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Performance of the stochastic MV-PURE estimator with explicit modeling of uncertainty

机译:具有不确定性显式建模的随机MV-PURE估计器的性能

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The stochastic MV-PURE estimator is a linear estimator for stochastic linear model that is highly robust to mismatches in model knowledge and which is specially designed for efficient estimation in noisy and ill-conditioned cases. To date, its properties were analyzed in the theoretical settings of perfect model knowledge and thus could not explain clearly the reason behind its superior performance compared to the Wiener filter observed in simulations in practical cases of imperfect model knowledge. In this paper we derive closed form expressions of the mean-square-error (MSE) of both Wiener filter and the stochastic MV-PURE estimator for the case of perturbed singular values of a model matrix in the linear model considered. These expressions provide in particular conditions under which the stochastic MV-PURE estimator achieves smaller MSE not only than Wiener filter, but also than its full-rank version, the minimum-variance distortionless (MVDR) estimator in such settings. We provide numerical simulations confirming the main theoretical results presented.
机译:随机MV-PURE估计器是用于随机线性模型的线性估计器,它对模型知识的失配具有很高的鲁棒性,并且特别设计用于在嘈杂和病态情况下进行有效估计。迄今为止,在完美模型知识的理论设置下对其性能进行了分析,因此,与在实际模型知识不完善的实际情况下在仿真中观察到的维纳滤波器相比,尚无法清楚地解释其性能优越的原因。在本文中,对于所考虑的线性模型中模型矩阵的奇异值受到扰动的情况,我们导出了维纳滤波器和随机MV-PURE估计器均方误差(MSE)的闭式表达式。这些表达式提供了特殊的条件,在这种情况下,随机MV-PURE估计器不仅达到比Wiener滤波器更小的MSE,而且比其满秩版本的最小方差无失真(MVDR)估计器更小。我们提供了数值模拟,证实了所给出的主要理论结果。

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