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首页> 外文期刊>IEEE Transactions on Signal Processing >Maximum Likelihood Direction-of-Arrival Estimation in Unknown Noise Fields Using Sparse Sensor Arrays
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Maximum Likelihood Direction-of-Arrival Estimation in Unknown Noise Fields Using Sparse Sensor Arrays

机译:使用稀疏传感器阵列的未知噪声场中的最大似然到达方向估计

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We address the problem of maximum likelihood (ML) direction-of-arrival (DOA) estimation in unknown spatially correlated noise fields using sparse sensor arrays composed of multiple widely separated subarrays. In such arrays, intersubarray spacings are substantially larger than the signal wavelength, and therefore, sensor noises can be assumed to be uncorrelated between different subarrays. This leads to a block-diagonal structure of the noise covariance matrix which enables a substantial reduction of the number of nuisance noise parameters and ensures the identifiability of the underlying DOA estimation problem. A new deterministic ML DOA estimator is derived for this class of sparse sensor arrays. The proposed approach concentrates the ML estimation problem with respect to all nuisance parameters. In contrast to the analytic concentration used in conventional ML techniques, the implementation of the proposed estimator is based on an iterative procedure, which includes a stepwise concentration of the log-likelihood (LL) function. The proposed algorithm is shown to have a straightforward extension to the case of uncalibrated arrays with unknown sensor gains and phases. It is free of any further structural constraints or parametric model restrictions that are usually imposed on the noise covariance matrix and received signals in most existing ML-based approaches to DOA estimation in spatially correlated noise.
机译:我们解决了使用稀疏传感器阵列(由多个广泛分离的子阵列组成)在未知空间相关噪声场中最大似然(ML)到达方向(DOA)估计的问题。在这样的阵列中,子阵列之间的间隔实质上大于信号波长,因此,可以认为传感器噪声在不同子阵列之间是不相关的。这导致了噪声协方差矩阵的块对角线结构,该结构使对噪声参数的数量大大减少,并确保了潜在的DOA估计问题的可识别性。针对此类稀疏传感器阵列,得出了新的确定性ML DOA估计器。所提出的方法针对所有讨厌参数集中了ML估计问题。与常规ML技术中使用的分析集中度相反,所提出的估计器的实现基于迭代过程,该过程包括对数似然(LL)函数的逐步集中。所示算法对具有未知传感器增益和相位的未经校准的阵列具有直接的扩展性。它没有任何其他通常在噪声协方差矩阵和接收到的信号上施加的结构限制或参数模型限制,在大多数现有的基于ML的空间相关噪声DOA估计方法中。

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