Machine Learning For Broad-Sensed Internet Congestion Control And Avoidance: A Comprehensive Survey

Huifen Huang,Xiaomin Zhu, Jiedong Bi, Wenpeng Cao,Xinchang Zhang

IEEE ACCESS(2021)

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摘要
It is challenging to deal with the Internet congestion problem because of several factors such as ever-growing traffic and distributed network architecture. The congestion problem can be solved or alleviated by various methods, including rate control, bandwidth-guarantee routing and bandwidth reservation. We use the term broad-sensed Internet congestion control and avoidance (BICC&A) to generally denote all of the above methods. Most BICC&A solutions depend on or benefit from the knowledge of network conditions, including traffic status (type and volume), available bandwidth and topology. In this paper, we present a comprehensive survey of the applications of machine learning to network condition acquirement methods for BICC&A and specific BICC&A methods. First, we provide an overview of the background knowledge of BICC&A and machine learning. Then, we provide detailed reviews on the applications of machine learning techniques to network condition acquirement methods for BICC&A and to specific BICC&A methods. Finally, we outline important research opportunities.
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关键词
Bandwidth, Internet, Routing, Topology, Wide area networks, Unified modeling language, Recurrent neural networks, Machine learning, congestion control, congestion avoidance, traffic classification, traffic prediction, bandwidth, topology, rate control, routing
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