Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6957237 | Signal Processing | 2018 | 13 Pages |
Abstract
The method of partial least squares (PLS) has become a preferred tool for ill-posed linear estimation problems in the real domain, both in the regression and correlation analysis context. However, many modern applications involve complex-valued data (e.g. smart grid, sensor networks) and would benefit from corresponding well-posed latent variable regression analyses. To this end, we propose a PLS algorithm for physically meaningful latent subspace regression with complex-valued data. For rigour, this is achieved by taking into account full complex second-order augmented statistics to produce a robust widely linear estimator for general improper complex-valued data which may be highly correlated or colinear. The so-derived widely linear complex PLS (WL-CPLS) is shown to allow for effective joint latent variable decomposition of complex-valued data, while accounting for computational intractabilities in the calculation of a generalised inverse. This makes it possible to also determine the joint-subspace identified within the proposed algorithm, when applied to univariate outputs. The analysis is supported through both simulations on synthetic data and a real-world application of frequency estimation in unbalanced power grids. Finally, the ability of WL-CPLS to identify physically meaningful components is demonstrated through simultaneous complex covariance matrix diagonalisation.
Keywords
Related Topics
Physical Sciences and Engineering
Computer Science
Signal Processing
Authors
Alexander E. Stott, Sithan Kanna, Danilo P. Mandic,