This report explores some important considerations in devising a practical and consistent framework and methodology for utilizing experiments and experimental data to support modeling and prediction. A pragmatic and versatile 'Real Space' approach is outlined for confronting experimental and modeling bias and uncertainty to mitigate risk in modeling and prediction. The elements of experiment design and data analysis, data conditioning, model conditioning, model validation, hierarchical modeling, and extrapolative prediction under uncertainty are examined. An appreciation can be gained for the constraints and difficulties at play in devising a viable end-to-end methodology. Rationale is given for the various choices underlying the Real Space...
Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but ...
This paper describes the use of formally designed experiments to aid in the error analysis of a comp...
Predictive accuracy is the sum of two kinds of uncertainty–natural variability and modeling uncertai...
Model validation is the process of evaluating how well a computational model represents reality. Tha...
Quantification of prediction uncertainty is an important consideration when using mathematical model...
ABSTRACT: A key aspect of science-based predictive modeling is the assessment of prediction credibil...
Even though model-based simulations are widely used in engineering design, it remains a challenge to...
In a Model-Based Drug Development strategy, the first objective is to design studies such that the m...
Part 5: Hot TopicsInternational audienceThere is a need for predictive material “aging” models in th...
There is always a deviation between a model prediction and the reality that the model intends to rep...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
The importance of reliable methods for representative sub-sampling in terms of experimental design a...
The Navy uses families of models of varying detail and focus to analyze forces and operational conce...
The difficulties encountered in applying current normative approaches for validation to computationa...
Data from full scale experiments are collected and organized in a database. A statistical method is ...
Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but ...
This paper describes the use of formally designed experiments to aid in the error analysis of a comp...
Predictive accuracy is the sum of two kinds of uncertainty–natural variability and modeling uncertai...
Model validation is the process of evaluating how well a computational model represents reality. Tha...
Quantification of prediction uncertainty is an important consideration when using mathematical model...
ABSTRACT: A key aspect of science-based predictive modeling is the assessment of prediction credibil...
Even though model-based simulations are widely used in engineering design, it remains a challenge to...
In a Model-Based Drug Development strategy, the first objective is to design studies such that the m...
Part 5: Hot TopicsInternational audienceThere is a need for predictive material “aging” models in th...
There is always a deviation between a model prediction and the reality that the model intends to rep...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
The importance of reliable methods for representative sub-sampling in terms of experimental design a...
The Navy uses families of models of varying detail and focus to analyze forces and operational conce...
The difficulties encountered in applying current normative approaches for validation to computationa...
Data from full scale experiments are collected and organized in a database. A statistical method is ...
Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but ...
This paper describes the use of formally designed experiments to aid in the error analysis of a comp...
Predictive accuracy is the sum of two kinds of uncertainty–natural variability and modeling uncertai...