Nowadays mobile communication is growing fast in the 5G communication industry. With the increasing capacity requirements and requirements for quality of experience, mobility prediction has been widely applied to mobile communication and has becoming one of the key enablers that utilizes historical traffic information to predict future locations of traffic users, Since accurate mobility prediction can help enable efficient radio resource management, assist route planning, guide vehicle dispatching, or mitigate traffic congestion. However, mobility prediction is a challenging problem due to the complicated traffic network. In the past few years, plenty of researches have been done in this area, including Non-Machine-Learning (Non-ML)- based and Machine-Learning (ML)-based mobility prediction. In this paper, firstly we introduce the state of the art technologies for mobility prediction. Then, we selected Support Vector Machine (SVM) algorithm, the ML algorithm for practical traffic date training. Lastly, we analyse the simulation results for mobility prediction and introduce a future work plan where mobility prediction will be applied for improving mobile communication.
翻译:目前,5G通信行业的移动通信正在迅速增长。随着能力要求和经验质量要求的不断提高,流动预测被广泛应用于移动通信,并已成为利用历史交通信息预测交通用户未来地点的关键促进因素之一。由于准确的流动预测可以帮助高效的无线电资源管理、协助路线规划、引导车辆调度或缓解交通堵塞。然而,流动预测由于交通网络复杂而是一个具有挑战性的问题。在过去几年里,在这一领域进行了大量研究,包括基于非地中海-学习(非马列)和基于机器-学习(马列)的流动预测。在本文中,我们首先介绍了流动预测的先进技术。然后,我们选择了支持病媒机算法,即实际交通日期培训的ML算法。最后,我们分析了流动预测的模拟结果,并提出了未来工作计划,将使用流动预测来改进移动通信。