Statistical Model of Combining Efficiency for Digital Phase Alignment in Multi-Aperture Free-Space Coherent Optical Receivers

Jing-song Xiang, Xinhao Lyu
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Abstract

In order to eliminate the impact of atmospheric turbulence on the performance of free-space optical (FSO) communication systems, the multi-aperture receiving technique is wildly recognized as a powerful fading-mitigation technology. As one of the essential technologies in the multi-aperture receiver, digital coherent beam combining relies on the digital phase alignment algorithm to align the different versions of signals in phase. In this paper, the statistical model of combining efficiency for digital phase alignment is derived in multi-aperture FSO receivers by considering the phase alignment errors at each receiving aperture. It can be expressed as a linear function of chi-square distribution by Satterthwaite approximation. Based on this statistical model, we derive the exact expressions of the mean, variance, and probability density function of the combining efficiency. The simulation results show that this model is valuable and practical under the condition of the different number of aperture and signal-to-noise ratio combinations. Combining efficiency is also compared for equal gain combining diversity FSO systems with or without considering aperture selection.
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多孔径自由空间相干光接收机数字相位对准组合效率统计模型
为了消除大气湍流对自由空间光学通信系统性能的影响,多孔径接收技术被广泛认为是一种有效的消噪技术。数字相干波束合并是多孔径接收机的关键技术之一,依靠数字相位对准算法对不同版本的信号进行相位对准。考虑各接收孔径处的相位对准误差,推导了多孔径FSO接收机数字相位对准组合效率的统计模型。它可以用Satterthwaite近似表示为卡方分布的线性函数。在此统计模型的基础上,导出了组合效率的均值、方差和概率密度函数的精确表达式。仿真结果表明,在不同孔径数和信噪比组合条件下,该模型是有价值的和实用的。并比较了考虑和不考虑孔径选择的等增益组合分集FSO系统的组合效率。
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