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Robust data rate estimation with stochastic SINR modeling in multi-interference OFDMA networks

机译:具有多干扰的随机SINR模型的强大数据速率估算

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To meet the rapidly growing requirement for universal coverage of high-speed mobile services, wireless cellular networks have been moving towards increasing density. Inter-cell cooperation in such densely deployed networks is becoming more significant than ever before. Among others, data rate estimation is a fundamental issue for inter-cell resource management and optimization. In this paper, we focus on the data rate estimation problem based on stochastic SINR models. We derive a closed-form solution of user SINR distribution in multi-interference networks. We calculate upper and lower bounds of the SINR distribution and extend them to a weighted sum SINR model to achieve more accurate estimation of data rate. The simulation results reveal that our designed model can guarantee the accuracy of data rate estimation in diverse wireless network environments such as urban and suburban scenarios. It decreases the error of estimation and the ratio of high-error users even with very small signaling overhead fed back per user. Various factors, such as the number of reported cells, low-SINR effect, propagation environments and inaccuracy of channel measurement, which influence the estimation performance are analyzed and evaluated as well. The weighted sum model is verified to have great resistance to the influence of these factors and achieve accurate estimation.
机译:为了满足高速移动服务的普遍覆盖的快速增长要求,无线蜂窝网络一直朝着增加的密度而移动。在这种密集部署的网络中的单元间合作比以往任何时候都变得更加重要。其中,数据速率估计是细胞间资源管理和优化的基本问题。在本文中,我们专注于基于随机SINR模型的数据速率估计问题。我们在多干扰网络中获得了用户SINR分布的封闭式解决方案。我们计算SINR分布的上限和下限,并将其扩展到加权SINR模型,以实现更准确的数据速率估算。仿真结果表明,我们设计的模型可以保证在城市和郊区情景等各种无线网络环境中数据速率估算的准确性。即使每个用户反馈的非常小的信令开销,它也会降低估计误差和高错误用户的比率。分析和评估了各种因素,例如报告的细胞,低SINR效应,传播环境和信道测量的不准确性,这也得到了影响估计性能。验证了加权的Sum模型,对这些因素的影响以及实现准确估计具有巨大抵抗力。

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