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首页> 外文期刊>Journal of Parallel and Distributed Computing >Learning-TCP: A stochastic approach for efficient update in TCP congestion window in ad hoc wireless networks
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Learning-TCP: A stochastic approach for efficient update in TCP congestion window in ad hoc wireless networks

机译:学习TCP:一种随机方法,用于在ad hoc无线网络中的TCP拥塞窗口中进行有效更新

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In this work, we attempt to improve the performance of TCP over ad hoc wireless networks (AWNs) by using a learning technique from the theory of learning automata. It is well-known that the use of TCP in its present form, for reliable transport over AWNs leads to unnecessary packet losses, thus limiting the achievable throughput. This is mainly due to the aggressive, reactive, and deterministic nature in updating its congestion window. As the AWNs are highly bandwidth constrained, the behavior of TCP leads to high contentions among the packets of the flow, thus causing a high amount of packet loss. This further leads to high power consumption at mobile nodes as the lost packets are recovered via several retransmissions at both TCP and MAC layers. Hence, our proposal, here after called as Learning-TCP, focuses on updating the congestion window in an efficient manner (conservative, proactive, and finer and flexible update in the congestion window) in order to reduce the contentions and congestion, thus improving the performance of TCP in AWNs. The key advantage of Learning-TCP is that, without relying on any network feedback such as explicit congestion and link-failure notifications, it adapts to the changing network conditions and appropriately updates the congestion window by observing the inter-arrival times of TCP acknowledgments. We implemented Learning-TCP in ns-2.28 and Linux kernel 2.6 as well, and evaluated its performance for a wide range of network conditions. In all the studies, we observed that Learning-TCP outperforms TCP-Newreno by showing significant improvement in the goodput and reduction in the packet loss while maintaining higher fairness to the competing flows.
机译:在这项工作中,我们尝试通过使用学习自动机理论的学习技术来提高ad hoc无线网络(AWN)上TCP的性能。众所周知,以当前形式使用TCP进行AWN上的可靠传输会导致不必要的数据包丢失,从而限制了可达到的吞吐量。这主要是由于更新其拥塞窗口时具有侵略性,反应性和确定性性质。由于AWN受高度带宽限制,因此TCP的行为会导致流的数据包之间出现较高的争用,从而导致大量的数据包丢失。由于通过TCP和MAC层的多次重传恢复丢失的数据包,这进一步导致了移动节点的高功耗。因此,我们的提案(以下简称为Learning-TCP)专注于以有效方式(拥塞窗口中的保守,主动,精细和灵活的更新)更新拥塞窗口,以减少争用和拥塞,从而改善TCP在AWN中的性能。 Learning-TCP的主要优点在于,它无需依赖任何网络反馈(例如显式拥塞和链接故障通知),即可适应不断变化的网络状况,并通过观察TCP确认的到达间隔时间来适当地更新拥塞窗口。我们也在ns-2.28和Linux内核2.6中实现了Learning-TCP,并在各种网络条件下评估了其性能。在所有研究中,我们观察到Learning-TCP比TCP-Newreno表现更好,因为它显示了吞吐量的显着提高和数据包丢失的减少,同时保持了对竞争流的更高公平性。

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