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Subspace-Constrained Array Response Estimation in the Presence of Model Errors

机译:模型错误存在的子空间约束阵列响应估计

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We present a novel solution to the problem of estimating the array response of the signal of interest (SOI) in case it is constrained to lie in a known subspace, aimed at coping with model errors in the known subspace. The solution is based on a novel formulation of the problem, targeted at matching the error-contaminated model-based signal subspace to its sampled-data counterpart. The solution turns out to minimize the angle between these two subspaces, which is intuitively very pleasing. We solve the problem for three different characterization of the spatial interference: (i) the spatial interference is known, (ii) the spatial interference is unknown, and (iii) the spatial interference is constrained to lie in a known subspace. We present a closed-form solution for the first case and iterative solutions for the other two cases. Based on these solutions, we derive the corresponding estimators for the SOI’s waveform and their signal-to-interference+noise ratio (SINR). Simulation results, demonstrating the superiority of the derived solutions over the corresponding deterministic maximum likelihood (DML) solutions, are included.
机译:我们向估计感兴趣信号的阵列响应(SOI)的问题提出了一种新的解决方案,以防它被限制为位于已知子空间中,旨在应对已知子空间中的模型误差。该解决方案基于对问题的新型制定,靶向匹配误差污染的基于模型的信号子空间到其采样数据对应物。解决方案证明,最小化这两个子空间之间的角度,这直观地非常令人愉悦。我们解决了三种不同表征的空间干扰的问题:(i)已知空间干扰,(ii)空间干扰未知,并且(iii)空间干扰被约束为位于已知子空间中。我们为另外两种情况提出了第一种案例和迭代解决方案的封闭式解决方案。基于这些解决方案,我们从SOI波形和信号到干扰+噪声比(SINR)获得相应的估计器。仿真结果,展示了在相应的确定性最大可能性(DML)解决方案上的衍生解决方案的优越性。

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