基于机器学习的5G移动通信系统中异构网络系统性能的改进

Y. Kim, Dae-Young Lee, Sanghyun Bae, T. Kim
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引用次数: 1

摘要

随着第四代长期演进(4G-LTE)通信的出现和视频流服务的进步,移动流量显著增加,目前仍在以惊人的速度增长。第五代(5G)移动通信系统是为了应对移动流量的急剧增长而开发的,其目标是实现超高速数据传输、低延迟,以及与4G-LTE系统相比,能够容纳更多的连接设备。5G通信使用高频带宽来实现这些功能,这就不可避免地导致了高路径损耗的缺点。为了克服这一缺点,小型蜂窝技术被开发出来,它被定义为可以扩展网络覆盖范围并解决阴影区域问题的小型,低功耗基站。尽管小蜂窝技术具有这些优势,但是由于大量部署小蜂窝而产生的干扰影响以及接入网络设备的差异等不同的问题需要解决。为此,有必要为服务方法开发一种算法。然而,一般算法难以应对移动通信系统的多样化环境,例如某些区域的流量突然增加或移动人口的突然变化,机器学习技术被应用于解决这一问题。本研究采用机器学习算法来确定小细胞连接。此外,还比较了5G宏观系统、小蜂窝的应用、机器学习算法的应用,以确定机器学习算法中的性能提升。利用支持向量机(SVM)、逻辑回归和决策树算法,给出了一种基于基本训练数据和小细胞开关法的训练方法,并验证了该方法的性能增强效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Performance of Heterogeneous Network Systems in Machine Learning-based 5G Mobile Communication System
Mobile traffic, which has increased significantly with the emergence of Fourth generation longterm evolution (4G-LTE) communications and advances in video streaming services, is still currently increasing at an incredible pace. Fifth-generation (5G) mobile communication systems, which were developed to deal with such a drastic increase in mobile traffic, aim to achieve ultra-high-speed data transmission, low latency, and the accommodation of many more connected devices compared to 4G-LTE systems. 5G communication uses high-frequency bandwidth to implement these features, which leads to an inevitable drawback of a high path loss. In order to overcome this disadvantage, small cell technology was developed, and is defined as small, low-power base stations that can extend the network coverage and solve the shadow area problem. Although small cell technology has these advantages, different problems, such as the effects of interference due to the deployment of a large number of small cells and the differences in devices accessing the network, need to be solved. To do so, it is necessary to develop an algorithm for a service method. However, general algorithms have difficulties in responding to the diverse environment of mobile communication systems, such as sudden increase in traffic in certain areas or sudden changes in the mobile population, and machine learning technology has been applied to solve this problem. This study employs a machine learning algorithm to determine small cell connections. In addition, a 5G macro system, the application of small cells, and the application of machine learning algorithms are compared to determine the performance improvement in the machine learning algorithm. Moreover, Support Vector Machine (SVM), Logistic Regression and Decision Tree algorithm are employed to show a training method that uses basic training data and a small cell on-off method, and the performance enhancement is verified based on this method.
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