Cookies Policy
The website need some cookies and similar means to function. If you permit us, we will use those means to collect data on your visits for aggregated statistics to improve our service. Find out More
Accept Reject
  • Menu
Publications

Publications by Paulo Santos

2012

Parametric modeling in estimating abnormal intra-QRS potentials in signal-averaged electrocardiograms: A subspace identification approach

Authors
Ramos, JA; Lopes Dos Santos, PJ;

Publication
IFAC Proceedings Volumes (IFAC-PapersOnline)

Abstract
This paper addresses the detection and classification of low amplitude signals within the QRS complex of the signal-averaged electrocardiogram. Linear and bilinear Kalman filter models are fitted using the subspace system identification family of algorithms. If the residuals from the models are a white noise process, then anything that cannot be modeled with the state-space models will show up in the residuals as low amplitude signal + noise. Diagnostic tests and analysis on the residuals will then lead to detection and classification of abnormalities in the intra-QRS complex. The end result is a diagnostic tool to aid the physician. © 2012 IFAC.

2005

Identification of bilinear systems using an iterative deterministic-stochastic subspace approach

Authors
dos Santos, PL; Ramos, JA; de Carvalho, JLM;

Publication
2005 44th IEEE Conference on Decision and Control & European Control Conference, Vols 1-8

Abstract
In this paper we introduce a new identification algorithm for MIMO bilinear systems driven by white noise inputs. The new algorithm is based on a convergent sequence of linear deterministic-stochastic state space approximations, thus considered a Picard based method. The key to the algorithm is the fact that the bilinear terms behave like white noise processes. Using a linear Kalman filter, the bilinear terms can be estimated and combined with the system inputs at each iteration, leading to a linear system which can be identified with a linear-deterministic subspace algorithm such as MOESP, N4SID, or CVA. Furthermore, the model parameters obtained with the new algorithm converge to those of a bilinear model. Finally, the dimensions of the data matrices are comparable to those of a linear subspace algorithm, thus avoiding the curse of dimensionality.

2009

Identification of Bilinear Systems With White Noise Inputs: An Iterative Deterministic-Stochastic Subspace Approach

Authors
dos Santos, PL; Ramos, JA; Martins de Carvalho, JLM;

Publication
IEEE TRANSACTIONS ON CONTROL SYSTEMS TECHNOLOGY

Abstract
In this technical brief, a new subspace state space system identification algorithm for multi-input multi-output bilinear systems driven by white noise inputs is introduced. The new algorithm is based on a uniformly convergent Picard sequence of linear deterministic-stochastic state space subsystems which are easily identifiable by any linear deterministic-stochastic subspace algorithm such as MOESP, N4SID, CVA, or CCA. The key to the proposed algorithm is the fact that the bilinear term is a second-order white noise process. Using a standard linear Kalman filter model, the bilinear term can be estimated and combined with the system inputs at each iteration, thus leading to a linear system with extended inputs of dimension m(n + 1), where n is the system order and m is the dimension of the inputs. It is also shown that the model parameters obtained with the new algorithm converge to those of the true bilinear model. Moreover, the proposed algorithm has the same consistency conditions as the linear subspace identification algorithms when i -> infinity, where i is the number of block rows in the past/future block Hankel data matrices. Typical bilinear subspace identification algorithms available in the literature cannot handle large values of i, thus leading to biased parameter estimates. Unlike existing bilinear subspace identification algorithms whose row dimensions in the data matrices grow exponentially, and hence suffer from the "curse of dimensionality," in the proposed algorithm the dimensions of the data matrices are comparable to those of a linear subspace identification algorithm. A case study is presented with data from a heat exchanger experiment.

2011

BACK MATTER

Authors
Santos, PLd; Perdicoúlis, TPA; Novara, C; Ramos, JA; Rivera, DE;

Publication
Linear Parameter-Varying System Identification - New Developments and Trends

Abstract

2011

Introduction

Authors
Novara, C; Santos, PLd; Perdicoúlis, TA; Ramos, JA; Rivera, DE;

Publication
Linear Parameter-Varying System Identification - New Developments and Trends

Abstract

2011

Linear Parameter-Varying System Identification

Authors
Lopes dos Santos, P; Azevedo Perdicoúlis, TP; Novara, C; Ramos, JA; Rivera, DE;

Publication

Abstract

  • 5
  • 14