首页> 外文期刊>Services Computing, IEEE Transactions on >TARCO: Two-Stage Auction for D2D Relay Aided Computation Resource Allocation in HetNet
【24h】

TARCO: Two-Stage Auction for D2D Relay Aided Computation Resource Allocation in HetNet

机译:塔科:HetNet中的D2D继电器辅助计算资源分配的两级拍卖

获取原文
获取原文并翻译 | 示例

摘要

In heterogeneous cellular network, task scheduling for computation offloading is one of the biggest challenges. Most works focus on alleviating heavy burden of macro base stations by moving the computation tasks on macro cell user equipment (MUE) to remote cloud or small cell base stations. But the selfishness of network users is seldom considered. Motivated by the multiple access mobile edge computing, this paper provides incentive for task transfer from macro cell users to small cell base stations. The proposed incentive scheme utilizes small cell user equipments to provide relay services. The problem of computation offloading is modeled as a two-stage auction, in which the remote MUEs with common social character can form a group and then buy the computation resource of small cell base stations with the relaying of small cell user equipment. A two-stage auction scheme named TARCO is contributed to maximize utilities for both sellers and buyers in the network. The truthfulness, individual rational and budget balance properties of TARCO are also proved in this paper. In addition, two algorithms are proposed to further refine TARCO on the social welfare of the network. One can achieve higher utility of MUEs and the other can obtain higher total social welfare. Extensive simulation results demonstrate that, TARCO is better than random algorithm by 104.90 percent in terms of average utility of MUEs, while the performance of TARCO is further improved up to 28.75 percent and 17.06 percent by the proposed two algorithms, respectively.
机译:在异构蜂窝网络中,计算卸载的任务调度是最大的挑战之一。大多数作品专注于减轻宏观云或小小区基站的计算任务来缓解宏基站的沉重负担。但是网络用户的自私也很少考虑。本文提供了多址移动边缘计算的激励,提供了从宏小区用户到小小区基站的任务传输的激励。拟议的激励方案利用小型电池用户设备提供中继服务。计算卸载问题被建模为两级拍卖,其中具有共同社交角色的偏远MUE可以形成一个组,然后通过小小区用户设备的中继购买小小区基站的计算资源。一个名为Tarco的两级拍卖计划是有助于最大限度地提高网络中卖家和买家的公用事业。本文还证明了塔尔斯的真实性,个人理性和预算平衡性质。此外,提出了两种算法,以进一步优化网络社会福利的塔科。人们可以获得更高的牛奶效用,另一个可以获得更高的社会福利。广泛的仿真结果表明,塔尔科在牛肉的平均效用方面比随机算法优于104.90%,而塔尔斯的性能分别进一步提高了28.75%和17.06%的算法。

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