A Review of Traffic Flow Prediction Models in 5G Using Machine Learning Techniques

K. Malik, Dr. Tilak Raj Rohilla, Dr. Sandeep Kumar
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Abstract

Abstract: Wireless technology has advanced significantly since its origin and is now an essential aspect of our daily life. The advancement of wireless communication from the first generation (1G) to the fifth generation (5G) of technology has been revolutionary. An extensive summary of the development of wireless communication from 1G to 5G has been given in this paper. Cellular networks are heading towards becoming more diverse, broadband, integrated, and intelligent networks with the introduction of 5G networks. The goals of 5G wireless technology are to provide more users with more consistent user experiences, ultralow latency, vast network capacity, faster multi-Gbps peak data speeds and increased reliability. While the resources needed for computation and communication are also growing with the maturity of 5G technology .At the same time, cellular traffic has increased dramatically due to the widespread use of smart devices. Cellular traffic prediction is a crucial component of the resource management system for cellular networks but it confronts many difficulties due to strict standards for accuracy and dependability. Among the most important issues is how to enhance the predictive performance of Mobile data traffic. This review describes the need of traffic forecasting in cellular network in 5G technology. A study of different models for network analysis and traffic prediction by different researchers is presented in this paper. The distinctiveness and guidelines of earlier research for traffic prediction in 5G are examined. To determine the distinctive qualities of each method used for traffic prediction in mobile network, a thorough analysis of the most popular techniques using Machine learning for predictive analysis are discussed.
使用机器学习技术的 5G 流量预测模型综述
摘要:无线技术自诞生以来取得了长足的进步,现已成为我们日常生活中不可或缺的一部分。从第一代(1G)到第五代(5G),无线通信技术的进步是革命性的。本文对无线通信从 1G 到 5G 的发展进行了广泛总结。随着 5G 网络的推出,蜂窝网络正朝着更加多样化、宽带化、集成化和智能化的方向发展。5G 无线技术的目标是为更多用户提供更一致的用户体验、超低延迟、巨大的网络容量、更快的数 Gbps 峰值数据速度和更高的可靠性。随着 5G 技术的成熟,计算和通信所需的资源也在不断增长。与此同时,由于智能设备的广泛使用,蜂窝流量也急剧增加。蜂窝流量预测是蜂窝网络资源管理系统的重要组成部分,但由于对准确性和可靠性有严格的标准,因此面临着许多困难。其中最重要的问题是如何提高移动数据流量的预测性能。本综述介绍了 5G 技术蜂窝网络中流量预测的需求。本文介绍了不同研究人员对网络分析和流量预测的不同模型的研究。本文研究了早期 5G 流量预测研究的独特性和指导原则。为了确定用于移动网络流量预测的每种方法的独特性,本文对使用机器学习进行预测分析的最流行技术进行了深入分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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