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Machine Intelligence in Supervising Bandwidth Allocation for Low-latency Communications

机译:监测低延迟通信带宽分配的机器智能

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This paper presents the exploitation of an artificial neural network (ANN) to facilitate insights into existing bandwidth allocation schemes in optical access networks and supervise bandwidth allocation decisions that reduce the latency. Specifically, based on the classic and predictive dynamic bandwidth allocation (DBA) schemes, we train a multi-layered ANN at the central office (CO) to learn the uplink latency corresponding to varying bandwidth allocation decisions. Multiple network feature knowledge, such as network load, traffic/packet statistics, fiber link distances and the number of optical network units (ONUs), is for the first time considered and utilized in the training process. Then, with the dependency between bandwidth allocation and the resultant latency learned by the ANN, we numerically analyze the latency performance of existing DBA schemes and show the optimal bandwidth decisions supervised by the ANN in achieving low latency. With extensive simulations, we show that exploiting the ANN to supervise bandwidth allocation at the CO, termed as ANN-DBA scheme, effective improvement in latency performance is realized.
机译:本文介绍了人工神经网络(ANN)的开发,以促进光学接入网络中的现有带宽分配方案的见解,并监督减少延迟的带宽分配决策。具体地,基于经典和预测动态带宽分配(DBA)方案,我们在中央局(CO)处训练一个多层ANN,以学习对应于不同的带宽分配决策的上行链路延迟。多个网络功能知识,例如网络负载,流量/分组统计,光纤链路距离和光网络单元数量(ONU),是第一次考虑和在训练过程中使用。然后,随着ANN学习的带宽分配和结果延迟之间的依赖性,我们在数值上分析了现有DBA方案的延迟性能,并显示了在实现低延迟方面监督的最佳带宽决策。随着广泛的模拟,我们表明,利用该公司监督CO的带宽分配,称为Ann-DBA方案,实现了延迟性能的有效改进。

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