Joint delay and energy aware dragonfly optimization‐based uplink resource allocation scheme for LTE‐A networks in a cross‐layer environment

Leeban Moses, Perarasi T. Sambantham, Muhammad Faheem, Shoukath Ali K, A. Khan
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Abstract

The exponential growth in data traffic from smart devices has led to a need for highly capable wireless networks with faster data transmission rates and improved spectral efficiency. Allocating resources efficiently in a 5G communication system with a huge number of machine type communication (MTC) devices is essential to ensure optimal performance and meet the diverse requirements of different applications. The LTE‐A network offers high‐speed mobile data services and caters to MTC devices and has relatively low data service requirements compared to human‐to‐human (H2H) communications. LTE‐A networks require advanced scheduling schemes to manage the limited spectrum and ensure efficient transmissions. This necessitates effective resource allocation schemes to minimize interference between cells in future networks. To address this issue, a joint delay and energy aware Levy flight Brownian movement‐based dragonfly optimization (DELFBDO)‐based uplink resource allocation scheme for LTE‐A Networks is proposed in this work to optimize energy efficiency, maximize the throughput and reduce the latency. The DELFDO algorithm efficiently organizes packets in both time and frequency domains for H2H and MTC devices, resulting in improved quality of service while minimizing energy consumption. The Simulation results demonstrate that the proposed method increases the energy efficiency by producing the appropriate channel and power assignment for UEs and MTC devices.
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跨层环境下基于蜻蜓优化的 LTE-A 网络联合延迟和能量感知上行链路资源分配方案
来自智能设备的数据流量呈指数级增长,这就需要具有更快数据传输速率和更高频谱效率的高性能无线网络。在拥有大量机器型通信(MTC)设备的 5G 通信系统中,有效分配资源对于确保最佳性能和满足不同应用的各种要求至关重要。LTE-A 网络提供高速移动数据服务,满足 MTC 设备的需求,与人对人(H2H)通信相比,其数据服务要求相对较低。LTE-A 网络需要先进的调度方案来管理有限的频谱并确保高效传输。这就需要有效的资源分配方案,以尽量减少未来网络中小区之间的干扰。为解决这一问题,本研究提出了一种基于蜻蜓优化(DELFBDO)的 LTE-A 网络上行链路资源分配方案,以优化能效、最大化吞吐量并减少延迟。DELFDO 算法在时域和频域上为 H2H 和 MTC 设备有效组织数据包,从而在提高服务质量的同时最大限度地降低能耗。仿真结果表明,所提出的方法为 UE 和 MTC 设备提供了适当的信道和功率分配,从而提高了能效。
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