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Understanding the Capacity Region of the Greedy Maximal Scheduling Algorithm in Multi-Hop Wireless Networks
181
Citations
31
References
2008
Year
Unknown Venue
Cross-layer OptimizationEngineeringNetwork AnalysisMulti-hop Wireless NetworksGreedy Maximal SchedulingOperations ResearchNetwork TopologiesNetwork CalculusCombinatorial OptimizationThroughput PerformanceNetwork OptimizationTopology ControlNetwork ScienceGraph TheoryCapacity RegionEdge ComputingBusinessHeterogeneous NetworkMulti-hop RoutingEnergy-efficient Networking
In this paper, we characterize the performance of an important class of scheduling schemes, called greedy maximal scheduling (GMS), for multi-hop wireless networks. While a lower bound on the throughput performance of GMS is relatively well-known in the simple node-exclusive interference model, it has not been thoroughly explored in the more general K-hop interference model. Moreover, empirical observations suggest that the known bounds are quite loose, and that the performance of GMS is often close to optimal. In this paper, we provide a number of new analytic results characterizing the performance limits of GMS. We first provide an equivalent characterization of the efficiency ratio of GMS through a topological property called the local-pooling factor of the network graph. We then develop an iterative procedure to estimate the local-pooling factor under a large class of network topologies and interference models. We use these results to study the worst-case efficiency ratio of GMS on two classes of network topologies. First, we show how these results can be applied to tree networks to prove that GMS achieves the full capacity region in tree networks under the K-hop interference model. Second, we show that the worst-case efficiency ratio of GMS in geometric network graphs is between 1/6 and 1/3.
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