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Capon Algorithm Mean-Squared Error Threshold SNR Prediction and Probability of Resolution

机译:Capon算法均方误差阈值SNR预测和分辨率的可能性

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摘要

Below a specific threshold signal-to-noise ratio (SNR), the mean-squared error (MSE) performance of signal parameter estimates derived from the Capon algorithm degrades swiftly. Prediction of this threshold SNR point is of practical significance for robust system design and analysis. The exact pairwise error probabilities for the Capon (and Bartlett) algorithm, derived herein, are given by simple finite sums involving no numerical integration, include finite sample effects, and hold for an arbitrary colored data covariance. Via an adaptation of an interval error based method, these error probabilities, along with the local error MSE predictions of Vaidyanathan and Buckley, facilitate accurate prediction of the Capon threshold region MSE performance for an arbitrary number of well separated sources, circumventing the need for numerous Monte Carlo simulations. A large sample closed-form approximation for the Capon threshold SNR is provided for uniform linear arrays. A new, exact, two-point measure of the probability of resolution for the Capon algorithm, that includes the deleterious effects of signal model mismatch, is a serendipitous byproduct of this analysis that predicts the SNRs required for closely spaced sources to be mutually resolvable by the Capon algorithm. Last, a general strategy is provided for obtaining accurate MSE predictions that account for signal model mismatch.
机译:在特定阈值信噪比(SNR)以下,从Capon算法得出的信号参数估计值的均方误差(MSE)性能迅速下降。阈值SNR点的预测对于稳健的系统设计和分析具有实际意义。本文得出的Capon(和Bartlett)算法的精确成对错误概率由不涉及数值积分的简单有限和给出,包括有限样本效应,并保持任意彩色数据协方差。通过改编基于间隔误差的方法,这些误差概率以及Vaidyanathan和Buckley的局部误差MSE预测,有助于准确预测任意数量的良好分离源的Capon阈值区域MSE性能,从而避免了对众多误差源的需求。蒙特卡洛模拟。为均匀线性阵列提供了Capon阈值SNR的大样本闭合形式近似值。 Capon算法分辨率的一种新的精确的两点测量方法,其中包括信号模型失配的有害影响,是该分析的一个偶然产物,它预测了小间距源可以相互解决的信噪比。 Capon算法。最后,提供了一种通用策略,用于获得可解释信号模型不匹配的准确MSE预测。

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