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A fuzzy Q-learning approach for enhanced intercell interference coordination in LTE-Advanced heterogeneous networks

机译:LTE-Advanced异构网络中增强小区间干扰协调的模糊Q学习方法

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Since the transmission power of macro eNodeB (eNB) is higher than pico eNB in long term evolution-advanced heterogeneous network, the coverage area of picocell is small. In order to address the coverage problem, cell range expansion (CRE) technique has been recently proposed. However, CRE can lead to the downlink interference problem on both data and control channels when users are connected to pico eNB. In order to mitigate the downlink interference problem, a new dynamic almost blank subframe (ABS) scheme is proposed in this paper. In this scheme, a fuzzy q-learning approach is used to find the optimum ABS value. Simulation results show that the system performance can be improved through the proposed scheme.
机译:由于长期演进高级异构网络中宏eNodeB(eNB)的传输功率高于微微eNB,因此微微小区的覆盖范围较小。为了解决覆盖问题,最近已经提出了小区范围扩展(CRE)技术。但是,当用户连接到微微eNB时,CRE可能导致数据和控制信道上的下行链路干扰问题。为了缓解下行链路干扰问题,本文提出了一种新的动态近乎空白子帧(ABS)方案。在该方案中,使用模糊q学习方法来找到最佳ABS值。仿真结果表明,该方案可以提高系统性能。

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