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Nonconcave Utility Maximization in Locally Coupled Systems, With Applications to Wireless and Wireline Networks

机译:局部耦合系统中的非凹面效用最大化,以及在无线和有线网络中的应用

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Motivated by challenging resource allocation issues arising in large-scale wireless and wireline communication networks, we study distributed network utility maximization problems with a mixture of concave (e.g., best-effort throughputs) and nonconcave (e.g., voice/video streaming rates) utilities. In the first part of the paper, we develop our methodological framework in the context of a locally coupled networked system, where nodes represent agents that control a discrete local state. Each node has a possibly nonconcave local objective function, which depends on the local state of the node and the local states of its neighbors. The goal is to maximize the sum of the local objective functions of all nodes. We devise an iterative randomized algorithm, whose convergence and optimality properties follow from the classical framework of Markov Random Fields and Gibbs Measures via a judiciously selected neighborhood structure. The proposed algorithm is distributed, asynchronous, requires limited computational effort per node/iteration, and yields provable convergence in the limit. In order to demonstrate the scope of the proposed methodological framework, in the second part of the paper we show how the method can be applied to two different problems for which no distributed algorithm with provable convergence and optimality properties is available. Specifically, we describe how the proposed methodology provides a distributed mechanism for solving nonconcave utility maximization problems: 1) arising in OFDMA cellular networks, through power allocation and user assignment; 2) arising in multihop wireline networks, through explicit rate allocation. Several numerical experiments are presented to illustrate the convergence speed and performance of the proposed method.
机译:受大规模无线和有线通信网络中出现的具有挑战性的资源分配问题的激励,我们研究了混合使用凹形(例如,尽力而为吞吐量)和非凹形(例如,语音/视频流率)实用程序的分布式网络实用程序最大化问题。在本文的第一部分中,我们在本地耦合的网络系统的环境中开发我们的方法框架,其中节点代表控制离散本地状态的代理。每个节点都有可能是非凹面的局部目标函数,该函数取决于节点的局部状态及其邻居的局部状态。目的是使所有节点的局部目标函数之和最大化。我们设计了一种迭代随机算法,该算法的收敛性和最优性均遵循经过精心选择的邻域结构,遵循马尔可夫随机场和吉布斯测度的经典框架。所提出的算法是分布式的,异步的,每个节点/迭代需要有限的计算工作量,并且在限制方面产生可证明的收敛性。为了证明所提出的方法框架的范围,在本文的第二部分中,我们展示了该方法如何适用于两个不同的问题,对于这些问题,尚无具有可证明的收敛性和最优性的分布式算法。具体来说,我们描述所提出的方法如何提供解决非凹面效用最大化问题的分布式机制:1)通过功率分配和用户分配,出现在OFDMA蜂窝网络中; 2)通过明确的速率分配而出现在多跳有线网络中。数值实验表明了该方法的收敛速度和性能。

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