DocumentCode :
56497
Title :
Recursive Estimation for Reduced-Order State-Space Models Using Polynomial Chaos Theory Applied to Vehicle Mass Estimation
Author :
Pence, Benjamin L. ; Fathy, Hosam K. ; Stein, Jeffrey L.
Author_Institution :
Ford Motor Co., Dearborn, MI, USA
Volume :
22
Issue :
1
fYear :
2014
fDate :
Jan. 2014
Firstpage :
224
Lastpage :
229
Abstract :
The main contribution of this paper is to present a recursive estimation/detection technique for reduced-order state-space systems. The recursive state and parameter estimator is built on the framework of polynomial chaos theory and maximum likelihood estimation. The estimator quantifies the reliability of its estimate in real-time by recursively calculating a signal-to-noise ratio. The signal-to-noise ratio (SNR) indicates how well the output of the reduced-order estimation model matches the actual system output. A detection algorithm makes decisions to trust or distrust the current estimate by comparing the current value of the SNR ratio against a threshold value. This paper applies the proposed techniques to estimate the sprung mass of an actual vehicle. It uses a reduced-order model to approximate the complex ride dynamics of the vehicle. Despite the modeling approximations and simplifications, the proposed technique is able to reliably estimate the sprung mass of the vehicle to within 10% of the true value.
Keywords :
automobiles; maximum likelihood estimation; parameter estimation; polynomials; reduced order systems; state estimation; state-space methods; vehicle dynamics; SNR; maximum likelihood estimation; parameter estimator; polynomial chaos theory; recursive detection technique; recursive estimation technique; reduced-order state-space models; signal-to-noise ratio; state estimator; threshold value; vehicle mass estimation; vehicle ride dynamics; Detection; estimation; polynomial chaos theory; reduced-order models; vehicle mass estimation;
fLanguage :
English
Journal_Title :
Control Systems Technology, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6536
Type :
jour
DOI :
10.1109/TCST.2013.2252349
Filename :
6515188
Link To Document :
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