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Clustering for determining distributed antenna locations in wireless networks

机译:聚类以确定无线网络中的分布式天线位置

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In this paper we extend the concept of the well-known input-output clustering (IOC) technique in Uykan et al. (IEEE Trans Neural Netw 11(4):851-858, 2000) to antenna location optimization problem in wireless networks and propose an input-output space clustering criterion (IOCC) to optimize the locations of the remote antenna units (RAUs) of generalized distributed antenna systems (DASs) under sum power constraint. In IOCC, the input space refers to RAU location space and output space refers to location specific ergodic capacity space for noise-limited environments. Given a location-specific arbitrary desired ergodic capacity function over a geographical area, we define the error as the difference between actual and desired ergodic capacity. Following the major steps of the well-known IOC technique in Uykan et al. (IEEE Trans Neural Netw 11(4):851-858, 2000) and Uykan (IEEE Trans Neural Netw 14(3):708-715, 2003) we show that for the DAS wireless networks: (1) the IOCC provides an upper bound to the cell averaged ergodic capacity error; and (2) the derived upper bound is equal to a weighted quantization error function in location-capacity space (input-output space) and (3) the upper bound can be made arbitrarily small by a clustering process increasing the number of RAUs for a feasible DAS. IOCC converts the RAU location problem into a codebook design problem in vector quantization in input-output space, and thus includes the Squared Distance Criterion (SDC) for DAS in Wang et al. (IEEE Commun Lett 13:315-317, 2009) (and other related papers) as a special case, which takes only the input space into account. Computer simulations confirm the theoretical findings and show that the IOCC outperforms the SDC for DAS in terms of the defined cell averaged "effective" ergodic capacity.
机译:在本文中,我们扩展了Uykan等人的著名的输入输出聚类(IOC)技术的概念。 (IEEE Trans Neural Netw 11(4):851-858,2000)来解决无线网络中的天线位置优化问题,并提出一种输入输出空间聚类标准(IOCC)以优化广义的远程天线单元(RAU)的位置总功率约束下的分布式天线系统(DAS)。在IOCC中,输入空间是指RAU位置空间,而输出空间是指针对噪声受限的环境的特定于位置的遍历容量空间。给定某个地理区域内特定于位置的任意期望遍历容量函数,我们将误差定义为实际遍历容量和期望遍历容量之间的差。遵循Uykan等人中著名的IOC技术的主要步骤。 (IEEE Trans Neural Netw 11(4):851-858,2000)和Uykan(IEEE Trans Neural Netw 14(3):708-715,2003)我们证明,对于DAS无线网络:(1)IOCC提供了一个单元平均遍历容量误差的上限; (2)导出的上限等于位置容量空间(输入-输出空间)中的加权量化误差函数,并且(3)可以通过聚类过程增加RAU的数量,从而使上限任意小。可行的DAS。 IOCC将RAU位置问题转换为输入输出空间中矢量量化的码本设计问题,因此在Wang等人的文章中包括了DAS的平方距离标准(SDC)。 (IEEE Commun Lett 13:315-317,2009)(以及其他相关论文)作为特殊情况,它仅考虑输入空间。计算机仿真证实了理论上的发现,并表明,在定义的电池平均“有效”遍历能力方面,IOCC优于DAS的SDC。

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