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QoS provisioning dynamic connection-admission control for multimedia wireless networks using a Hopfield neural network

机译:使用Hopfield神经网络的多媒体无线网络QoS设置动态连接允许控制

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This paper presents a quality-of-service (QoS) provisioning dynamic connection-admission control (CAC) algorithm for multimedia wireless networks. A multimedia connection consists of several substreams (i.e., service classes), each of which presets a range of feasible QoS levels (e.g., data rates). The proposed algorithm is mainly devoted to finding the best possible QoS levels for all the connections (i.e., QoS vector) that maximize resource utilization by fairly distributing wireless resources among the connections while maximizing the statistical multiplexing gain (i.e., minimizing the blocking and dropping probabilities). In the case of congestion (overload), the algorithm uniformly degrades the QoS levels of the existing connections (but only slightly) in order to spare some resources for serving new or handoff connections, thereby naturally minimizing the blocking and dropping probabilities (it amounts to maximizing the statistical multiplexing gain). The algorithm employs a Hopfield neural network (HNN) for finding a QoS vector. The problem itself is formulated as a multi-objective optimization problem. Hardware-based HNN exhibits high (computational) speed that permits real time running of the CAC algorithm. Simulation results show that the algorithm can maximize resource utilization and maintain fairness in resource sharing, while maximizing the statistical multiplexing gain in providing acceptable service grades. Furthermore, the results are relatively insensitive to handoff rates.
机译:本文提出了一种用于多媒体无线网络的服务质量(QoS)供应动态连接许可控制(CAC)算法。多媒体连接由几个子流(即服务类别)组成,每个子流预设了一系列可行的QoS级别(例如,数据速率)。提出的算法主要致力于找到所有连接的最佳可能QoS级别(即QoS向量),通过在连接之间公平地分配无线资源同时最大化统计复用增益(即,最小化阻塞和丢弃概率)来最大化资源利用率。 )。在拥塞(过载)的情况下,该算法会统一降低现有连接的QoS级别(但仅会稍微降低),以便为服务新的或切换的连接保留一些资源,从而自然地最小化阻塞和掉落的概率(等于最大化统计复用增益)。该算法采用Hopfield神经网络(HNN)查找QoS向量。该问题本身被公式化为多目标优化问题。基于硬件的HNN具有很高的(计算)速度,可以实时运行CAC算法。仿真结果表明,该算法在提供可接受的服务等级时,可以最大程度地利用资源并保持资源共享的公平性,同时又可以最大化统计复用增益。此外,结果对切换速率相对不敏感。

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