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首页> 外文期刊>IEEE Transactions on Signal Processing >Direction finding in partly calibrated sensor arrays composed of multiple subarrays
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Direction finding in partly calibrated sensor arrays composed of multiple subarrays

机译:由多个子阵列组成的部分校准的传感器阵列中的测向

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We consider the direction-finding problem in partly calibrated arrays composed of several calibrated and identically oriented (but possibly nonidentical) subarrays that are displaced by unknown (and possibly time-varying) vector translations. A new search-free eigenstructure-based direction-finding approach is proposed for such class of sensor arrays. It is referred to as the rank-reduction (RARE) estimator and enjoys simple implementation that entails computing the eigendecomposition of the sample array covariance matrix and polynomial rooting. Closed-form expressions for the deterministic Cramer-Rao bounds (CRBs) on direction-of-arrival (DOA) estimation for the considered class of sensor arrays are derived. Comparison of these expressions with simulation results show that the finite-sample performance of RARE algorithms in both time-invariant and time-varying array cases is close to the corresponding bounds. Moreover, comparisons of the derived CRBs with the well-known bounds for the fully calibrated time-invariant array case help to discover several interesting properties of DOA estimation in partly calibrated and time-varying arrays.
机译:我们考虑部分校准的阵列中的测向问题,该阵列由几个校准且方向相同(但可能不相同)的子阵列组成,这些子阵列被未知(且可能随时间变化)的向量平移取代。针对此类传感器阵列,提出了一种新的基于特征本征的无搜索新方法。它被称为秩减少(RARE)估计器,并且享受简单的实现,该实现需要计算样本数组协方差矩阵的特征分解和多项式求根。得出有关传感器阵列类别的到达方向(DOA)估计中确定性Cramer-Rao边界(CRB)的闭式表达式。这些表达式与仿真结果的比较表明,在时不变和时变阵列情况下,RARE算法的有限样本性能都接近相应的界限。此外,对于完全校准的时不变阵列情况,将导出的CRB与众所周知的界限进行比较有助于发现部分校准且随时间变化的阵列中DOA估计的一些有趣特性。

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