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IoT Traffic Prediction with Neural Networks Learning Based on SDN Infrastructure

机译:基于SDN基础架构的神经网络学习的IoT流量预测

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In recent time, there are more achievements in technologies for 5G/MT-2020 networks the international research area have. Any way, one of the main important task in this area is the IoT traffic recognition and prediction. Currently, researchers face a new challenge to their experience, talents and desire to reach new heights in information and communication technologies. The new challenge is IMT-2030 networking technologies and services. In this case, the question with effective IoT traffic prediction methods is still relevant during transition to the next IMT-2030 network and services. IoT it is the ubiquitous conception, on which the new IMT-2030 services also based. For example, Tactile Internet, part of the solutions in digital avatars, and others. There more, these algorithms have to be more efficient and fastly in work with huge data capacity, which characterized the different services of Internet of Things. Recently, there are Machine Learning and Big Data algorithms are took this place of new algorithms for efficient and complex algorithms. In this paper, we implement IoT traffic prediction approaches using single step ahead and multi-step ahead prediction with NARX neural network. As a data we used the metadata of flows which were received through the northern interface. The prediction accuracy has been evaluated using three neural network traing algorithms: Traincgf, Traincgp, Trainlm, with MSE as performance function in term of using mean absolute percent of error (MAPE) as prediction accuracy measure IoT.
机译:近来,国际研究区的5G / MT-2020网络技术有更多的成就。任何方式,该领域的主要重要任务之一是物联网业务识别和预测。目前,研究人员对他们的经验,人才和渴望在信息和通信技术中达到了新的高度的新挑战。新挑战是IMT-2030网络技术和服务。在这种情况下,具有有效的物联网流量预测方法的问题在过渡到下一个IMT-2030网络和服务期间仍然相关。 IOT它是无处不在的概念,新的IMT-2030服务也在于此。例如,触觉互联网,数字化身和其他人的部分解决方案。还有更多的是,这些算法必须更高效,速度迅速地,具有巨大的数据容量,其特征在于互联网的不同服务。最近,有机器学习和大数据算法将这个新的算法占据了高效和复杂的算法。在本文中,我们使用单步前进和NARX神经网络的多步前预测来实现物联网交通预测方法。作为数据,我们使用通过北部接口接收的流的元数据。使用三个神经网络传教算法评估预测准确性:TrainCGF,TrainCGP,TrainLM,MSE作为性能函数,用于使用误差(MAPE)的平均绝对百分比作为预测精度测量IOT。

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