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Efficient SINR Estimating with Accuracy Control in Large Scale Cognitive Radio Networks

机译:大规模认知无线电网络中基于精度控制的有效SINR估计

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Recently, the SINR-model has been widely utilized in link scheduling, spectrum allocation and other applications. The SINR model requires the receiving power information of all potential link peers, which is usually assumed to be known as priori or following a uniform propagation model. We have performed experiments to illustrate how real power data could improve the performance of the SINR-based applications with considerable margin. Thus, obtaining the real power data through measurements is promising. However, this method faces many challenges. We propose a pathloss model based solution, including a representative link selection method to cut down the measurement pairs; accuracy control to determine the sample size; and a measurement distribution method to shorten the measurement duration. Our experiments show that our solution significantly improves the SINR-based scheduling's performance.
机译:最近,SINR模型已被广泛用于链路调度,频谱分配和其他应用中。 SINR模型要求所有潜在链路对等点的接收功率信息,通常假定被认为是先验的或遵循统一传播模型。我们已经进行了实验,以说明有功功率数据如何以相当大的幅度提高基于SINR的应用程序的性能。因此,通过测量获得有功功率数据是有希望的。但是,这种方法面临许多挑战。我们提出了一种基于路径损耗模型的解决方案,其中包括一种有代表性的链路选择方法,以减少测量对。精确度控制以确定样本量;测量分配方法可以缩短测量时间。我们的实验表明,我们的解决方案大大提高了基于SINR的调度的性能。

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