基于遗传算法的密集飞基站部署中导功率聚类自优化

L. Mohjazi, M. Al-Qutayri, H. Barada, K. Poon
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引用次数: 0

摘要

飞蜂窝是一种小型基站,用于增强室内环境中的蜂窝覆盖。然而,密集的移动基站部署会导致严重的性能下降。本文采用了一种新的自优化策略,即创建不相交的飞蜂窝簇,并由所选择的簇头来管理。每个CH通过应用基于遗传算法的多目标启发式算法来优化其连接成员的覆盖范围。仿真结果表明,与集中式优化方法相比,该方法可以显著减少计算时间和数据开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering based self-optimization of pilot power in dense femtocell deployments using genetic algorithms
Femtocells are small base stations used to enhance cellular coverage in an indoor environment. However, dense femtocell deployments can lead to severe performance degradation. This paper adopts a new strategy to self-optimize the pilot power of femtocells by creating disjoint femtocell clusters which are managed by the chosen cluster heads (CHs). Each CH optimizes the coverage of its connected members by applying a multi-objective heuristic based on genetic algorithm. The simulation results show that the proposed approach can significantly reduce both the computational time and the data overhead compared with the centralized power optimization.
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