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Reinforcement learning-based dynamic bandwidth provisioning for quality of service in differentiated services networks

机译:基于增强学习的动态带宽配置,用于差异化服务网络中的服务质量

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摘要

The issue of bandwidth provisioning for Per Hop Behavior (PHB) aggregates in Differentiated Services (DiffServ) networks is imperative for differentiated QoS to be achieved. This paper proposes an adaptive provisioning scheme that determines at regular intervals the amount of bandwidth to provision for each PHB aggregate, based on traffic conditions and feedback received about the extent to which QoS is being met. The scheme adjusts parameters to minimize a penalty function that is based on the QoS requirements agreed upon in the service level agreement (SLA). The novel use of a continuous-space, gradient-descent reinforcement learning algorithm enables the scheme to work effectively without accurate traffic characterization or any assumption about the network model. Using ns-2 simulations, we show that the algorithm is able to converge to a policy that provisions bandwidth such that QoS requirements are satisfied.
机译:区分服务(DiffServ)网络中针对每跳行为(PHB)聚合的带宽供应问题对于实现区分QoS是必不可少的。本文提出了一种自适应配置方案,该方案基于流量条件和接收到的有关满足QoS程度的反馈,以规则的间隔确定为每个PHB聚合配置的带宽量。该方案根据服务水平协议(SLA)中约定的QoS要求调整参数以最小化惩罚函数。连续空间,梯度下降强化学习算法的新颖使用使该方案可以有效地工作,而无需进行准确的流量表征或对网络模型的任何假设。使用ns-2仿真,我们表明该算法能够收敛到预配置带宽的策略,从而满足QoS要求。

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