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Kalman-based spatial domain forward-backward linear predictor forDOA estimation

机译:基于卡尔曼的空间域前后线性预测器用于DOA估计

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摘要

Since the data matrix of the forward-backward linear prediction (FBLP) in spatial domain is not a Toeplitz-Hankel structure, the well-developed fast FBLP in temporal domain cannot be straightforwardly applied to the directions-of-arrival (DOAs) estimation of radiating sources via an array of sensors. Moreover, the slow convergence of the least mean square (LMS)-based FBLP presented by Lee et al. (1990) limits its practical application in the DOAs estimation by a short data record. Therefore, this correspondence proposes a Kalman-based forward-backward linear predictor in spatial domain for DOAs estimation with rapid convergence rate. The convergence rate of the mean-square prediction error and the convergent behavior of the estimated weight vector in mean square are analyzed to show that the Kalman-based FBLP is superior to the Kalman-based one-directional prediction (forward or backward prediction) algorithms for a finite data record. Simulation results are provided to substantiate the analysis
机译:由于空间域中的前向后线性预测(FBLP)的数据矩阵不是Toeplitz-Hankel结构,因此在时间域中发展良好的快速FBLP无法直接应用于航路的到达方向(DOA)估计通过一系列传感器辐射源。此外,Lee等人提出的基于最小均方(LMS)的FBLP收敛缓慢。 (1990)通过一个短数据记录限制了它在DOA估计中的实际应用。因此,该对应关系提出了一种在空间域中基于卡尔曼的向前-向后线性预测器,用于具有快速收敛速率的DOA估计。分析了均方预测误差的收敛速度和均方估计权向量的收敛行为,表明基于卡尔曼的FBLP优于基于卡尔曼的单向预测(正向或反向预测)算法用于有限的数据记录。提供仿真结果以证实分析

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