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Noncausal 2-D spectrum estimation for direction finding

机译:非因果二维频谱估计,用于测向

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摘要

A two-dimensional noncausal autoregressive (NCAR) plus additive noise model-based spectrum estimation method is presented for planar array data typical of signals encountered in array processing applications. Since the likelihood function for NCAR plus noise data is nonlinear in the model parameters and is further complicated by the unknown variance of the additive noise, computationally intensive gradient search algorithms are required for computing the estimates. If a doubly periodic lattice is assumed, the complexity of the approximate maximum likelihood (ML) equation is significantly reduced without destroying the theoretical asymptotic properties of the estimates and degrading the observed accuracy of the estimated spectra. Initial conditions for starting the approximate ML computation are suggested. Experimental results that can be used to evaluate the signal-plus-noise approach and compare its performance to those of signal-only methods are presented for Gaussian and simulated planar array data. Statistics of estimated spectrum parameters are given, and estimated spectra for signals with close spatial frequencies are shown. The approximate ML parameter estimate's asymptotic properties, such as consistency and normality, are established, and lower bounds for the estimate's errors are derived, assuming that the data are Gaussian.
机译:提出了一种二维非因果自回归(NCAR)加基于加性噪声模型的频谱估计方法,用于处理阵列处理应用中典型信号的平面阵列数据。由于NCAR加噪声数据的似然函数在模型参数中是非线性的,并且由于加性噪声的未知方差而变得更加复杂,因此需要计算量大的梯度搜索算法来计算估计值。如果假定为双周期晶格,则在不破坏估计值的理论渐近性质且不影响估计光谱的观测精度的情况下,可以大大降低近似最大似然(ML)方程的复杂度。建议开始近似ML计算的初始条件。针对高斯和模拟平面阵列数据,提供了可用于评估信号加噪声方法并将其性能与仅信号方法进行比较的实验结果。给出了估计频谱参数的统计信息,并显示了具有接近空间频率的信号的估计频谱。建立近似ML参数估计的渐近性质,如一致性和正态性,并假设数据为高斯,则得出估计误差的下界。

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