QoS and energy-efficiency aware scheduling and resource allocation scheme in LTE-A uplink systems

被引:0
作者
Chol Jong
Yong Chun Kim
Jun Ho So
Kum Chol Ri
机构
[1] Kim Il Sung University,Telecommunication Research Center, The Institute of High
来源
Telecommunication Systems | 2023年 / 82卷
关键词
Energy efficiency; LTE-A; Scheduling; Resource allocation; QoS;
D O I
暂无
中图分类号
学科分类号
摘要
With the fast evolution of the wireless communications, the energy consumption of mobile network and the data flow in the network are increasing. Thus, it is very important to increase the Energy Efficiency (EE) and reduce packet loss rate. This article surveys the scheduling and resource allocation algorithm to reduce packet loss rate while increasing EE in the uplink of Long Term Evolution-Advanced system. Here, new framework that refers previous value as an optimization value of the optimization problem solving process is proposed. Furthermore, the mathematical model of the process is defined as NP-Hard problem and the new solving method is proposed. We propose a user priority metric, considering that the demand for packet loss rate and packet delay are different according to the Quality of Service (QoS) Class Identifier (QCI). For Guaranteed Bit Rate (GBR) and Non-GBR services, the proposed algorithm uses the user priority metric taking into account not only the uplink buffer status, but also the different characteristics of packet loss mechanism and energy efficiency, to select users in scheduling. To demonstrate the advantage of the proposed scheme, simulations are carried out in various size of cells like Femto cell, Pico cell, Micro cell and others and the study results are compared for the effectiveness of proposed methods. Simulation results show that the proposed algorithm enhances EE, as well as, QoS provision for different types of services.
引用
收藏
页码:175 / 191
页数:16
相关论文
共 44 条
[1]  
Verma D(2017)QoS and energy efficient resource allocation in uplink SC-FDMA systems: A review IJEDR 5 46-48
[2]  
Gupta A(2017)Energy-efficient resource allocation for adaptive modulated MIMO–OFDM heterogeneous cloud radio access networks Wireless Personal Communications 95 4847-4866
[3]  
Ataee M(2016)EE optimization: joint antenna-subcarrier-power allocation in OFDM-DASs IEEE Transactions on Wireless Communications 15 7470-7483
[4]  
Mohammadi A(2015)Energy-efficient resource allocation for device-to-device underlay communication IEEE Transactions on Wireless Communications 14 2082-2092
[5]  
Li X(2015)Energy-efficient scheduling and power allocation in downlink OFDMA networks with base station coordination IEEE Transactions on Wireless Communications 14 1-14
[6]  
Ge X(2015)Energy-efficient scheduling and resource allocation in uplink OFDMA systems IEEE Communications Letters 19 439-442
[7]  
Wang X(2016)Energy-efficient resource allocation for LTE-A networks IEEE Communications Letters 20 1429-1432
[8]  
Cheng J(2014)Novel energy efficient packet-scheduling algorithm for CoMP Computer Communications 50 53-63
[9]  
Victor CM(2014)Multi-agent deep reinforcement learning-based energy efficient power allocation in downlink MIMO-NOMA systems IET Communications 105 684-694
[10]  
Wang F(2020)Energy-aware resource management for uplink non-orthogonal multiple access: Multi-agent deep reinforcement learning Future Generation Computer Systems 19 439-442