From Simulation to Deep Learning: Survey on Network Performance Modeling Approaches
AI 摘要
综述了有线网络性能建模方法,从传统仿真到深度学习,并提出了分类方法。
主要贡献
- 全面综述了有线网络性能建模方法
- 定义了网络性能建模方法的分类体系
- 讨论了不同模型评估方法及其复杂性
方法论
通过文献调研,梳理网络性能建模领域的方法演变,并从技术和研究关注点角度进行分类。
原文摘要
Network performance modeling is a field that predates early computer networks and the beginning of the Internet. It aims to predict the traffic performance of packet flows in a given network. Its applications range from network planning and troubleshooting to feeding information to network controllers for configuration optimization. Traditional network performance modeling has relied heavily on Discrete Event Simulation (DES) and analytical methods grounded in mathematical theories such as Queuing Theory and Network Calculus. However, as of late, we have observed a paradigm shift, with attempts to obtain efficient Parallel DES, the surge of Machine Learning models, and their integration with other methodologies in hybrid approaches. This has resulted in a great variety of modeling approaches, each with its strengths and often tailored to specific scenarios or requirements. In this paper, we comprehensively survey the relevant network performance modeling approaches for wired networks over the last decades. With this understanding, we also define a taxonomy of approaches, summarizing our understanding of the state-of-the-art and how both technology and the concerns of the research community evolve over time. Finally, we also consider how these models are evaluated, how their different nature results in different evaluation requirements and goals, and how this may complicate their comparison.