AI-based Traffic Forecasting in 5G network
2022 IEEE Canadian Conference on Electrical and Computer Engineering (CCECE)(2022)
摘要
Forecasting of the telecommunication traffic is the foundation for enabling intelligent management features as cellular technologies evolve toward fifth-generation (5G) technology. In this work, a deep-learning based analysis of a traffic dataset was conducted. For this purpose, several neural network-based models are utilized. The paper explores the forecasting performance of the fully connected sequential network (FCSN). Specifically, one-dimensional convolutional neural network (1D-CNN), single shot learning LSTM (SS-LSTM), and autoregressive LSTM (AR-LSTM) models have been evaluated. In addition, the baseline model was developed to assess the performance of the aforementioned models. The results reveal that FCSN and 1D-CNN have comparable performance. However, 1D-CNN is a smaller network with less number of parameters. One of the other benefits of the proposed 1D-CNN is having less complexity and faster execution time for predicting the next 24-hour traffic.
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关键词
5G traffic forecasting,Neural Network based models,big data
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