Optimal LAS rceiver in massive MIMO system

Zhang Linbo, Zhang Zhuo, L. Tong, Sun Shanshan
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引用次数: 2

Abstract

This paper is aimed at solving the intrinsic problem named partial minimum solution of LAS detection algorithm in massive MIMO system under the circumstance of channel state information is known in transmitting terminal, and presents a modified detection algorithm based likelihood ascend search(LAS). On the basic of conventional LAS detection algorithm, this modified detection algorithm searches the neighbor vector of current solution vector at random as original solution vector in the next iteration. Besides, this modified detection algorithm adopts the rule of dynamic iteration time to control the time of iteration in the signal detection of Massive MIMO system. Both of theory deduction and simulation result indicate that the modified detection algorithm based on LAS overcomes the problem of partial minimum solution so that the performance of BER is improved, meanwhile, the complexity of computation is reduced to raise the operating efficiency.
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大规模MIMO系统中最优LAS接收机
针对大规模MIMO系统中在发射端信道状态信息已知的情况下,LAS检测算法的局部最小解问题,提出了一种改进的基于似然上升搜索(LAS)的检测算法。改进的检测算法在传统LAS检测算法的基础上,在下一次迭代中随机搜索当前解向量的邻居向量作为原始解向量。此外,改进的检测算法在Massive MIMO系统的信号检测中,采用了动态迭代时间规则来控制迭代时间。理论推导和仿真结果表明,改进的基于LAS的检测算法克服了部分最小解的问题,提高了误码率的性能,同时降低了计算复杂度,提高了运行效率。
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