各种自回归谱估计方法的性能分析及其实时实现

D. Chakraborty, S. Sanyal
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引用次数: 6

摘要

近年来,频谱估计已成为研究人员感兴趣的课题。非参数方法通常不知道所观察的过程。它们也有严重的缺点,如旁瓣泄漏和不切实际的窗口方法。第二种方法被称为参数方法,克服了这些缺点。在参数化方法中,首先根据过程如何产生的先验知识选择合适的模型,然后从观测数据中估计参数。计算参数后,估计功率谱。本文对谱估计的自回归方法进行了深入的研究。我们在RICE大学无线开放存取研究平台(WARP)的基于FPGA的无线电原型板上进行仿真和实时实现。各种算法,如Yule-Walker, Burg,协方差和修正协方差,已经研究了实时估计的统计参数,它们在AR技术中被描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance analysis of different autoregressive methods for spectrum estimation along with their real time implementations
Recently Spectrum estimation has become an interesting topic for the researchers. Non-parametric methods generally do not have any knowledge about the process being observed. They also suffer from serious drawbacks like sidelobe leakages and unrealistic windowing methods. The second approach being known as parametric method overcomes these shortcomings. In parametric approach initially a suitable model is selected based on apriori knowledge about how the process is generated and then followed by estimating the parameters from the observed data. After calculation of parameters the power spectrum is estimated. In this paper we have studied thoroughly the Autoregressive method of spectrum estimation. We perform both simulation as well as real time implementations on FPGA based radio prototype board known as Wireless Open Access Research Platform (WARP) of RICE University. Various algorithms like Yule-Walker, Burg, Covariance and Modified Covariance have been studied with real time estimation of the statistical parameters by which they are described in AR technique.
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