首页> 外文期刊>IEEE Transactions on Cognitive Communications and Networking >A Time-Adaptive Heuristic for Cognitive Cloud Offloading in Multi-RAT Enabled Wireless Devices
【24h】

A Time-Adaptive Heuristic for Cognitive Cloud Offloading in Multi-RAT Enabled Wireless Devices

机译:支持多RAT的无线设备中认知云卸载的时间自适应启发式方法

获取原文
获取原文并翻译 | 示例
           

摘要

We introduce the concept of cognitive cloud offloading where all viable wireless interfaces of a multiple radio enabled device are used for computation offloading. We propose a time and wireless adaptive heuristic for offloading computationally intensive applications to a remote cloud with goals of reducing the energy consumption on the mobile device, execution time of the application, and efficient use of the multiple radio interfaces available at the device. The proposed algorithms simultaneously determine: 1) execution place of each application component (mobile/cloud); 2) amount of the associated data to be sent via each available interface of the multiple radio access technology device; and 3) scheduling order of the application components. We define a net utility function that trades off mobile device resources (battery, CPU, and memory) with realtime communication costs, such as latency and communication energy, subject to constraints that ensure queue stability of radio interfaces. Simulations using real data from an HTC smartphone running multi-component applications with Amazon EC2 as the cloud, and two radios, LTE and WiFi, show that cognitive cloud offloading provides higher net utility in comparison to the best-interface protocol. Scalability of the proposed heuristic is further analyzed using various levels for component dependency graphs and energy-delay trade-off factors.
机译:我们介绍了认知云卸载的概念,其中将具有多无线电功能的设备的所有可行无线接口用于计算卸载。我们提出了一种时间和无线自适应启发式方法,用于将计算量大的应用程序卸载到远程云中,以减少移动设备的能耗,应用程序的执行时间以及有效使用设备上可用的多个无线电接口。所提出的算法同时确定:1)每个应用程序组件(移动/云)的执行位置; 2)通过多无线电接入技术设备的每个可用接口发送的相关数据量; 3)应用组件的调度顺序。我们定义了一个净实用程序功能,该功能可以权衡移动设备资源(电池,CPU和内存)与实时通信成本(例如延迟和通信能量)的关系,但要确保无线接口队列的稳定性。使用来自运行HTC智能手机的真实数据进行的模拟,该智能手机运行以Amazon EC2为云的多组件应用程序,以及两个无线电设备LTE和WiFi,与最佳接口协议相比,认知云卸载提供了更高的网络实用性。拟议的启发式方法的可伸缩性使用各种级别的组件依赖图和能量延迟权衡因子进行了进一步分析。

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