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A QoS aware reinforcement learning algorithm for macro-femto interference in dynamic environments

机译:一种动态环境中宏观毫微微干扰的QoS意识到的加强学习算法

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Network operators are considering femtocell solutions as a mean of reducing costs, offloading their networks and increasing profits but this at the same time gives rise to new technological challenges. The most stringent ones are the resources that the femtocells should be using and the interference between the macro and the femto layers. We propose an unsupervised learning algorithm, namely reinforcement learning as the means of achieving self-organizing capabilities for the femtocells. The proposed algorithm is characterized by femto-QoS awareness, as the actions of the femtocells are directed at avoiding interference on the macro layer but at the same time achieving the QoS requirements of the femtocells. Dealing with OFDMA based systems, different service classes for both the macro and the femto users are envisioned and equal priority is assigned among users. The different QoS requirements allow applying a Markov chain prediction on the number of resources required by a femtocell, enhancing the performance of the algorithm. Finally, the proposed algorithm is tested in a highly dynamic environment in which the allocation of resources to the macro users can change at each time step.
机译:网络运营商正在考虑Femtocell解决方案,作为降低成本,卸载网络和增加利润的平均值,但同时引起新的技术挑战。最严格的是毫微微小区应该使用的资源以及宏与毫微微层之间的干扰。我们提出了一种无监督的学习算法,即加强学习作为实现毫微微蜂窝的自组织能力的手段。所提出的算法的特征在于毫微微QoS意识,因为毫微微蜂窝的动作被引导避免对宏观层的干扰,但同时实现了毫微微蜂窝的QoS要求。处理基于MA的系统,宏和毫微微用户的不同服务类是设想的,并且在用户之间分配了相同的优先级。不同的QoS要求允许在毫微微小区所需的资源数量上应用马尔可夫链预测,增强算法的性能。最后,在高度动态环境中测试了所提出的算法,其中对宏用户的资源分配可以在每次步骤中改变。

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