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Traffic Control Scheme of ABR Service Using NLMS in ATM Network

机译:ATM网络中使用NLMS的ABR服务的流量控制方案

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摘要

ATM ABR service controls network traffic using feedback information on the network congestion situation in order to guarantee the demanded service qualities and the available cell rates. In this paper we apply the control method using queue length prediction to the formation of feedback information for more efficient ABR traffic control. If backward node receive the longer delayed feedback information on the impending congestion, the switch can be already congested from the uncontrolled arriving traffic and the fluctuation of queue length can be inefficiently high in the continuing time intervals. The feedback control method proposed in this paper predicts the queue length in the switch using the slope of queue length prediction function and queue length changes in time-series. The predicted congestion information is backward to the node. NLMS and neural network are used as the predictive control functions, and they are compared from performance on the queue length prediction. Simulation results show the efficiency of the proposed method compared to the feedback control method without the prediction. Therefore, we conclude that the efficient congestion and stability of the queue length controls are possible using the prediction scheme that can resolve the problems caused from the longer delays of the feedback information.
机译:ATM ABR服务使用有关网络拥塞情况的反馈信息来控制网络流量,以保证所需的服务质量和可用信元速率。在本文中,我们将使用队列长度预测的控制方法应用于反馈信息的形成,以实现更高效的ABR交通控制。如果后向节点接收到有关即将发生的拥塞的较长的延迟反馈信息,则交换机可能已经由于不受控制的到达流量而变得拥塞,并且队列长度的波动在连续的时间间隔中可能效率不高。本文提出的反馈控制方法利用队列长度预测函数的斜率和时间序列中队列长度的变化来预测交换机中的队列长度。预测的拥塞信息向后退到节点。 NLMS和神经网络被用作预测控制功能,并从队列长度预测的性能上对它们进行了比较。仿真结果表明,与没有预测的反馈控制方法相比,该方法的有效性。因此,我们得出结论,使用预测方案可以有效地解决队列长度控制的拥塞和稳定性问题,该方案可以解决由于反馈信息的较长延迟而导致的问题。

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