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A self-adaptive handoff decision algorithm for densely deployed closed-group femtocell networks

机译:一种自适应切换决策算法,用于密集部署的封闭群毫微微小区网络

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Due to the high traffic demand in cellular networks, femtocells are considered as one promising solution for providing cellular traffic offloading and better indoor coverage. However, coexistence of femtocells with macrocell networks introduces special challenges to mobility management. In particular, since indoor and unplanned deployment of femtocells usually suffers abrupt signal drop due to mutipath propagation, wall penetration loss, and shadowing, unnecessary handoffs and ping-pong effects may happen frequently, which severely degrades the quality of connections and user experience. On the other hand, offloading in femtocells requires a high cell utilization. Therefore, handoff decision algorithms should be carefully designed to trigger proper handoffs and fulfill the different requirements of macro-to-femto and femto-to-macro handoffs. In this paper, we propose a location history based adaptive handoff decision algorithm to address the special challenges of indoor and unplanned deployment of femtocells. Our proposed algorithm uses the neighboring cell list in dense femtocell networks to obtain the location of users. Based on the user location history, a new concept, handoff frequency of occurrence, is introduced to assist intelligent handoff decision-making. The hysteresis margin in our proposed handoff decision criteria can be adaptively adjusted to meet various handoff requirements. Simulation results show that our proposed location history based adaptive handoff decision algorithm can significantly improve the femtocell utilization and handoff failure rate. To the best of our knowledge, this is the first adaptive handoff decision algorithm that considers specific challenges of indoor deployment of femtocells.
机译:由于蜂窝网络中的交通量高,毫微微蜂窝被认为是提供蜂窝交通卸载和更好的室内覆盖的一个有希望的解决方案。然而,用宏小区网络的毫微微小区的共存对移动性管理引起了特殊挑战。特别是,由于室内和意外部署的毫微微蜂窝的部署通常由于泥虫传播而导致的信号下降,墙壁穿透损失和阴影可能经常发生,这可能会严重降低连接和用户体验的质量。另一方面,在毫微微蜂窝中卸载需要高电池利用率。因此,应仔细设计切换决策算法以触发正确的切换并满足宏观到毫微微和毫微微宏切换的不同要求。在本文中,我们提出了一种基于位置历史的自适应切换决策算法,解决了室内和意外部署毫微微蜂窝的特殊挑战。我们所提出的算法使用密集的毫微微小区网络中的相邻小区列表来获得用户的位置。基于用户位置历史,引入了一种新的概念,发生的切换频率,以帮助智能切换决策。可以自适应地调整我们所提出的切换判定标准的滞后保证金以满足各种切换要求。仿真结果表明,我们所提出的基于位置历史的自适应切换决策算法可以显着提高毫微微小区利用和切换故障率。据我们所知,这是第一个自适应切换决策算法,其考虑了毫微微蜂窝的室内部署的特定挑战。

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