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A bound on mean-square estimation error with background parameter mismatch

机译:背景参数不匹配的均方估计误差的界

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摘要

In typical parameter estimation problems, the signal observation is a function of the parameter set to be estimated as well as some background (environmental/system) parameters assumed known. The assumed background could differ from the true one, leading to biased estimates even at high signal-to-noise ratio (SNR). To analyze this background mismatch problem, a Ziv-Zakai-type lower bound on the mean-square error (MSE) is developed based on the mismatched likelihood ratio test (MLRT). At high SNR, the bound incorporates the increase in MSE due to estimation bias; at low SNR, it includes the threshold effect due to estimation ambiguity. The kernel of the bound's evaluation is the error probability associated with the MLRT. A closed-form expression for this error probability is derived under a random signal model typical of the bearing estimation/passive source localization problem. The mismatch is then analyzed in terms of the related ambiguity functions. Examples of bearing estimation with system (array shape) mismatch demonstrate that the developed bound describes the simulations of the maximum-likelihood estimate well, including the sidelobe-introduced threshold behavior and the bias at high SNR.
机译:在典型的参数估计问题中,信号观测值是要估计的参数集以及假定已知的某些背景(环境/系统)参数的函数。假定的背景可能与真实的背景不同,即使在高信噪比(SNR)的情况下,也会导致估计偏差。为了分析此背景不匹配问题,基于不匹配似然比检验(MLRT)开发了均方误差(MSE)的Ziv-Zakai型下界。在高SNR时,由于估计偏差,边界会合并MSE的增加;在低SNR时,它包括由于估计歧义引起的阈值效应。边界评估的核心是与MLRT相关的错误概率。在典型的方位角估计/被动源定位问题的随机信号模型下,得出此误差概率的封闭式表达式。然后根据相关的歧义函数分析失配。系统(阵列形状)不匹配的方位角估计示例表明,开发的边界很好地描述了最大似然估计的模拟,包括旁瓣引入的阈值行为和高SNR时的偏差。

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