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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Finding the biased-shortest path with minimal congestion in networks via linear-prediction of queue length
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Finding the biased-shortest path with minimal congestion in networks via linear-prediction of queue length

机译:通过队列长度的线性预测找到网络中拥塞最少的有偏最短路径

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摘要

In this paper, we propose a biased-shortest path method with minimal congestion. In the method, we use linear-prediction to estimate the queue length of nodes, and propose a dynamic accepting probability function for nodes to decide whether accept or reject the incoming packets. The dynamic accepting probability function is based on the idea of homogeneous network flow and is developed to enable nodes to coordinate their queue length to avoid congestion. A path strategy incorporated with the linear-prediction of the queue length and the dynamic accepting probability function of nodes is designed to allow packets to be automatically delivered on un-congested paths with short traveling time. Our method has the advantage of low computation cost because the optimal paths are dynamically self-organized by nodes in the delivering process of packets with local traffic information. We compare our method with the existing methods such as the efficient path method (EPS) and the optimal path method (OPS) on the BA scale-free networks and a real example. The numerical computations show that our method performs best for low network load and has minimum run time due to its low computational cost and local routing scheme. (C) 2016 Published by Elsevier B.V.
机译:在本文中,我们提出了一种具有最小拥塞的有偏最短路径方法。在该方法中,我们使用线性预测来估计节点的队列长度,并为节点提出一个动态的接受概率函数,以决定是否接受或拒绝传入的数据包。动态接受概率函数基于同构网络流的思想,并被开发为使节点能够协调其队列长度以避免拥塞。结合了队列长度的线性预测和节点的动态接受概率函数的路径策略被设计为允许在短行程时间的未拥塞路径上自动传送数据包。我们的方法具有计算成本低的优点,因为在具有本地流量信息的分组的传递过程中,最佳路径是由节点动态自组织的。我们将我们的方法与BA无标度网络上的有效路径方法(EPS)和最佳路径方法(OPS)等现有方法进行了比较,并给出了一个实际示例。数值计算表明,由于其计算成本低和本地路由方案,我们的方法在低网络负载下性能最佳,运行时间最短。 (C)2016由Elsevier B.V.发布

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