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首页> 外文期刊>IEEE Journal on Selected Areas in Communications >Distributed Utility Maximization for Network Coding Based Multicasting: A Shortest Path Approach
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Distributed Utility Maximization for Network Coding Based Multicasting: A Shortest Path Approach

机译:基于网络编码的组播的分布式效用最大化:最短路径方法

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摘要

One central issue in practically deploying network coding is the adaptive and economic allocation of network resource. We cast this as an optimization, where the net-utility—the difference between a utility derived from the attainable multicast throughput and the total cost of resource provisioning—is maximized. By employing the MAX of flows characterization of the admissible rate region for multicasting, this paper gives a novel reformulation of the optimization problem, which has a separable structure. The Lagrangian relaxation method is applied to decompose the problem into subproblems involving one destination each. Our specific formulation of the primal problem results in two key properties. First, the resulting subproblem after decomposition amounts to the problem of finding a shortest path from the source to each destination. Second, assuming the net-utility function is strictly concave, our proposed method enables a near-optimal primal variable to be uniquely recovered from a near-optimal dual variable. A numerical robustness analysis of the primal recovery method is also conducted. For ill-conditioned problems that arise, for instance, when the cost functions are linear, we propose to use the proximal method, which solves a sequence of well-conditioned problems obtained from the original problem by adding quadratic regularization terms. Furthermore, the simulation results confirm the numerical robustness of the proposed algorithms. Finally, the proximal method and the dual subgradient method can be naturally extended to provide an effective solution for applications with multiple multicast sessions.
机译:实际部署网络编码的一个中心问题是网络资源的自适应和经济分配。我们将此作为一种优化,将网络实用性(即从可实现的多播吞吐量中得出的实用程序与资源供应的总成本之间的差异)最大化。通过采用容许速率区域的流量表征的最大值进行组播,本文提出了一种具有可分离结构的优化问题的新表述。拉格朗日松弛法用于将问题分解为涉及每个目的地的子问题。我们对原始问题的具体表述导致两个关键特性。首先,分解后产生的子问题等于找到从源到每个目的地的最短路径的问题。其次,假设净效用函数严格为凹函数,则我们提出的方法可使近似最优的原始变量从近似最优的对偶变量中唯一恢复。还对原始恢复方法进行了数值鲁棒性分析。对于出现的病态问题,例如,当成本函数为线性时,我们建议使用近端方法,该方法通过添加二次正则项来解决从原始问题获得的一系列病态问题。此外,仿真结果证实了所提出算法的数值鲁棒性。最后,可以自然扩展近端方法和双重次梯度方法,从而为具有多个多播会话的应用程序提供有效的解决方案。

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