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Efficient RSS measurement in wireless networks based on compressive sensing

机译:基于压缩感测的无线网络中有效的RSS测量

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Collecting the RSS between all pair of nodes in the networks is very significant for wireless network optimization, localization, interference management and etc. Aside from its significances, the measurement process could be tedious, time consuming and involving human operations. The state-of-art works usually applied the fashion of ???measure a few, predict many???, which use measurement calibrated models to generate the RSS for the whole networks. However, this kind of methods still cannot provide accurate results in a short duration and low measurement cost. In addition, they also require careful scheduling of the measurement which is vulnerable to measurement conflict. In this paper, we propose a compressive sensing (CS)-based RSS measurement solution, which is conflict-tolerant, time-efficient and accuracy-guaranteed without any model-calibrate operation. The CS-based solution takes advantage of compressive sensing theory to enable simultaneous measurement in the same channel, which reduces the time cost to the level of O(logN) (where N is the network size) and works well for sparse networks. Extensive experiments based on real data trace are conducted to show the efficiency of the proposed solutions.
机译:收集网络中所有节点对之间的RSS对于无线网络优化,定位,干扰管理等具有非常重要的意义。除了它的意义外,测量过程可能很繁琐,耗时且涉及人为操作。最新的作品通常采用“少量测量,预测许多”的方式,这些方法使用测量校准模型来生成整个网络的RSS。但是,这种方法仍不能在短时间内和低测量成本下提供准确的结果。另外,它们还需要仔细安排测量时间,这很容易引起测量冲突。在本文中,我们提出了一种基于压缩感知(CS)的RSS测量解决方案,该解决方案具有冲突容忍,省时,准确的特点,无需任何模型校准操作。基于CS的解决方案利用压缩感测理论来实现在同一通道中的同时测量,从而将时间成本降低到O(logN)(其中N是网络规模)的水平,并且对于稀疏网络非常有效。进行了基于真实数据跟踪的广泛实验,以证明所提出的解决方案的效率。

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