Quality of Service Measurement and Prediction through AI Technology

Yung-Chang Lai, C. Kao, Jhih-Dao Jhan, Fei-Hua Kuo, C. Chang, Tai-Chueh Shih
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引用次数: 3

Abstract

With the development of Information Technology (IT) and Software-Defined Networking (SDN), Communications Service Providers (CSPs) can collect much information from telecommunication circuits. However, some of the existing circuit measurement has not been used well. For CSPs, it is important to find more efficient ways of utilizing the circuit measurement, e.g., delay, jitter, packet loss, and speed-test results for customer satisfaction. One of the most popular ways is to use speed-test tools (such as Speedtest online) to measure the service rate of the application layer. However, it is difficult to justify whether the telecommunication circuit is normal or not. For example, when the speed-test result of a specific circuit is 90 Mbps, the physical line rate may be 100Mbps. To address the above issues, we first investigate the measurement and management mechanisms of the existing telecommunications networks, including the core components and protocols. In this paper, we leverage artificial intelligence (AI) technologies to predict whether customers complain or not. We evaluate the proposed AI model by using the real data from telecommunication circuits and analyze the key performance metrics.
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基于人工智能技术的服务质量测量与预测
随着信息技术(IT)和软件定义网络(SDN)的发展,通信服务提供商(csp)可以从通信电路中收集到大量的信息。但是,现有的一些电路测量方法并没有得到很好的应用。对于csp来说,重要的是找到更有效的方法来利用电路测量,例如延迟、抖动、数据包丢失和客户满意度的速度测试结果。最流行的方法之一是使用速度测试工具(如Speedtest online)来测量应用层的服务速率。然而,很难判断电信电路是否正常。例如,某个电路的速度测试结果为90mbps,则物理线路速率可能为100Mbps。为了解决上述问题,我们首先研究了现有电信网络的测量和管理机制,包括核心组件和协议。在本文中,我们利用人工智能(AI)技术来预测客户是否会投诉。我们通过使用来自电信电路的真实数据来评估所提出的人工智能模型,并分析关键性能指标。
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