers and their local computing resources, estimating their future availability, and ii) a distributed consensus step, solved via dual ascent in closed form, to reach agreement on service migrations. EASE is compared with four existing migration strategies. Quantitative results demonstrate its greater energy efficiency, which often gets close to complete carbon neutrality, while also improving the QoS.
翻译:此处探讨多接入边缘计算平台的能源可持续性问题,办法是在边缘开发能源软件工作布局(EASE),这是由可再生能源资源和电网共同驱动的边缘服务器的计算资源调度器,正在研究的情景是,在资源受限制的车辆互联网(IoV)背景下,最佳分配和迁移时间敏感的计算任务,将最大限度地减少边缘网络的碳足迹作为主要目标,同时向终端用户提供适当的服务质量(QOS),EASE整合了一个集中的优化步骤,通过模型预测控制(MPC)解决,以管理在边缘服务器及其本地计算资源当地收集的可再生能源,估计其未来可用性,以及二)通过封闭形式的双向解决的分布式协商一致步骤,以就服务迁移达成协议。EASESE与现有的四项移徙战略进行了比较。量化结果表明,其更高的能源效率往往接近于完全的碳中性,同时改进QOS。