A family of linear complexity likelihood ascent search multiuser detectors for CDMA communications

Yi Sun
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引用次数: 4

Abstract

We propose a family of likelihood ascent search (LAS) detectors that achieve maximum likelihood detection in a subset of hypotheses whereas their expected per-bit computational complexity is linear in the number of users. The LAS detectors monotonically increase likelihood at every search step, and thus monotonically decrease the error probability and converge to a fixed point in a finite number of steps with probability one. It is proved that the thresholds set up in the LAS detectors are necessary and sufficient for monotonic likelihood ascent for an arbitrary signature crosscorrelation matrix with probability one. Among the LAS detectors, the set of wide-sense sequential LAS (WSLAS) detectors is shown to be a set of local maximum likelihood (LML) detectors defined with neighborhood size one. The properties of the fixed points and their observation regions are studied. Simulations are carried out and verify analytical results.
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一类用于CDMA通信的线性复杂度似然上升搜索多用户检测器
我们提出了一系列似然上升搜索(LAS)检测器,它们在假设子集中实现最大似然检测,而它们的预期每比特计算复杂度与用户数量呈线性关系。LAS检测器在每一步搜索中单调地增加似然,从而单调地降低错误概率,并在有限步内收敛到一个不动点,概率为1。证明了在LAS检测器中设置的阈值对于概率为1的任意特征互相关矩阵的单调似然上升是充分必要的。在广义序列LAS (WSLAS)检测器中,广义序列LAS (WSLAS)检测器是一组邻域大小为1的局部极大似然检测器(LML)。研究了不动点及其观测区域的性质。仿真验证了分析结果。
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