Home|Q & A|Sitemap|Contact|
 
  Home
About CAS CAS Institutes Newsroom Administration Join Us Science & Technology
Scientists International Cooperation Education & Training Publications Resources Archive Papers
 
  Location : Home>Science & Technology>Basic Research>Research Progress
  Basic Research
 
Generalized Framework for Nonparametric Coherence Function Estimation
2010-07-07

Several coherence function (CF) estimators have been proposed owing to their wide use in various kinds of field, such as signal detection, signal estimation and system identification. For short data records, the CF is often inaccurate because of a large variance. So, researchers all over the world tried to propose numerous approaches to reduce its variance.

Most of the existing methods are data-independent and often have to obtain smaller variance at the expense of introducing the wider main lobe. To solve this problem, researchers of Key Laboratory of Noise and Vibration Research, Institute of Acoustics, Chinese Academy of Sciences carried out a series of studies and introduced a new class of nonparametric coherence function (NPCF) estimators.

By introducing a nonlinear function of covariance matrix, the researchers present a generalized framework for NPCF estimation and also propose a novel low-variance and high-resolution CF estimator named after minimum variance multitaper CF (MVMT-CF). Moreover, this framework helps to understand the properties of several existing NPCF estimators more easily, including the single- and multi-window based approaches. Finally, tested by the practical experiments, the researchers conclude that by properly choosing the parameters of the generalized class of NPCF estimators, a good tradeoff between spectral resolution and variance can be achieved for different types of signals.

About CAS   CAS Institutes   Newsroom   Administration   Jobs   Science & Technology   Scientists   International Cooperation    Education & Training   Publications   Resources   Archive
Copyright © 2002 - 2012 Chinese Academy of Sciences  Email: cas_en@stimes.cn
Add: 52 Sanlihe Rd., Beijing China   Postcode: 100864
Tel: 86 10 68597289  Fax: 86 10 68512458