5G heterogeneous network (HetNets): a self-optimization technique for vertical handover management

K. Kiran, D. RajeswaraRao
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引用次数: 3

Abstract

Purpose Vertical handover has been grown rapidly due to the mobility model improvements. These improvements are limited to certain circumstances and do not provide the support in the generic mobility, but offering vertical handover management in HetNets is very crucial and challenging. Therefore, this paper presents a vertical handoff management method using the effective network identification method. Design/methodology/approach This paper presents a vertical handoff management method using the effective network identification method. The handover triggering schemes are initially modeled to find the suitable position for starting handover using computed coverage area of the WLAN access point or cellular base station. Consequently, inappropriate networks are removed to determine the optimal network for performing the handover process. Accordingly, the network identification approach is introduced based on an adaptive particle-based Sailfish optimizer (APBSO). The APBSO is newly designed by incorporating self-adaptive particle swarm optimization (APSO) in Sailfish optimizer (SFO) and hence, modifying the update rule of the APBSO algorithm based on the location of the solutions in the past iterations. Also, the proposed APBSO is utilized for training deep-stacked autoencoder to choose the optimal weights. Several parameters, like end to end (E2E) delay, jitter, signal-to-interference-plus-noise ratio (SINR), packet loss, handover probability (HOP) are considered to find the best network. Findings The developed APBSO-based deep stacked autoencoder outperformed than other methods with a minimal delay of 11.37 ms, minimal HOP of 0.312, maximal stay time of 7.793 s and maximal throughput of 12.726 Mbps, respectively. Originality/value The network identification approach is introduced based on an APBSO. The APBSO is newly designed by incorporating self-APSO in SFO and hence, modifying the update rule of the APBSO algorithm based on the location of the solutions in the past iterations. Also, the proposed APBSO is used for training deep-stacked autoencoder to choose the optimal weights. Several parameters, like E2E delay, jitter, SINR, packet loss and HOP are considered to find the best network. The developed APBSO-based deep stacked autoencoder outperformed than other methods with minimal delay minimal HOP, maximal stay time and maximal throughput.
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5G异构网络(HetNets):垂直切换管理的自优化技术
目的:由于移动性模式的改进,纵向移交迅速发展。这些改进仅限于某些情况,并且不提供通用移动性的支持,但是在HetNets中提供垂直切换管理是非常关键和具有挑战性的。因此,本文提出了一种利用有效网络识别方法的垂直切换管理方法。设计/方法/途径本文提出了一种利用有效的网络识别方法的垂直切换管理方法。首先对切换触发方案进行建模,利用计算得到的无线局域网接入点或蜂窝基站的覆盖面积找到合适的开始切换的位置。因此,去除不合适的网络,以确定执行切换过程的最佳网络。在此基础上,提出了一种基于自适应粒子的Sailfish优化器(APBSO)的网络识别方法。将自适应粒子群算法(APSO)引入Sailfish优化器(SFO)中,根据以往迭代中解的位置修改APBSO算法的更新规则,从而设计出新的APBSO算法。并将该算法用于深度堆叠自编码器的训练,以选择最优权值。考虑了端到端(E2E)延迟、抖动、信噪比(SINR)、丢包率、切换概率(HOP)等参数来寻找最佳网络。结果基于apbso的深度堆叠自编码器的最小时延为11.37 ms,最小HOP为0.312,最大停留时间为7.793 s,最大吞吐量为12.726 Mbps。提出了一种基于APBSO的网络识别方法。新设计的APBSO通过在SFO中加入自apso,从而修改了基于以往迭代中解的位置的APBSO算法的更新规则。并将该算法用于深度堆叠自编码器的训练,以选择最优权值。考虑了端到端延迟、抖动、SINR、丢包和HOP等几个参数来寻找最佳网络。所开发的基于apbso的深度堆叠自编码器具有最小延迟、最小跳数、最大停留时间和最大吞吐量等优点。
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