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Deep Learning with Long Short-Term Memory for IoT Traffic Prediction

机译:对于IOT交通预测的长短短期记忆,深入学习

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摘要

5G network is new wireless mobile communication technology beyond 4G networks. These days, many network applications have been emerged and have led to an enormous amount of network traffic. Numerous studies have been conducted for enhancing the prediction accuracy of network traffic applications. Network traffic management and monitoring require technology for traffic prediction without the need for network operators. It is expected that each of the 5G networks and the Internet of things technologies to spread widely in the next few years. On the practical level, 5G uses the Internet of Things (IoT) for working in high-traffic networks with multiple sensors sending their packets to a destination simultaneously, which is an advantage of IoT applications. 5G presents wide bandwidth, low delay, and extremely high data throughput. Predicting network traffic has a great influence on IoT networks which results in reliable communication. A fully functional 5G network will not occur without artificial intelligence (AI) that can learn and make decisions on its own. Deep learning has been successfully applied to traffic prediction where it promotes traffic predictions via powerful fair representation learning. In this paper, we perform the prediction of IoT traffic in time series using LSTM - deep learning. the prediction accuracy has been evaluated using the RMSE as a merit function and mean absolute percentage error (MAPE).
机译:5G网络是超过4G网络的新无线移动通信技术。这些天,已经出现了许多网络应用程序并导致了大量的网络流量。已经进行了许多研究,以提高网络流量应用的预测准确性。无需网络运营商,网络流量管理和监控需要技术进行交通预测。预计每次5克网络和物联网技术在未来几年内广泛传播。在实用水平上,5G使用物联网(物联网)在高流量网络中使用多个传感器,同时将其报文发送到目的地,这是IOT应用程序的优势。 5G呈宽带宽,延迟低,数据吞吐量极高。预测网络流量对IoT网络产生了很大影响,导致可靠的通信。在没有人工智能(AI)的情况下,不会出现一个全功能的5G网络,可以自行学习和做出决定。深入学习已成功应用于通过强大的公平代表学习促进交通预测的交通预测。在本文中,我们使用LSTM - 深度学习在时间序列中进行IoT流量的预测。使用RMSE作为优点函数进行评估预测准确性,并且平均绝对百分比误差(MAPE)。

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