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Mining Radio Environment Maps from Measurements in SDR Based Self-Organizing Networks

机译:采矿无线电环境从基于SDR的测量结果映射到基于SDR的自组织网络

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Radio environment maps (REMs) demonstrate the geo-located information of radio performance, which is critical to coverage enhancement in self-organizing networks (SONs). However, due to the limited number of user equipments available to measurement report, constructing REMs accurately is still a crucial challenge. In this paper, an effective algorithm is proposed to construct REMs based on both historical and current measurements of Reference Signal Received Power (RSRP). Specifically, given the differentiated propagation properties across different zones, historical measurements are utilized to group concerned zones into multiple clusters, in each of which all the zones share the same large-scale propagation parameters. In this way, more accurate REMs can be built. In addition, when new measurements come, the shadowing effect parameters in each cluster are further updated via the Expectation Maximization algorithm, making REMs adaptive to time-varying changes. After implementing the proposed algorithm on an OpenAirInterface based SON platform, experiments are conducted and corresponding results show its superiority compared to other interpolation methods.
机译:无线电环境映射(REMS)展示了无线电性能的地理位置信息,这对于自组织网络(儿子)中的增强至关重要。但是,由于测量报告可用的用户设备数量有限,准确构建REMS仍然是一个至关重要的挑战。在本文中,提出了一种基于参考信号接收功率(RSRP)的历史和电流测量的历史和电流测量来构建REM的有效算法。具体地,鉴于不同区域的差异化传播属性,历史测量用于将相关区域分组到多个集群中,每个区域共享相同的大规模传播参数。通过这种方式,可以构建更准确的REM。此外,当新测量结果时,通过期望最大化算法进一步更新每个群集中的阴影效果参数,使REMS自适应变化变化。在在基于OpenAilInterface的SON平台上实现所提出的算法之后,进行实验,与其他插值方法相比,相应的结果表明其优越性。

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