This dissertation uses polynomial chaos theory to address recursive parameter estimation in state space systems. It joins the recursive estimators with base excitation modeling concepts to determine the mass of off road vehicles, and successfully demonstrates the methods on actual vehicle data. The recursive, polynomial chaos based estimators of this dissertation can be applied to linear and nonlinear state space systems having linear time invariant output equations. Unlike regressor model based estimators, this dissertation’s estimators can be applied directly to state space systems, and in some situations, the proposed methods can be more easily tuned than state filtering methods. The new estimation techniques contribute to the solutio...
PDFTech ReportMAUTC-2010-02DTRT07-G-0003AlgorithmsLithium batteriesReal time informationDiagnostic t...
Abstract: Good estimates of vehicle mass and road grade are important in automation of heavy duty ve...
This thesis describes development of a real-time-implementable algorithm for simultaneous estimation...
This dissertation uses polynomial chaos theory to address recursive parameter estimation in state sp...
ii Acknowledgments I’d like to acknowledge and express gratitude to the people that have inspired an...
This is the second part of a two-part article. In the first part, a new computational approach for p...
Parameter estimation method using an extended Kalman Filter Fast parameter estimation is a non-trivi...
This Master’s thesis describes a method for real-time estimation of a vehicle’s mass for automobiles...
This work provides novel robust and regularized algorithms for parameter estimation with application...
This is the first part of a two-part article. A new computational approach for parameter estimation...
Vehicle characteristics have a significant impact on handling, stability, and rollover propensity. T...
The gross vehicle mass (GVM) and the road grade are two factors that both have a substantial influen...
This study presents a vehicle mass estimation system based on adaptive extended Kalman filtering wit...
The extent of vibrations experienced by a vehicle driving over natural terrain defines its ride qual...
As active chassis controllers are becoming increasingly complex and sophisticated, the performance o...
PDFTech ReportMAUTC-2010-02DTRT07-G-0003AlgorithmsLithium batteriesReal time informationDiagnostic t...
Abstract: Good estimates of vehicle mass and road grade are important in automation of heavy duty ve...
This thesis describes development of a real-time-implementable algorithm for simultaneous estimation...
This dissertation uses polynomial chaos theory to address recursive parameter estimation in state sp...
ii Acknowledgments I’d like to acknowledge and express gratitude to the people that have inspired an...
This is the second part of a two-part article. In the first part, a new computational approach for p...
Parameter estimation method using an extended Kalman Filter Fast parameter estimation is a non-trivi...
This Master’s thesis describes a method for real-time estimation of a vehicle’s mass for automobiles...
This work provides novel robust and regularized algorithms for parameter estimation with application...
This is the first part of a two-part article. A new computational approach for parameter estimation...
Vehicle characteristics have a significant impact on handling, stability, and rollover propensity. T...
The gross vehicle mass (GVM) and the road grade are two factors that both have a substantial influen...
This study presents a vehicle mass estimation system based on adaptive extended Kalman filtering wit...
The extent of vibrations experienced by a vehicle driving over natural terrain defines its ride qual...
As active chassis controllers are becoming increasingly complex and sophisticated, the performance o...
PDFTech ReportMAUTC-2010-02DTRT07-G-0003AlgorithmsLithium batteriesReal time informationDiagnostic t...
Abstract: Good estimates of vehicle mass and road grade are important in automation of heavy duty ve...
This thesis describes development of a real-time-implementable algorithm for simultaneous estimation...