利用深度学习预测BTS站点的流量

Chilakala Jithendra Sagar, Hardik Gupta, Jitendra Kumar Singh Jadon, Neha Arora, Sachindra Kumar
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引用次数: 2

摘要

有效载荷和吞吐量是决定网络拥塞和性能的最基本参数。提前预测这些参数是LTE网络管理和规划的一种主动方法。ARIMA主要用于预测未来趋势,它是线性模型。然而,在本文中,我们提出了一种特殊的递归神经网络架构,主要是LSTM和GRU,因为这些网络能够记住更长的依赖关系,学习随机长度的长序列中的时间模式。这些网络通过过去的关键性能指标报告来预测负载和吞吐量趋势。在提议的工作KPI数据过去16天从诺基亚网络私人有限公司是为了研究目的而获得的。在提议的工作中,RNN架构在Nokia Networks的实时数据集上取得了最先进的结果,在预测有效载荷和吞吐量方面产生了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of traffic volume in BTS sites using deep learning
Payload and Throughput are the most essential parameters in determining the congestion as well as performance of the network. Predicting these parameters in advance is a proactive approach for LTE network management and planning. Mostly ARIMA which are linear models have been applied in predicting future trends. However in this paper we propose special kind of Recurrent neural Network architectures mainly, LSTM and GRU, as these networks are capable in remembering longer dependency, learning temporal patterns in a long sequence of random length. These networks are used for predicting the payload and throughput trend with the help of past Key performance indicator reports. In the proposed work KPI data of past 16 days from Nokia Networks Pvt Ltd is obtained for research purpose. In the proposed work, RNN architectures achieved state of the art results on live data set from Nokia Networks producing promising results in predicting payload and throughput.
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