首页> 外文会议>2012 3rd IEEE International Conference on Network Infrastructure and Digital Content. >KALMAN FILTER BASED BANDWIDTH ESTIMATION AND PREDICTIVE FLOW DISTRIBUTION FOR CONCURRENT MULTIPATH TRANSFER IN WIRELESS NETWORKS
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KALMAN FILTER BASED BANDWIDTH ESTIMATION AND PREDICTIVE FLOW DISTRIBUTION FOR CONCURRENT MULTIPATH TRANSFER IN WIRELESS NETWORKS

机译:无线网络中同时多径传输的基于卡尔曼滤波的带宽估计和预测流量分布

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摘要

More and more terminals come equipped with multiple network interfaces,usually connected to different wireless networks.Connected multiple wireless networks have varying link characteristics.Because of unreliable wireless links,we need an efficient bandwidth estimation to describe link characteristics.The Kaiman filter is an efficient recursive method,which not only estimates and corrects the current system states but also predicts even the future states based on the latest state.In this paper,we use the Kalman filter to estimate available bandwidth in wireless networks with different loss rates.The predictive arrival time is calculated for each packet before it is transferred.Based on this,we proposed a predictive flow distribution algorithm for concurrent multipath transfer in wireless networks.The simulation results show that our predictive flow distribution algorithm improves congestion window growth pattern by reducing the out-of-order packets.As a result,the total throughput increases under different random wireless link loss conditions.
机译:越来越多的终端配备有多个网络接口,通常连接到不同的无线网络。连接的多个无线网络具有不同的链路特性。由于无线链路不可靠,我们需要一种有效的带宽估计来描述链路特性。Kaiman滤波器是一种有效的方法。递归方法,它不仅可以估计和校正当前系统状态,还可以基于最新状态预测甚至将来的状态。在本文中,我们使用卡尔曼滤波器来估计具有不同丢失率的无线网络中的可用带宽。在此基础上,我们为无线网络中的并发多路径传输提供了一种预测流分配算法。基于仿真结果表明,我们的预测流分配算法通过减少输出流的数量来改善拥塞窗口的增长方式。有序数据包。因此,总吞吐量增加了在不同的随机无线链路丢失条件下缓解。

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