This is the first part of a two-part article. A new computational approach for parameter estimation is proposed based on the application of the polynomial chaos theory. The polynomial chaos method has been shown to be considerably more efficient than Monte Carlo in the simulation of systems with a small number of uncertain parameters. In the new approach presented in this paper, the maximum likelihood estimates are obtained by minimizing a cost function derived from the Bayesian theorem. Direct stochastic collocation is used as a less computationally expensive alternative to the traditional Galerkin approach to propagate the uncertainties through the system in the polynomial chaos framework. This approach is applied to very simple mecha...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
The accuracy and the computational efficiency of a Point-Collocation Non-Intrusive Polynomial Chaos ...
AbstractThe classic polynomial chaos method (PCM), characterized as an intrusive methodology, has be...
This is the second part of a two-part article. In the first part, a new computational approach for p...
Abstract. Fast parameter estimation is a non-trivial task, and it is critical when the system parame...
Many industrial applications include model parameters for which precise values are hardly available....
This study explores the use of generalized polynomial chaos theory for modeling complex nonlinear mu...
This paper proposes a new uncertain analysis method for vehicle dynamics involving hybrid uncertaint...
The parameters in most engineering problems are under uncertainty due to manufacturing and assembly ...
It is interesting to analyze the parameter sensitivity of mathematical models that describe physical...
This dissertation uses polynomial chaos theory to address recursive parameter estimation in state sp...
We consider time-average quantities of chaotic systems and their sensitivity to system parameters. W...
Generalized polynomial chaos (gPC) expansions allow us to represent the solution of a stochastic sys...
In this paper, the authors outline the general principles behind an approach to Bayesian system iden...
The analyzed problem is the identification of fault parameters taking into account the stochastic ch...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
The accuracy and the computational efficiency of a Point-Collocation Non-Intrusive Polynomial Chaos ...
AbstractThe classic polynomial chaos method (PCM), characterized as an intrusive methodology, has be...
This is the second part of a two-part article. In the first part, a new computational approach for p...
Abstract. Fast parameter estimation is a non-trivial task, and it is critical when the system parame...
Many industrial applications include model parameters for which precise values are hardly available....
This study explores the use of generalized polynomial chaos theory for modeling complex nonlinear mu...
This paper proposes a new uncertain analysis method for vehicle dynamics involving hybrid uncertaint...
The parameters in most engineering problems are under uncertainty due to manufacturing and assembly ...
It is interesting to analyze the parameter sensitivity of mathematical models that describe physical...
This dissertation uses polynomial chaos theory to address recursive parameter estimation in state sp...
We consider time-average quantities of chaotic systems and their sensitivity to system parameters. W...
Generalized polynomial chaos (gPC) expansions allow us to represent the solution of a stochastic sys...
In this paper, the authors outline the general principles behind an approach to Bayesian system iden...
The analyzed problem is the identification of fault parameters taking into account the stochastic ch...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
The accuracy and the computational efficiency of a Point-Collocation Non-Intrusive Polynomial Chaos ...
AbstractThe classic polynomial chaos method (PCM), characterized as an intrusive methodology, has be...