无线网络优化的量化冲突图

Yanchao Zhao, Wenzhong Li, Jie Wu, Sanglu Lu
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引用次数: 11

摘要

冲突图被广泛应用于无线网络优化中,用于解决信道分配、频谱分配、链路调度等问题。尽管简单,传统的冲突图有两个缺点。一方面,它是干扰情况的粗略表示,不准确,会导致无线网络优化的次优结果。另一方面,它只定义了两个实体之间的干扰,忽略了少量干扰的累积效应。本文提出了量化冲突图(QCG)模型来解决上述问题。探讨了QCG的性质、用途和施工方法。我们证明了在其矩阵形式下,QCG具有低秩和高相似的性质。这些特性产生了三种互补的QCG估计策略,即低秩近似法、基于相似度的方法和综合方法,以便从部分干涉测量结果高效、准确地构建QCG。我们进一步探索了QCG在无线网络优化中的潜力,将QCG应用于最小化网络总干扰。在实际采集的无线网络上进行了大量的实验,以评估系统的性能,验证了所提算法的有效性。
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Quantized conflict graphs for wireless network optimization
Conflict graph has been widely used for wireless network optimization in dealing with the issues of channel assignment, spectrum allocation, links scheduling and etc. Despite its simplicity, the traditional conflict graph suffers from two drawbacks. On one hand, it is a rough representation of the interference condition, which is inaccurate and will cause suboptimal results for wireless network optimization. On the other hand, it only defines the interference between two entities, which neglects the accumulative effect of small amount interference. In this paper, we propose the model of quantized conflict graph (QCG) to tackle the above issues. The properties, usage and construction methods of QCG are explored. We show that in its matrix form, a QCG owns the properties of low-rank and high-similarity. These properties give birth to three complementary QCG estimation strategies, namely low-rank approximation approach, similarity based approach, and comprehensive approach, to construct the QCG efficiently and accurately from partial interference measurement results. We further explore the potential of QCG for wireless network optimization by applying QCG in minimizing the total network interference. Extensive experiments using real collected wireless network are conducted to evaluate the system performance, which confirm the efficiency of the proposed algorithms.
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