Title :
Optimal reduced-rank estimation and filtering
Author :
Hua, Yingbo ; Nikpour, Maziar ; Stoica, Petre
Author_Institution :
Dept. of Electr. & Electron. Eng., Hong Kong Univ., China
fDate :
3/1/2001 12:00:00 AM
Abstract :
This paper provides a unified view of, and a further insight into, a class of optimal reduced-rank estimators and filters. An alternating power (AP) method for computing the optimal reduced-rank estimators and filters is derived and analyzed. The AP method is a generalization of the conventional power method for subspace computation, which is shown to be globally and exponentially convergent under weak conditions. When the rank reduction is relatively large, the AP method is computationally more efficient than the conventional methods. The AP method is useful for adaptive computation of the canonical components of a desired reduced-rank estimate, which in turn facilitates the detection of a time-varying rank. The study shown in this paper is particularly useful for applications that involve a large number of sources and a large number of receivers, where rank reduction is either inherent in the multivariate system or required to reduce the model complexity and/or the computational load
Keywords :
computational complexity; convergence of numerical methods; filtering theory; optimisation; parameter estimation; singular value decomposition; SVD; adaptive computation; alternating power method; canonical components; computational load reduction; exponentially convergent method; globally convergent method; model complexity reduction; multivariate system; optimal filtering; optimal reduced-rank estimation; receivers; singular value decomposition; sources; subspace computation; time-varying rank detection; Delay estimation; Filtering; Maximum likelihood estimation; Multi-layer neural network; Neural networks; Power system modeling; Signal processing; Vectors; Wiener filter; Wireless communication;
Journal_Title :
Signal Processing, IEEE Transactions on