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Robust adaptive matched-field localization based on a subspace projection distance estimator

机译:基于子空间投影距离估计器的鲁棒自适应匹配场定位

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The matched field localization algorithm in the presence of uncertainties in the ocean environment based on the replica field noise subspaces perturbation constraints is presented. In each searching grid, the environmental parameters are randomly sampled and the replica field vectors are computed, the replica field covariance matrix is formed with these replica field vectors and the eigenvalue decomposition (EVD) is performed. Using eigenvectors with relatively small eigenvalues, the constraint matrix is obtained. The same process is performed for covariance matrix of the measured data, and the eigenvector with the largest eigenvalue is used as the signal vector. The localization ambiguity surfaces are obtained with the constraint matrix and the signal vector. With defining a probability of correct localization (PCL) and Peak-to-Background Ratios(PBR), the performance of the suggested algorithm is researched for different environmental perturbation and constraint matrix dimension using the simulation data, which are derived from MFP workshop held in 1993 at the Naval Research Laboratory(NRL), and the experimental data, which are derived from the Mediterranean Sea. The Results show that the suggested algorithm is robust.
机译:呈现了基于复制场噪声子空间扰动约束的海洋环境中存在不确定性的匹配现场定位算法。在每个搜索网格中,环境参数是随机采样的,并且计算复制场向量,复制场协方差矩阵由这些副本场向量形成,并且执行特征值分解(EVD)。使用具有相对较小的特征值的特征向量,获得约束矩阵。对测量数据的协方差矩阵执行相同的过程,并且使用具有最大特征值的特征向量作为信号矢量。通过约束矩阵和信号矢量获得定位模糊的表面。通过定义正确定位(PCL)和峰背景比(PBR)的概率,使用仿真数据研究了建议算法的性能,从而源自举行的MFP车间的模拟数据1993年在海军研究实验室(NRL),以及来自地中海的实验数据。结果表明,建议的算法是强大的。

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