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首页> 外文期刊>International journal of reasoning-based intelligent systems >A neuron-based active queue management scheme for internet congestion control
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A neuron-based active queue management scheme for internet congestion control

机译:基于神经元的互联网拥塞控制主动队列管理方案

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摘要

To deal with nonlinear and complex problems of internet congestion control, an intelligent scheme is required, which can learn the traffic pattern of the network. In this paper, we design a robust AQM scheme called neuron-based AQM (N-AQM) to efficiently control the complex network congestion problem and achieve QoS. In N-AQM, a neural network is used to predict the future value of current queue length and estimate the differential queue length error and use it to define the packet drop probability. Our simulation result demonstrates that N-AQM is stable, robust and outperforms other AQM schemes. From the result section, it is observed that N-AQM is more efficient in stabilising the queue length around the target with faster settling time and incurs lower oscillation than others.
机译:为了处理互联网拥塞控制的非线性和复杂问题,需要一种智能方案,可以学习网络的流量模式。在本文中,我们设计了一种被称为神经元的AQM(N-AQM)的强大AQM方案,以有效地控制复杂的网络拥塞问题并实现QoS。在N-AQM中,神经网络用于预测当前队列长度的未来值并估计差分队列长度错误并使用它来定义分组丢失概率。我们的仿真结果表明,N-AQM是稳定的,稳健和胜过其他AQM方案。从结果部分开始,观察到N-AQM在稳定目标周围的队列长度方面更有效,并且比其他更快的稳定时间突出较低的振荡。

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