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Optimal Number of Measurements in a Linear System With Quadratically Decreasing SNR

机译:SNR二次下降的线性系统中的最佳测量次数

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摘要

We consider the design of a linear sensing system with a fixed energy budget assuming that the sampling noise is the dominant noise source. The energy constraint implies that the signal energy per measurement decreases linearly with the number of measurements. When the maximum sampling rate of the sampling circuit is chosen to match the designed sampling rate, the assumption on the noise implies that its variance increases approximately linearly with the sampling rate (number of measurements). Therefore, the overall SNR per measurement decreases quadratically in the number of measurements. Our analysis shows that, in this setting there is an optimal number of measurements. This is in contrast to the standard case, where noise variance remains unchanged with sampling rate, in which case more measurements imply better performance. Our results are based on a state evolution technique of the well-known approximate message passing algorithm. We consider both the sparse (e.g. Bernoulli-Gaussian and least-favorable distributions) and the non-sparse (e.g. Gaussian distribution) settings in both the real and complex domains. Numerical results corroborate our analysis.
机译:考虑采样噪声是主要噪声源,我们考虑具有固定能量预算的线性传感系统的设计。能量约束意味着每次测量的信号能量会随测量次数线性减少。当选择采样电路的最大采样率以匹配设计的采样率时,对噪声的假设意味着其方差随采样率(测量次数)近似线性增加。因此,每次测量的总SNR在测量数量上呈二次方下降。我们的分析表明,在这种设置下,存在最佳的测量次数。这与标准情况相反,在标准情况下,噪声方差随采样率保持不变,在这种情况下,更多的测量意味着更好的性能。我们的结果基于众所周知的近似消息传递算法的状态演化技术。我们同时考虑了实域和复域中的稀疏(例如,Bernoulli-Gaussian分布和最不利分布)和非稀疏(例如,Gaussian分布)设置。数值结果证实了我们的分析。

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