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首页> 外文期刊>IEEE Transactions on Signal Processing >Antithetic Dithered 1-Bit Massive MIMO Architecture: Efficient Channel Estimation via Parameter Expansion and PML
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Antithetic Dithered 1-Bit Massive MIMO Architecture: Efficient Channel Estimation via Parameter Expansion and PML

机译:邻近抖动的1位大规模MIMO架构:通过参数扩展和PML有效信道估计

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摘要

Drawing from a recent work on negative noise correlation in quantization and statistics, we propose a novel antithetic dithered 1-bit massive MIMO receiver architecture and develop efficient channel estimation algorithms that exploit the natural and induced negative correlated noise in the system. We illustrate that both linear and nonlinear estimators can benefit from negative correlation. We provide a rigorous analysis of a low-complexity nonlinear estimator for channel estimation. In the process, we developed a generalized statistical framework to analyze correlated quantized output arising from this generalized linear model. We formalized the approximation technique used in this work as a special case of the more general pseudo maximum likelihood method. A parameter expanded expectation maximization (PX-EM) algorithm applied to such a system is shown to exhibit fast convergence, possessing an upper hounded convergence guarantee and a graceful monotonic estimation performance over a large SNR range. Stochastic Gibbs sampling algorithms are constructed to evaluate truncated multivariate normal distributions and to implement an asymptotically exact data augmentation algorithm for comparison.
机译:从最近的量化和统计中的负噪声相关性的绘制,我们提出了一种新颖的近似抖动1位大规模MIMO接收器架构,并开发高效信道估计算法,该算法利用系统中的自然和诱导的负相关噪声。我们说明了线性和非线性估计器可以从负相关中受益。我们对信道估计的低复杂性非线性估算器提供了严格的分析。在该过程中,我们开发了一种广义统计框架,用于分析来自该广义线性模型引起的相关量化输出。我们正式化了本作工作中使用的近似技术作为更通用的伪最大似然方法的特殊情况。示出了应用于这种系统的参数扩展预期最大化(PX-EM)算法,以表现出快速收敛,具有在大的SNR范围内具有上部追随的收敛保证和优雅的单调估计性能。随机GIBBS采样算法构造成评估截断的多变量正常分布,并实现渐近精确的数据增强算法进行比较。

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