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Deep Reinforcement Learning for Backscatter-Aided Data Offloading in Mobile Edge Computing

机译:在移动边缘计算中卸载后散射数据卸载的深度增强学习

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Wireless network optimization has been becoming very challenging as the problem size and complexity increase tremendously, due to close couplings among network entities with heterogeneous service and resource requirements. By continuously interacting with the environment, DRL provides a mechanism for different network entities to build knowledge and make autonomous decisions to improve network performance. In this article, we first review typical DRL approaches and recent enhancements. We then discuss the applications of DRL for mobile edge computing (MEC), which can be used for user devices to offload computation workload to MEC servers. However, for the low-power user devices, for example, wireless sensors, MEC can be costly as data offloading also consumes high power in RF communications. To balance the energy consumption in local computation and data offloading, we propose a novel hybrid offloading model that exploits the complementary operations of active RF communications and low-power backscatter communications. To maximize the energy efficiency in MEC offloading, the DRL framework is customized to learn the optimal transmission scheduling and workload allocation in two communications technologies. Numerical results show that the hybrid offloading scheme can improve the energy efficiency over 20 percent compared to existing schemes.
机译:由于问题规模和复杂性增加,无线网络优化变得非常具有挑战性,由于网络实体的耦合,具有异构服务和资源要求。通过与环境连续交互,DRL为不同的网络实体提供了一种建立知识并进行自主决策以提高网络性能的机制。在本文中,我们首先审查典型的DRL方法和最近的增强功能。然后,我们讨论DRL对移动边缘计算(MEC)的应用,可用于用户设备将计算工作负载卸载到MEC服务器。然而,对于低功率用户设备,例如,无线传感器,MEC可以昂贵,因为数据卸载也消耗了RF通信中的高功率。为了平衡本地计算和数据卸载中的能量消耗,我们提出了一种新颖的混合卸载模型,用于利用有源RF通信和低功耗反向散射通信的互补操作。为了使MEC卸载中的能量效率最大化,定制了DRL框架,以了解两个通信技术中的最佳传输调度和工作负载分配。数值结果表明,与现有方案相比,混合卸载方案可以将能源效率提高20%以上。

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