Non-efficiency of the non-linear least squares estimator of polynomial phase signals in colored noise

M. Ghogho, A. Swami
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引用次数: 6

Abstract

The focus of this paper is on the estimation of the parameters of a constant amplitude polynomial phase signal (PPS) observed in circularly symmetric colored complex Gaussian noise. We derive a closed-form expression for the large-sample Cramer-Rao bound and show that it depends upon an average SNR defined in the frequency domain (as opposed to the time-domain averaged SNR, i.e., the variance). The non-linear least squares estimator (NLLSE) is derived, and its performance studied. We show that the NLLSE is not asymptotically efficient. This is in contrast with the case of harmonic signals in colored noise. The asymptotic relative efficiency (ARE) of the NLLSE is studied both analytically and through simulations. It is seen that the larger the bandwidth of the noise, the larger the ARE. Although the NLLSE is not efficient, it provides a good compromise between computational complexity and estimation accuracy.
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彩色噪声中多项式相位信号非线性最小二乘估计的非有效性
本文研究了在圆对称彩色复高斯噪声中观测到的等幅多项式相位信号的参数估计问题。我们推导了大样本Cramer-Rao界的封闭表达式,并表明它取决于在频域中定义的平均信噪比(而不是时域平均信噪比,即方差)。推导了非线性最小二乘估计,并对其性能进行了研究。我们证明了NLLSE不是渐近有效的。这与彩色噪声中谐波信号的情况正好相反。通过分析和仿真研究了NLLSE的渐近相对效率。可见,噪声的带宽越大,则ARE越大。虽然NLLSE的效率不高,但它在计算复杂度和估计精度之间提供了一个很好的折衷。
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