Box-constrained maximum-likelihood detection in CDMA

P. Tan, L. Rasmussen, Teng Joon Lim
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引用次数: 16

Abstract

The detection strategy usually denoted optimal multiuser detection is equivalent to the solution of a (0,1)-constrained maximum-likelihood (ML) problem, a problem which is known to be NP-complete. In contrast, the unconstrained ML problem can be solved quite easily and is known as the decorrelating detector. In this paper, we consider the box-constrained ML problem and suggest a general iterative solution algorithm. Special cases of this algorithm correspond to known, nonlinear successive and parallel interference cancellation structures, using a clipped soft decision function for making tentative decisions. These structures are therefore maximum-likelihood under the assumption that the detected data vector is constrained to lie within a hypercube. Convergence issues are investigated and an efficient implementation is suggested. The BER performance is studied via computer simulations and the expected performance improvements over unconstrained ML is verified.
CDMA中的盒约束最大似然检测
通常被称为最优多用户检测的检测策略相当于求解一个(0,1)约束的最大似然(ML)问题,该问题已知是np完全的。相反,无约束的机器学习问题可以很容易地解决,被称为去相关检测器。本文考虑盒约束机器学习问题,提出了一种通用的迭代求解算法。该算法的特殊情况对应于已知的、非线性的、连续的、并行的干扰消除结构,使用一个剪切的软决策函数来进行暂定决策。因此,在检测到的数据向量被限制在超立方体内的假设下,这些结构是最大似然的。研究了收敛性问题,并提出了有效的实现方法。通过计算机仿真研究了误码率性能,并验证了预期的性能改进。
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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