Performance of estimated Doppler velocity by maximum likelihood based on covariance matrix

Yanwei Wu, Pan Guo*, Siying Chen, Yinchao Zhang, He Chen

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)

Abstract

This paper investigates the efficient estimator of echo data processing to clean the spectrum through the denoising process. The maximum likelihood based on covariance matrix (MLCM) method without a priori knowledge of the spectral width is proposed for denoising the atmospheric signal. This method is applied to simulated and actual data to estimate the spectrum parameters. The probability density function of estimators as an empirical model is used to describe the performance of the estimators. The MLCM method is suggested to be an alternate estimator to precisely obtain the essential spectrum parameters with a lower standard deviation of good estimators and a larger detected range, which is improved by 20%, compared with the maximum likelihood method with a priori knowledge of the spectral width. Moreover, it can reduce the large velocity volatility and the uncertainties of the spectral width in the low signal-To-noise ratio regime. The MLCM method can be applied to obtain the whole wind profiling by the coherent Doppler lidar.

Original languageEnglish
Article number096112
JournalOptical Engineering
Volume55
Issue number9
DOIs
Publication statusPublished - 1 Sept 2016

Keywords

  • covariance matrix
  • denoising
  • maximum likelihood
  • probability density function
  • spectral estimation

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