Pisarenko harmonic decomposition
Encyclopedia
Pisarenko harmonic decomposition, also referred to as Pisarenko's method, is a method of frequency estimation
Frequency estimation
Frequency estimation is the process of estimating the complex frequency components of a signal in the presence of noise. The most common methods involve identifying the noise subspace to extract these components...

 . This method assumes that a signal, , consists of complex exponentials in the presence of white noise. Because the number of complex exponentials must be known a priori, it is somewhat limited in its usefulness.

Pisarenko's method also assumes that values of the autocorrelation matrix are either known or estimated. Hence, given the autocorrelation matrix, the dimension of the noise subspace is equal to one and is spanned by the eigenvector corresponding to the minimum eigenvalue. This eigenvector is orthogonal to each of the signal vectors.

The frequency estimates may be determined by setting the frequencies equal to the angles of the roots of the eigenfilter


or the location of the peaks in the frequency estimation function
,

where is the noise eigenvector and
.

History

Vladimir Fedorovich Pisarenko originated this method in 1973 while examining the problem of estimating the frequencies of complex signals in white noise. He found that the frequencies could be derived from the eigenvector corresponding to the minimum eigenvalue of the autocorrelation matrix.
The source of this article is wikipedia, the free encyclopedia.  The text of this article is licensed under the GFDL.
 
x
OK