Differential evolution algorithm based pilot aided weighted data fusion scheme for uplink base-station cooperation system

Zhe Zhang, Jing Yang, Jiankang Zhang, X. Mu
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Abstract

Base Station Cooperation (BSC), has been a promising technique for combating the Inter-Cell Interference (ICI) by exchanging information through a high-speed optical fiber back-haul to increase the diversity gain. In this paper, we propose a novel pilot symbol assisted data fusion scheme for Uplink BSC (UBSC). Furthermore, the proposed scheme exploits the pre-defined pilot symbols as the sample of transmitted symbols to constitute a sub-optimal Weight Calculation (WC) model. To circumvent the non-linear programming problem of the proposed sub-optimal model, Differential Evolution (DE) algorithm is employed for searching the proper fusion weights. Compared with the existing equal weights based soft combining scheme, the proposed scheme can adaptively adjust the fusion weights according to the accuracy of cooperative information, which remains the relatively low computational complexity and back-haul traffic. Performance analysis and simulation results show that, the proposed scheme can significantly improve the system performance with the pilot settings of the existing standards.
基于差分进化算法的上行基站协同系统加权数据融合方案
基站合作(BSC)是一种很有前途的对抗小区间干扰(ICI)的技术,它通过高速光纤回程交换信息以增加分集增益。本文提出了一种新的导频符号辅助上行BSC (UBSC)数据融合方案。此外,该方案利用预定义的导频符号作为传输符号的样本,构成次优权重计算(WC)模型。为了避免次优模型的非线性规划问题,采用差分进化(DE)算法搜索合适的融合权值。与现有的基于等权的软组合方案相比,该方案可以根据协同信息的准确性自适应调整融合权值,同时具有较低的计算复杂度和回程流量。性能分析和仿真结果表明,在现有标准的先导设置下,该方案能显著提高系统性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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