DocumentCode
1270951
Title
Pseudolinear estimation of fractionally integrated ARMA (ARFIMA) models with automotive application
Author
Fouskitakis, George N. ; Fassois, Spilios D.
Author_Institution
Dept. of Mech. & Aeronaut. Eng., Patras Univ., Greece
Volume
47
Issue
12
fYear
1999
fDate
12/1/1999 12:00:00 AM
Firstpage
3365
Lastpage
3380
Abstract
A novel pseudolinear method for the estimation of fractionally integrated ARMA (ARFIMA) models that are capable of representing combined long- and short-term dependency, is introduced. The method is based on the relationship of the AR/MA parameters and the coefficients of the fractional power operator binomial series expansion with the model´s inverse function. These lead to the formulation of a special-form regression problem that can be decomposed into a univariate nonlinear and a multivariate linear regression and may be thus tackled via a special pseudolinear procedure. This decomposition in turn leads to the elimination of the need for initial guess parameter values, drastic simplification in the detection and handling of potential local extrema problems, as well as computational simplicity. The method´s strong consistency is established, whereas its performance characteristics are assessed via Monte Carlo experiments and comparisons with the maximum likelihood method. The pseudolinear method is also used for the ARFIMA modeling and prediction of power consumption in an experimental automobile fully active suspension system, the consumption of which is shown to exhibit long-term dependency. A comparison with ARMA/ARIMA type modeling is also made, and the obtained ARFIMA models are shown to achieve improved predictive performance at a drastically reduced parametric complexity
Keywords
Monte Carlo methods; actuators; automobiles; autoregressive moving average processes; computerised control; hydraulic control equipment; inverse problems; parameter estimation; power consumption; prediction theory; series (mathematics); signal processing; statistical analysis; AR/MA parameters; ARFIMA models; Monte Carlo experiments; active suspension system; automotive application; coefficients; computational simplicity; computer-controlled hydraulic actuators; fractional power operator binomial series expansion; fractionally integrated ARMA models; inverse function; local extrema problems; long-term dependency; maximum likelihood method; multivariate linear regression; performance characteristics; pneumatic actuators; power consumption prediction; pseudolinear estimation; reduced parametric complexity; regression problem; short-term dependency; univariate nonlinear regression; Autocorrelation; Automotive applications; Autoregressive processes; Equations; Inverse problems; Linear regression; Monte Carlo methods; Polynomials; Power system modeling; Predictive models;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/78.806080
Filename
806080
Link To Document