基于机器学习的Wi-Fi网络PQoS预测研究

Maghsoud Morshedi, Josef Noll
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引用次数: 3

摘要

Wi-Fi网络作为家庭和建筑物互联网接入的最后一跳,部署大幅增加。Wi-Fi作为一种尽最大努力的网络并不能满足用户对运营商级质量的期望,而如今,用户认为互联网服务提供商应对Wi-Fi质量下降负责。因此,感知服务质量(PQoS)和体验质量(QoE)的概念被广泛用作用户满意度的质量指标。本文回顾了最新的文献,以研究用于估计Wi-Fi网络中PQoS的机器学习技术。在本文中,只有那些试图根据Wi-Fi网络的网络性能参数来估计QoE的文献被调查,并根据它们的问题领域和机器学习技术进行了分类。该评论指出了使用机器学习技术识别无线问题并相应地提高质量的有希望的成就。然而,PQoS的估计需要进一步研究最近IEEE 802.11技术的进步和机器学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on Prediction of PQoS Using Machine Learning on Wi-Fi Networks
Deployment of Wi-Fi networks increases considerably as a last hop for Internet access in homes and buildings. Wi-Fi as a best-effort network cannot satisfy user expectations for carrier-grade quality and today, users consider Internet service providers responsible for Wi-Fi quality degradation. Thus, notion of perceived quality of service (PQoS) and quality of experience (QoE) have been extensively used as quality indicators of user satisfaction. This paper provides a review of state-of-the-art literature to investigate machine learning techniques for estimating PQoS in Wi-Fi networks. In this paper, only literature that attempted to estimate QoE based on network performance parameters on Wi-Fi networks have been investigated and categorized based on their problem area and machine learning techniques. The review indicated promising achievements using machine learning techniques to identify wireless problems and accordingly improve the quality. However, estimation of PQoS requires further research with recent IEEE 802.11 technology advancements and machine learning approaches.
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