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Energy Optimization in Dual-RIS UAV-Aided MEC-Enabled Internet of Vehicles

机译:Dual-Ris Uav-Aided MEC的能量优化支持的车辆

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摘要

Mobile edge computing (MEC) represents an enabling technology for prospective Internet of Vehicles (IoV) networks. However, the complex vehicular propagation environment may hinder computation offloading. To this end, this paper proposes a novel computation offloading framework for IoV and presents an unmanned aerial vehicle (UAV)-aided network architecture. It is considered that the connected vehicles in a IoV ecosystem should fully offload latency-critical computation-intensive tasks to road side units (RSUs) that integrate MEC functionalities. In this regard, a UAV is deployed to serve as an aerial RSU (ARSU) and also operate as an aerial relay to offload part of the tasks to a ground RSU (GRSU). In order to further enhance the end-to-end communication during data offloading, the proposed architecture relies on reconfigurable intelligent surface (RIS) units consisting of arrays of reflecting elements. In particular, a dual-RIS configuration is presented, where each RIS unit serves its nearby network nodes. Since perfect phase estimation or high-precision configuration of the reflection phases is impractical in highly mobile IoV environments, data offloading via RIS units with phase errors is considered. As the efficient energy management of resource-constrained electric vehicles and battery-enabled RSUs is of outmost importance, this paper proposes an optimization approach that intends to minimize the weighted total energy consumption (WTEC) of the vehicles and ARSU subject to transmit power constraints, timeslot scheduling, and task allocation. Extensive numerical calculations are carried out to verify the efficacy of the optimized dual-RIS-assisted wireless transmission.
机译:移动边缘计算(MEC)代表了用于预期车辆(IOV)网络的能够实现技术。然而,复杂的车辆传播环境可能会阻碍计算卸载。为此,本文提出了一种新颖的IOV计算备用框架,并提出了一种无人驾驶飞行器(UAV)的网络架构。认为IOV生态系统中的已连接的车辆应该完全卸载延迟关键的计算密集型任务到集成MEC功能的路边单元(RSU)。在这方面,将UAV部署以用作空中RSU(ARSU),并且还作为空中继电器运行,以将部分任务卸载到地面RSU(GRSU)。为了进一步提高数据卸载期间的端到端通信,所提出的架构依赖于由反射元件的阵列组成的可重新配置智能表面(RIS)单元。特别地,呈现了双RIS配置,其中每个RIS单元用于其附近的网络节点。由于在高度移动IOV环境中,反射阶段的完美相位估计或高精度配置是不切实际的,因此考虑通过具有相位误差的RIS单元卸载的数据。由于资源受限电动汽车和能电池的RSU的有效能量管理是最重要的,本文提出了一种优化方法,该方法旨在最大限度地减少车辆的加权总能量消耗(WTEC)和ARSU受到传输功率限制的影响,时隙调度和任务分配。进行广泛的数值计算以验证优化的双RIS辅助无线传输的功效。

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