Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Chemical Engineering, 1999.Includes bibliographical references (p. 259-275).With the rapid advancement of computational science, modeling and simulation have become standard methods to study the behavior of complex systems. As scientists and engineers try to capture more detail, the models become more complex. Given that there are inevitable uncertainties entering at every stage of a model's life cycle, the challenge is to identify those components that contribute most to uncertainties in the predictions. This thesis presents new methodologies for allowing direct incorporation of uncertainty into the model formulation and for identifying the relative importance of different par...
International audienceMultidisciplinary analysis (MDA) is nowadays a powerful tool for analysis and ...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...
This study explores the use of generalized polynomial chaos theory for modeling complex nonlinear mu...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
Uncertainties are unavoidable in the description of real-life engineering systems. The quantificatio...
Inconsistent behavior of mechatronic applications is often related to uncertainties ingrained in the...
Many industrial applications include model parameters for which precise values are hardly available....
This paper was presented at the 3rd Micro and Nano Flows Conference (MNF2011), which was held at the...
© 2020 Elsevier Inc. All rights reserved. In the past decade, uncertainty quantification (UQ) has re...
International audienceThis book results from a course developed by the author and reflects both his ...
Uncertainty quantification seeks to provide a quantitative means to understand complex systems that ...
Uncertainty quantification is an inseparable part of risk assessment in dam engineering. Many probab...
This dissertation deals with mathematical modeling of complex distributed systems whose parameters a...
Uncertainty quantification (UQ) is an emerging research area that aims to develop methods for accura...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
International audienceMultidisciplinary analysis (MDA) is nowadays a powerful tool for analysis and ...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...
This study explores the use of generalized polynomial chaos theory for modeling complex nonlinear mu...
Uncertainty is a common feature in first-principles models that are widely used in various engineeri...
Uncertainties are unavoidable in the description of real-life engineering systems. The quantificatio...
Inconsistent behavior of mechatronic applications is often related to uncertainties ingrained in the...
Many industrial applications include model parameters for which precise values are hardly available....
This paper was presented at the 3rd Micro and Nano Flows Conference (MNF2011), which was held at the...
© 2020 Elsevier Inc. All rights reserved. In the past decade, uncertainty quantification (UQ) has re...
International audienceThis book results from a course developed by the author and reflects both his ...
Uncertainty quantification seeks to provide a quantitative means to understand complex systems that ...
Uncertainty quantification is an inseparable part of risk assessment in dam engineering. Many probab...
This dissertation deals with mathematical modeling of complex distributed systems whose parameters a...
Uncertainty quantification (UQ) is an emerging research area that aims to develop methods for accura...
In this paper a Two Step approach with Chaos Collocation for efficient uncertainty quantification in...
International audienceMultidisciplinary analysis (MDA) is nowadays a powerful tool for analysis and ...
Abstract—A computationally efficient approach is presented that quantifies the influence of paramete...
This study explores the use of generalized polynomial chaos theory for modeling complex nonlinear mu...