Analysis and forecasting of modern telecommunication systems traffic based on artificial intelligence methods

Denis Valer'evich Kutuzov, Alexsey Viktorovich Osovsky, D. Starov, N. Maltseva, Kseniya Vladimirovna Perova
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Abstract

In recent years, artificial intelligence technologies have demonstrated significant success in solving the problem of traffic analysis and forecasting in various telecommunication systems. Forecasting allows the telecom operator to know about the future behavior of the network, take timely necessary measures to improve the quality of customer service, and decide on the need to install or upgrade equipment. Using data collected from IoT mobile devices as an example, this article provides an overview and analysis of various time series forecasting models describing the traffic behavior of telecommunication systems. Forecasting models such as the exponential smoothing method, linear regression, the autoregressive integrated moving average (ARIMA) method, the support vector machine regression method, the N-BEATS method, which uses fully connected layers of a neural network for forecasting a one-dimensional time series, are discussed; the features of some of them are briefly outlined. For a specific data array, data preparation operations are described: removing unused columns, replacing missing data on transaction durations with their median values, and describing the main statistical characteristics of the data array. A preliminary data analysis is presented, which consists of using smoothing methods: moving average and exponential smoothing. The process of training models and a comparative analysis of the quality of their training are described. For this data set, it was concluded that for the UDP protocol the ARIMA model has the best learning quality, for the TCP protocol - linear regression and the Theta model, for the HTTPS protocol – linear regression, ARIMA and N-BEATS.
基于人工智能方法的现代电信系统流量分析和预测
近年来,人工智能技术在解决各种电信系统中的流量分析和预测问题方面取得了巨大成功。通过预测,电信运营商可以了解网络的未来行为,及时采取必要措施提高客户服务质量,并决定是否需要安装或升级设备。本文以物联网移动设备收集的数据为例,概述并分析了描述电信系统流量行为的各种时间序列预测模型。本文讨论了指数平滑法、线性回归法、自回归综合移动平均法(ARIMA)、支持向量机回归法、N-BEATS 法等预测模型,其中 N-BEATS 法使用神经网络的全连接层预测一维时间序列,本文简要介绍了其中一些模型的特点。对于特定的数据阵列,介绍了数据准备操作:删除未使用的列,用中值替换交易持续时间的缺失数据,以及描述数据阵列的主要统计特征。介绍了初步的数据分析,包括使用平滑方法:移动平均法和指数平滑法。此外,还介绍了模型的训练过程及其训练质量的比较分析。对于该数据集,得出的结论是:对于 UDP 协议,ARIMA 模型具有最佳学习质量;对于 TCP 协议,线性回归和 Theta 模型;对于 HTTPS 协议,线性回归、ARIMA 和 N-BEATS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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