Delay prediction in IoT using Machine Learning Approach

A. Abdellah, O. A. Mahmood, A. Koucheryavy
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引用次数: 9

Abstract

The combination of 5G, artificial intelligence, and the Internet of Things will have a great impact on future generations of wireless networks. Internet of Things (IoT) is expected to have important traffic exchange in future wireless networks. It is a generic term for technologies that allow devices to communicate with each other. These are wired and wireless sensing systems that send information from one device to another. The network traffic prediction problem includes the prediction of future network traffic characteristics from observations of past traffic. Network traffic forecasting has many applications including network monitoring, resource management, and fault detection. Machine learning (ML) has been successfully applied to traffic prediction. ML technologies have proven capable of capturing nonlinear patterns in data, making them a good candidate for traffic prediction. In this paper, we perform the delay prediction in IoT communication using a multistep ahead prediction (MSP) and single-step ahead prediction (SSP) with Time Series NARX Recurrent Neural Networks. The prediction accuracy has been evaluated using three neural network training algorithms: Trainlm, Traincgf, Trainrp, with MSE as performance function in terms of using root mean square error (RMSE) and mean absolute percentage error (MAPE) as prediction accuracy measure.
使用机器学习方法的物联网延迟预测
5G、人工智能和物联网的结合将对未来几代无线网络产生巨大影响。物联网(IoT)有望在未来无线网络中发挥重要的流量交换作用。它是允许设备相互通信的技术的通称。这些是有线和无线传感系统,可以将信息从一个设备发送到另一个设备。网络流量预测问题包括通过对过去流量的观察来预测未来网络流量的特征。网络流量预测在网络监控、资源管理、故障检测等方面有着广泛的应用。机器学习(ML)已成功应用于交通预测。ML技术已被证明能够捕获数据中的非线性模式,使其成为流量预测的良好候选。在本文中,我们使用多步提前预测(MSP)和单步提前预测(SSP)与时间序列NARX递归神经网络在物联网通信中进行延迟预测。采用Trainlm、Traincgf、Trainrp三种神经网络训练算法,以均方根误差(RMSE)和平均绝对百分比误差(MAPE)作为预测精度度量,以MSE为性能函数,对预测精度进行了评价。
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