...
首页> 外文期刊>Sustainable Computing >Container-based load balancing for energy efficiency in software-defined edge computing environment
【24h】

Container-based load balancing for energy efficiency in software-defined edge computing environment

机译:基于集装箱的负载均衡,用于软件定义的边缘计算环境中的能效

获取原文
获取原文并翻译 | 示例
           

摘要

The workload generated by the Internet of Things (IoT)-based infrastructure is often handled by the cloud data centers (DCs). However, in recent time, an exponential increase in the deployment of the IoT-based infrastructure has escalated the workload on the DCs. So, these DCs are not fully capable to meet the strict demand of IoT devices in regard to the lower latency as well as high data rate while provisioning IoT workloads. Therefore, to reinforce the latency-sensitive workloads, an intersection layer known as edge computing has successfully balanced the entire service provisioning landscape. In this IoT-edge-cloud ecosystem, large number of interactions and data transmissions among different layer can increase the load on underlying network infrastructure. So, software-defined edge computing has emerged as a viable solution to resolve these latencysensitive workload issues. Additionally, energy consumption has been witnessed as a major challenge in resource-constrained edge systems. The existing solutions are not fully compatible in Software-defined Edge ecosystem for handling IoT workloads with an optimal trade-off between energy-efficiency and latency. Hence, this article proposes a lightweight and energy-efficient container-as-a-service (CaaS) approach based on the software-define edge computing to provision the workloads generated from the latency-sensitive IoT applications. A Stackelberg game is formulated for a two-period resource allocation between end-user/IoT devices and Edge devices considering the service level agreement. Furthermore, an energy-efficient ensemble for container allocation, consolidation and migration is also designed for load balancing in software-defined edge computing environment. The proposed approach is validated through a simulated environment with respect to CPU serve time, network serve time, overall delay, lastly energy consumption. The results obtained show the superiority of the proposed in comparison to the existing variants.
机译:基于Internet(IoT)的基础设施通常由云数据中心(DCS)处理的工作负载。然而,最近,基于物联网基础设施的部署的指数增加升级了DCS上的工作负载。因此,这些DCS不完全能够满足IoT设备的严格需求,而在提供IOT工作负载的同时在较低的延迟以及高数据速率。因此,为了加强延迟敏感的工作负载,称为Edge Computing的交叉点层已成功平衡整个服务供应景观。在此IoT-Edge-云生态系统中,不同层之间的大量交互和数据传输可以增加底层网络基础架构的负载。因此,软件定义的边缘计算已成为解决这些拉脱型工作负载问题的可行解决方案。此外,能源消耗作为资源受限的边缘系统中的主要挑战。现有解决方案在软件定义的边缘生态系统中不完全兼容,用于处理IOT工作负载,在能效和延迟之间具有最佳权衡。因此,本文提出了一种基于软件定义边缘计算的轻量级和节能的容器 - AS-Service(CAAS)方法,以便提供从延迟敏感的IOT应用程序生成的工作负载。考虑服务级别协议的最终用户/物联网设备和边缘设备之间的双周期资源分配配制了一个Stackelberg游戏。此外,还设计了一个用于集装箱分配,整合和迁移的节能集合,用于在软件定义的边缘计算环境中负载平衡。所提出的方法是通过模拟环境验证的关于CPU服务时间,网络服务时间,总体延迟,最后能耗。得到的结果显示了与现有变体相比所提出的优越性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号