In this work, the Uncertainty Quantification (UQ) approaches combined systematically to analyze and identify systems. The generalized Polynomial Chaos (gPC) expansion is applied to reduce the computational effort. The framework using gPC based on Bayesian UQ proposed in this work is capable of analyzing the system systematically and reducing the disagreement between the model predictions and the measurements of the real processes to fulfill user defined performance criteria
Uncertainty exists widely in engineering design. As one of the key components of engineering design,...
International audienceAmong probabilistic uncertainty propagation methods, the generalized Polynomia...
Inherent physical uncertainties can have a significant influence on computational predictions. It is...
In this work, the Uncertainty Quantification (UQ) approaches combined systematically to analyze and ...
In many fields, active research is currently focused on quantification and simulation of model uncer...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
This dissertation deals with mathematical modeling of complex distributed systems whose parameters a...
Uncertainties are ubiquitous and unavoidable in process design and modeling. Because they can signif...
Parametric uncertainity quantification and calibration of the k-epsilon model by generalized Polynom...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...
Many industrial applications include model parameters for which precise values are hardly available....
Abstract. In this paper we review some applications of generalized polynomial chaos expansion for un...
This paper presents an algorithm for efficient uncertainty quantification (UQ) in the presence of ma...
Time delay is ubiquitous in many real-world physical and biological systems. It typically gives rise...
International audiencePolynomial chaos expansions are frequently used by engineers and modellers for...
Uncertainty exists widely in engineering design. As one of the key components of engineering design,...
International audienceAmong probabilistic uncertainty propagation methods, the generalized Polynomia...
Inherent physical uncertainties can have a significant influence on computational predictions. It is...
In this work, the Uncertainty Quantification (UQ) approaches combined systematically to analyze and ...
In many fields, active research is currently focused on quantification and simulation of model uncer...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
This dissertation deals with mathematical modeling of complex distributed systems whose parameters a...
Uncertainties are ubiquitous and unavoidable in process design and modeling. Because they can signif...
Parametric uncertainity quantification and calibration of the k-epsilon model by generalized Polynom...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...
Many industrial applications include model parameters for which precise values are hardly available....
Abstract. In this paper we review some applications of generalized polynomial chaos expansion for un...
This paper presents an algorithm for efficient uncertainty quantification (UQ) in the presence of ma...
Time delay is ubiquitous in many real-world physical and biological systems. It typically gives rise...
International audiencePolynomial chaos expansions are frequently used by engineers and modellers for...
Uncertainty exists widely in engineering design. As one of the key components of engineering design,...
International audienceAmong probabilistic uncertainty propagation methods, the generalized Polynomia...
Inherent physical uncertainties can have a significant influence on computational predictions. It is...