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A Cluster-Based Resource Allocation Strategy with Energy Harvesting in Dense Small-Cell Networks

机译:密集小型蜂窝网络中具有能量收集功能的基于集群的资源分配策略

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This paper focuses on heterogeneous dense small-cell networks (Dense-SCNs), consisting of a macro cell base station (MBS) and multiple small cell base stations (SBSs). In the Dense-SCNs, the MBS is a centralized energy trading center and SBSs receive the required energy resource from the trading center. Due to the SBSs' randomly deployment, resulting in the diversity of energy acquisition price, we have an incentive to agree on maximizing the throughput-benefit per unit energy cost, which problem is proved to be non-convex and cannot be solved within polynomial time. Thus, we propose an algorithm to reduce the computation complexity by decomposing the optimization problem into clustering strategy and iterative resource allocation method. The obtain simulation results show that the proposed adaptive clustering strategy considering both interference and minimum data rate demand can alleviate the negative impact of the multiple strong interference SBSs and balance dynamic traffic load by the selection of appropriate weight factor. What is more, translating a non-convex optimization problem into a series of convex optimization problems and linear problems, the proposed iterative resource allocation method can achieve a better performance of the benefit and computation complexity.
机译:本文侧重于由宏小区基站(MBS)和多个小小区基站(SBSS)组成的异质密集的小型电池网络(Dense-SCNS)。在Dended-SCN中,MBS是一个集中的能源交易中心,SBSS从交易中心收到所需的能源资源。由于SBSS的随机部署,导致能源收购价格的多样性,我们有一个激励才能达成一致,以最大化每单位能源成本的吞吐量效益,这些问题被证明是非凸,不能在多项式时间内解决。因此,我们提出了一种通过将优化问题分解成聚类策略和迭代资源分配方法来降低计算复杂性的算法。获取仿真结果表明,考虑干扰和最小数据速率需求的建议自适应聚类策略可以通过选择适当的权重因子来缓解多种强干扰SBSS的负面影响和平衡动态交通负荷。更重要的是,将非凸优化问题转化为一系列凸优化问题和线性问题,所提出的迭代资源分配方法可以实现更好的益处和计算复杂性的性能。

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