能效是支持设备到设备通信(device-to-device,D2D)的蜂窝网络的关键性能。在每个D2D群内有一个发射设备和两个接收设备。发射设备从基站广播的信号采集能量,再利用所采集的能量向接收设备传输数据。提出基于时隙和功率分配的联合优化算...能效是支持设备到设备通信(device-to-device,D2D)的蜂窝网络的关键性能。在每个D2D群内有一个发射设备和两个接收设备。发射设备从基站广播的信号采集能量,再利用所采集的能量向接收设备传输数据。提出基于时隙和功率分配的联合优化算法(joint time and power allocation optimization,JTAO)。通过优化采集能量和传输数据的时隙以及发射功率,最大化能效。发射设备采用非正交多址接入技术,降低用户间干扰。性能分析表明,通过优化发射设备的传输功率,提升用户能效。展开更多
Internet of Things(IoT) can be conveniently deployed while empowering various applications, where the IoT nodes can form clusters to finish certain missions collectively. As energyefficient operations are critical to ...Internet of Things(IoT) can be conveniently deployed while empowering various applications, where the IoT nodes can form clusters to finish certain missions collectively. As energyefficient operations are critical to prolong the lifetime of the energy-constrained IoT devices, the Unmanned Aerial Vehicle(UAV) can be dispatched to geographically approach the IoT clusters towards energy-efficient IoT transmissions. This paper intends to maximize the system energy efficiency by considering both the IoT transmission energy and UAV propulsion energy, where the UAV trajectory and IoT communication resources are jointly optimized. By applying largesystem analysis and Dinkelbach method, the original fractional optimization is approximated and reformulated in the form of subtraction, and further a block coordinate descent framework is employed to update the UAV trajectory and IoT communication resources iteratively. Extensive simulation results are provided to corroborate the effectiveness of the proposed method.展开更多
文摘能效是支持设备到设备通信(device-to-device,D2D)的蜂窝网络的关键性能。在每个D2D群内有一个发射设备和两个接收设备。发射设备从基站广播的信号采集能量,再利用所采集的能量向接收设备传输数据。提出基于时隙和功率分配的联合优化算法(joint time and power allocation optimization,JTAO)。通过优化采集能量和传输数据的时隙以及发射功率,最大化能效。发射设备采用非正交多址接入技术,降低用户间干扰。性能分析表明,通过优化发射设备的传输功率,提升用户能效。
基金co-supported by the National Key Research and Development Program of China under Grant 2020YFB1807003National Natural Science Foundation of China(Nos.61901378,61941119)+1 种基金China Postdoctoral Science Foundation(Nos.BX20190287,2020M683563)Open Research Fund of National Mobile Communications Research Laboratory,Southeast University(No.2022D01)。
文摘Internet of Things(IoT) can be conveniently deployed while empowering various applications, where the IoT nodes can form clusters to finish certain missions collectively. As energyefficient operations are critical to prolong the lifetime of the energy-constrained IoT devices, the Unmanned Aerial Vehicle(UAV) can be dispatched to geographically approach the IoT clusters towards energy-efficient IoT transmissions. This paper intends to maximize the system energy efficiency by considering both the IoT transmission energy and UAV propulsion energy, where the UAV trajectory and IoT communication resources are jointly optimized. By applying largesystem analysis and Dinkelbach method, the original fractional optimization is approximated and reformulated in the form of subtraction, and further a block coordinate descent framework is employed to update the UAV trajectory and IoT communication resources iteratively. Extensive simulation results are provided to corroborate the effectiveness of the proposed method.