The increasing amount of mobile data traffic has resulted in an architectural innovation in cellular networks through the introduction of heterogeneous networks. In heterogeneous networks, the deployment of macrocells is accompanied by the use of low power pico and femtocells (referred to as microcells) in hot spot areas inside the macrocell which increase the data rate per unit area.The purpose of this thesis is to study the load balancing problem of elastic data traffic in heterogeneous wireless networks. These networks consist of different types of cells with different characteristics. Individual cells are modelled as an M/G/1 - PS queueing system. This results in a multi-server queueing model consisting of a single macrocell with multiple microcells within the area. Both static and dynamic load balancing schemes are developed to balance the data flows between the macrocell and microcells so that the mean flow-level delay is minimized. Both analytical and numerical methods are used for static policies. For dynamic policies, the performance is evaluated by simulations.The results of the study indicate that all dynamic policies can significantly improve the flow-level delay performance in the system under consideration compared to the optimal static policy. The results also indicate that MJSQ and MP are best policies although MJSQ needs less state information. The performance gain of most of the dynamic polices is insensitive with respect to the flow size distribution. In addition, many interesting tests are conducted such as the effect of increasing the number of microcells and the impact of service rate difference between macrocell and microcells.
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机译:通过引入异构网络,移动数据流量的增加已导致蜂窝网络的体系结构创新。在异构网络中,宏蜂窝的部署伴随着宏蜂窝内部热点区域中低功率微微蜂窝和毫微微小区(称为微蜂窝)的使用,从而提高了单位面积的数据传输速率。异构无线网络中弹性数据流量的负载平衡问题。这些网络由具有不同特征的不同类型的小区组成。将单个单元建模为M / G / 1-PS排队系统。这将导致一个多服务器排队模型,该模型由一个宏小区和该区域内的多个微小区组成。开发了静态和动态负载平衡方案,以平衡宏小区和微小区之间的数据流,从而使平均流级别延迟最小化。分析方法和数值方法都用于静态策略。对于动态策略,通过仿真对性能进行评估。研究结果表明,与最优静态策略相比,所有动态策略都可以显着改善所考虑系统中的流级延迟性能。结果还表明,尽管MJSQ需要较少的状态信息,但MJSQ和MP是最佳策略。大多数动态策略的性能增益对于流量大小分布不敏感。另外,进行了许多有趣的测试,例如增加微蜂窝数量的效果以及宏蜂窝与微蜂窝之间服务速率差异的影响。
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