波束形成方法之间的性能权衡

Y. Rong, Y. Eldar, A. Gershman
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引用次数: 4

摘要

本文讨论了自适应波束形成器设计的三个主要准则:最大信噪比(MSINR)、最小均方误差(MMSE)和最小最小二乘误差(MLSE)。虽然在已知感兴趣信号(SOI)的功率和转向矢量的情况下,有波束形成器可以同时满足MMSE和MSINR标准,但当无法获得准确的转向矢量时,这就不再成立了。为了考虑转向矢量误差,一个有意义的方法是将实际转向矢量建模为随机的。本文证明了后一种情况下,MMSE和MSINR准则不能同时得到。我们研究了MSE-SINR平面的可实现区域,并提出了一种新的自适应波束形成器,该波束形成器可以在该区域的边界上获得工作点的边界,从而在MSINR和MMSE标准之间提供最佳的性能权衡。结果表明,在随机转向矢量的情况下,可以同时满足最大误差和最小信噪比准则,并提出了一种同时满足这两个准则的自适应波束形成器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance tradeoffs among beamforming approaches
In this paper, three main criteria for the adaptive beamformer design are discussed: maximal signal-to-interference-plus-noise ratio (MSINR), minimal mean-squared error (MMSE), and minimal least-square error (MLSE). Although in the case of exactly known power and steering vector of the signal-of-interest (SOI), there are beamformers that can simultaneously meet the MMSE and MSINR criteria, this is no longer true when the exact knowledge of the steering vector is unavailable. To account for steering vector errors, a meaningful approach is to model the actual steering vector as random. In this paper, it is shown that in the latter case, the MMSE and MSINR criteria can not be simultaneously attained. We study the achievable region in the MSE-SINR plane and propose a new adaptive beamformer that can attain a frontier of operating points on the boundary of this region and, therefore, provide an optimal performance tradeoff among the MSINR and MMSE criteria. It is also shown that in the random steering vector case, the MLSE and MSINR criteria are simultaneously achievable and a new adaptive beamformer is proposed that satisfies both these criteria.
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