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An LP-based admission control using artificial neural networks for integrated services in mobile networks

机译:使用人工神经网络的基于LP的准入控制,用于移动网络中的集成服务

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In mobile networks the traffic fluctuation is unpredictable due to mobility and varying resource requirements of multimedia applications. Hence it is essential to maintain the traffic within the network capacity to provide the service guarantees to running applications. This paper proposes an Admission Control (AC) scheme in a single mobile cellular environment supporting real-time and non-real-time application traffic. In the case of a real-time and non-real-time multimedia applications, each application has its own distinct range of acceptable Quality of Service (QoS) requirements (e.g., packet loss, delay, jitter, etc.). The network provides the service by maintaining the application specified QoS range. We propose a Linear Programming Resource Reduction (LPRR) principle for admission control by maintaining QoS guarantees to existing applications and to increase the percentage of admission to real-time and non-real-time applications. Artificial Neural Networks (ANNs) are used to solve linear programming problem, which facilitates an on-line admission control decision in the practical systems. The simulation results demonstrate that the proposed AC scheme performs well in terms of admitted applications and maintains lower percentage of rejection to hand-off and new applications of different traffic classes. The suggested principle also shown that it is appropriate for the fair resource allocation with improved resource utilization.
机译:在移动网络中,由于移动性和多媒体应用程序对资源的需求变化,流量波动是不可预测的。因此,必须将流量保持在网络容量之内,以便为正在运行的应用程序提供服务保证。本文提出了一种在单个移动蜂窝环境中支持实时和非实时应用流量的准入控制(AC)方案。在实时和非实时多媒体应用程序中,每个应用程序都有其自己不同的可接受服务质量(QoS)要求范围(例如,数据包丢失,延迟,抖动等)。网络通过维持应用程序指定的QoS范围来提供服务。我们提出了一种线性规划资源减少(LPRR)原则,通过维持对现有应用程序的QoS保证并增加对实时和非实时应用程序的许可百分比来进行许可控制。人工神经网络(ANN)用于解决线性规划问题,这有助于实际系统中的在线准入控制决策。仿真结果表明,所提出的AC方案在被接纳的应用方面表现良好,并且对越区切换和不同业务等级的新应用的拒绝率保持较低。建议的原则还表明,此方法适用于公平资源分配并提高了资源利用率。

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