结合最大梯度搜索的软判决联合最优检测

Khalid Al Murrani
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引用次数: 0

摘要

在多用户CDMA环境下,最优最大似然接收机对接收到的信号矢量进行决策所需的计算量随着用户数量呈指数增长,这使得其过于复杂而难以实际实现。在本文中,我们建议对该接收机的方法进行修改,以达到最大似然决策。我们不是比较接收到的向量与传输数据向量的所有可能组合,而是使用梯度方法在最优最大化点的方向上缩放决策度量的表面。将其与软决策相结合,即在沿着各自的轴做出决策后,每次限制一个维度的移动,我们可以通过大量的计算得出最大似然决策,这些计算随着用户数量的增加而呈二次增长,而不是呈指数增长。结果表明,使用这种方法的最佳接收机的性能与标准的计算密集型方法几乎没有区别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimum joint detection using soft decision combined with maximum gradient search
The number of computations required by the optimum maximum likelihood receiver to make a decision on the received signal vector grows exponentially with the number of users in a multiuser CDMA environment which makes it too complex to implement practically. In this paper we suggest a modification in the approach of this receiver to arrive at the maximum likelihood decision. Instead of comparing the received vector for all possible combinations of the transmitted data vector, we use the gradient method to scale the surface of the decision metric in the direction of the optimum maximizing point. Combining this with soft decision by restricting the movement by one dimension at a time after making a decision along the respective axis, we can arrive at the maximum likelihood decision with a number of computations that increases quadratically rather than exponentially with the number of users. Results show that the performance of the optimum receiver using this approach is virtually indistinguishable from the standard computationally intensive approach.
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