Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but can be intriguing and rewarding for anyone with mathematical ambitions and genuine concern for modeling quality. Uncertainty quantification is what remains to be done when too much credibility has been invested in deterministic analyses and unwarranted assumptions. Model calibration describes the inverse operation targeting optimal prediction and refers to inference of best uncertain model estimates from experimental calibration data. The limited applicability of most state-of-the-art approaches to many of the large and complex calculations made today makes uncertainty quantification and model calibration major topics open for debate, with ra...
The problem of model uncertainty versus model inaccuracy is examined in the light of the concept of ...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
International audienceThis paper presents an overview of the theoretic framework of stochastic model...
The field of uncertainty quantification is evolving rapidly because of increasing emphasis on models...
How do we know how much we know? Quantifying uncertainty associated with our modelling work is the o...
There is always a deviation between a model prediction and the reality that the model intends to rep...
This paper is one in a sequence of presentations that consider the problem of uncertainty quantifica...
Predictive accuracy is the sum of two kinds of uncertainty–natural variability and modeling uncertai...
Uncertainty quantification can be broadly defined as the process of characterizing, estimating, prop...
Model uncertainty quantification is mainly concerned with the problem of determining whether the obs...
The calibration of complex computer codes using uncertainty quantification (UQ) methods is a rich ar...
This paper examines how calibration performs under different levels of uncertainty in model input da...
A model is a simplified representation of the real world. Model uncertainty is a common issue in pre...
Since 2000, the research of uncertainty quantification (UQ) has been successfully applied in many fi...
Modeling and Inverse Problems in the Presence of Uncertainty collects recent research-including the ...
The problem of model uncertainty versus model inaccuracy is examined in the light of the concept of ...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
International audienceThis paper presents an overview of the theoretic framework of stochastic model...
The field of uncertainty quantification is evolving rapidly because of increasing emphasis on models...
How do we know how much we know? Quantifying uncertainty associated with our modelling work is the o...
There is always a deviation between a model prediction and the reality that the model intends to rep...
This paper is one in a sequence of presentations that consider the problem of uncertainty quantifica...
Predictive accuracy is the sum of two kinds of uncertainty–natural variability and modeling uncertai...
Uncertainty quantification can be broadly defined as the process of characterizing, estimating, prop...
Model uncertainty quantification is mainly concerned with the problem of determining whether the obs...
The calibration of complex computer codes using uncertainty quantification (UQ) methods is a rich ar...
This paper examines how calibration performs under different levels of uncertainty in model input da...
A model is a simplified representation of the real world. Model uncertainty is a common issue in pre...
Since 2000, the research of uncertainty quantification (UQ) has been successfully applied in many fi...
Modeling and Inverse Problems in the Presence of Uncertainty collects recent research-including the ...
The problem of model uncertainty versus model inaccuracy is examined in the light of the concept of ...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
International audienceThis paper presents an overview of the theoretic framework of stochastic model...