There is always a deviation between a model prediction and the reality that the model intends to represent. The deviation is largely caused by the model uncertainty due to ignorance, assumptions, simplification, and other sources of lack of knowledge. Quantifying model uncertainty is a vital task and requires the comparison between model prediction and observation. This exercise is generally computationally intensive on the prediction side and costly on the experimentation side. In this work, a new methodology is proposed to provide an alternative implementation of model uncertainty quantification. With the new methodology, the experimental results are reported with expanded uncertainty terms around the experimental results for both model i...
In many practical application, we process measurement results and expert estimates. Measurements and...
The authors discussed some directions for research and development of methods for assessing simulati...
Uncertainty is ubiquitous. Depending on what information we have, we get different types of uncertai...
Model uncertainty quantification is mainly concerned with the problem of determining whether the obs...
This paper is one in a sequence of presentations that consider the problem of uncertainty quantifica...
Abstract: The evaluation of measurement uncertainty is based on both, the knowledge about the measur...
Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but ...
How do we know how much we know? Quantifying uncertainty associated with our modelling work is the o...
To predict values of future quantities, we apply algorithms to the current and past measurement resu...
Against the tradition, which has considered measurement able to produce pure data on physical system...
Against the tradition, which has considered measurement able to produce pure data on physical system...
In many practical application, we process measurement results and expert estimates. Measurements and...
In many practical application, we process measurement results and expert estimates. Measur...
A measurement result is incomplete without a statement of its 'uncertainty' or 'margin of error'. Bu...
In many practical application, we process measurement results and expert estimates. Measurements and...
In many practical application, we process measurement results and expert estimates. Measurements and...
The authors discussed some directions for research and development of methods for assessing simulati...
Uncertainty is ubiquitous. Depending on what information we have, we get different types of uncertai...
Model uncertainty quantification is mainly concerned with the problem of determining whether the obs...
This paper is one in a sequence of presentations that consider the problem of uncertainty quantifica...
Abstract: The evaluation of measurement uncertainty is based on both, the knowledge about the measur...
Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but ...
How do we know how much we know? Quantifying uncertainty associated with our modelling work is the o...
To predict values of future quantities, we apply algorithms to the current and past measurement resu...
Against the tradition, which has considered measurement able to produce pure data on physical system...
Against the tradition, which has considered measurement able to produce pure data on physical system...
In many practical application, we process measurement results and expert estimates. Measurements and...
In many practical application, we process measurement results and expert estimates. Measur...
A measurement result is incomplete without a statement of its 'uncertainty' or 'margin of error'. Bu...
In many practical application, we process measurement results and expert estimates. Measurements and...
In many practical application, we process measurement results and expert estimates. Measurements and...
The authors discussed some directions for research and development of methods for assessing simulati...
Uncertainty is ubiquitous. Depending on what information we have, we get different types of uncertai...