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Nonlinear Model Predictive Congestion Control Based on LSTM for Active Queue Management in TCP Network

机译:基于LSTM的非线性模型预测拥塞控制在TCP网络中的主动队列管理

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In spite of the rapid development of computer network, congestion control becomes an increasingly important problem due to an enormous increase of traffic. Active queue management (AQM) is an effective congestion control approach in the sense that it can be reduced by discarding packets in the buffer of the routers before congestion occurs. In this paper, for the predictive congestion control, long short-term memory (LSTM) that is well known as the most popular recurrent neural network is applied to compensate for the delay for TCP network. Taking into account of the identification of TCP dynamic system, it is shown that the impact of network latency can be reduced and the proposed control scheme stabilizes the router queue length better than other well-known AQM algorithms.
机译:尽管计算机网络的快速发展,由于交通巨大增加,拥堵控制成为越来越重要的问题。主动队列管理(AQM)是一种有效的拥塞控制方法,即可以通过在发生拥塞之前丢弃路由器的缓冲区中的数据包来减少它。在本文中,对于预测性充血控制,应用众所周知的最受欢迎的复发性神经网络的长短期存储器(LSTM)来补偿TCP网络的延迟。考虑到TCP动态系统的识别,结果表明,可以减少网络延迟的影响,并且所提出的控制方案比其他众所周知的AQM算法更好地稳定路由器队列长度。

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