New Algorithms for Uncertainty Quantification and Nonlinear Estimation of Stochastic Dynamical Systems

New Algorithms for Uncertainty Quantification and Nonlinear Estimation of Stochastic Dynamical Systems
Author: Parikshit Dutta
Publisher:
Total Pages:
Release: 2012
Genre:
ISBN:

Download New Algorithms for Uncertainty Quantification and Nonlinear Estimation of Stochastic Dynamical Systems Book in PDF, Epub and Kindle

Recently there has been growing interest to characterize and reduce uncertainty in stochastic dynamical systems. This drive arises out of need to manage uncertainty in complex, high dimensional physical systems. Traditional techniques of uncertainty quantification (UQ) use local linearization of dynamics and assumes Gaussian probability evolution. But several difficulties arise when these UQ models are applied to real world problems, which, generally are nonlinear in nature. Hence, to improve performance, robust algorithms, which can work efficiently in a nonlinear non-Gaussian setting are desired. The main focus of this dissertation is to develop UQ algorithms for nonlinear systems, where uncertainty evolves in a non-Gaussian manner. The algorithms developed are then applied to state estimation of real-world systems. The first part of the dissertation focuses on using polynomial chaos (PC) for uncertainty propagation, and then achieving the estimation task by the use of higher order moment updates and Bayes rule. The second part mainly deals with Frobenius-Perron (FP) operator theory, how it can be used to propagate uncertainty in dynamical systems, and then using it to estimate states by the use of Bayesian update. Finally, a method to represent the process noise in a stochastic dynamical system using a nite term Karhunen-Loeve (KL) expansion is proposed. The uncertainty in the resulting approximated system is propagated using FP operator. The performance of the PC based estimation algorithms were compared with extended Kalman filter (EKF) and unscented Kalman filter (UKF), and the FP operator based techniques were compared with particle filters, when applied to a duffing oscillator system and hypersonic reentry of a vehicle in the atmosphere of Mars. It was found that the accuracy of the PC based estimators is higher than EKF or UKF and the FP operator based estimators were computationally superior to the particle filtering algorithms.


New Algorithms for Uncertainty Quantification and Nonlinear Estimation of Stochastic Dynamical Systems
Language: en
Pages:
Authors: Parikshit Dutta
Categories:
Type: BOOK - Published: 2012 - Publisher:

GET EBOOK

Recently there has been growing interest to characterize and reduce uncertainty in stochastic dynamical systems. This drive arises out of need to manage uncerta
Stochastic Methods for Modeling and Predicting Complex Dynamical Systems
Language: en
Pages: 208
Authors: Nan Chen
Categories: Mathematics
Type: BOOK - Published: 2023-03-13 - Publisher: Springer Nature

GET EBOOK

This book enables readers to understand, model, and predict complex dynamical systems using new methods with stochastic tools. The author presents a unique comb
Uncertainty Quantification and Prediction for Non-autonomous Linear and Nonlinear Systems
Language: en
Pages: 197
Authors: Akash Phadnis
Categories:
Type: BOOK - Published: 2013 - Publisher:

GET EBOOK

The science of uncertainty quantification has gained a lot of attention over recent years. This is because models of real processes always contain some elements
Optimal Estimation of Dynamic Systems
Language: en
Pages: 606
Authors: John L. Crassidis
Categories: Mathematics
Type: BOOK - Published: 2004-04-27 - Publisher: CRC Press

GET EBOOK

Most newcomers to the field of linear stochastic estimation go through a difficult process in understanding and applying the theory.This book minimizes the proc
Proceedings of the 5th International Symposium on Uncertainty Quantification and Stochastic Modelling
Language: en
Pages: 472
Authors: José Eduardo Souza De Cursi
Categories: Technology & Engineering
Type: BOOK - Published: 2020-08-19 - Publisher: Springer Nature

GET EBOOK

This proceedings book discusses state-of-the-art research on uncertainty quantification in mechanical engineering, including statistical data concerning the ent