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Enhancing the performance of HetNets via linear regression estimation of Range Expansion Bias

机译:通过线性回归估计来增强Hetnets的性能范围扩展偏差

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Heterogeneous Networks (HetNets) use picocells deployed at strategic locations to fill coverage holes, improve Quality of Experience for users, and reduce blocking by supporting more users via cell splitting and spatial reuse of spectrum. Picocell Base Stations have lower transmit power compared to Macro Base Station. As a result, the observed improvements are often less than anticipated due to lower utilization and offloading. To improve picocell utilization, cell biasing attempts to offload users from macrocell by modifying cell selection/handover criteria. However, an improper bias value can increase blocking and penalize the users with higher macro interference. In this paper, we propose an efficient regression based scheme to predict a near optimal bias value that attempts to reduce blocking probability and improve load fairness index in the system. The simulation results verify that, in comparison to static bias, the proposed scheme also improves the cell edge user throughput, along with the target criteria.
机译:异构网络(Hetnets)使用在战略位置部署的微微小区来填充覆盖孔,提高用户的经验质量,并通过通过细胞分离和空间再利用来支持更多用户来减少阻塞。与宏基站相比,Picocell基站具有较低的发射功率。结果,由于利用率和卸载较低,观察到的改进通常小于预期。为了提高Picocell利用率,通过修改小区选择/切换标准,细胞偏置尝试从宏小区卸载用户。但是,偏差值不当可以增加阻塞并惩罚具有更高宏干扰的用户。在本文中,我们提出了一种高效的基于回归的方案,以预测尝试降低系统中的阻塞概率和改善负载公平指数的近最佳偏差值。仿真结果验证,与静态偏置相比,所提出的方案还提高了单元边缘用户吞吐量以及目标标准。

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