In this paper we present and illustrate basic Bayesian techniques for the uncertainty analysis of complex physical systems modelled by computer simulators. We focus on emulation and history matching and also discuss the treatment of observational errors and structural discrepancies in time series. We exemplify such methods using a four-box model for the termohaline circulation. We show how these methods may be applied to systems containing tipping points and how to treat possible discontinuities using multiple emulators
Computer codes simulating physical systems usually have responses that consist of a set of distinct ...
Melding of information from observed data, computer simulations, and scientifically-driven mechanist...
Computer models are now widely used across a range of scientific disciplines to describe various com...
Important decision making problems are increasingly addressed using computer models for complex real...
Part 2: UQ TheoryInternational audienceMost large and complex physical systems are studied by mathem...
A calibration-based approach is developed for predicting the behavior of a physical system that is m...
When performing classic uncertainty reduction based on dynamic data, a large number of reservoir sim...
We outline a probabilistic framework for linking mathematical models to the physical systems that th...
Reservoir simulation models incorporate physical laws and reservoir characteristics. They represent ...
Computer models provide useful tools in understanding and predicting quantities of interest for stru...
When a computer code is used to simulate a complex system, a fundamental task is to assess the uncer...
Copyright © 2014 Society for Industrial and Applied MathematicsWe develop Bayesian dynamic linear mo...
We harness the power of Bayesian emulation techniques, designed to aid the analysis of complex compu...
We harness the power of Bayesian emulation techniques, designed to aid the analysis of complex compu...
Computer models, aiming at simulating a complex real system, are often calibrated in the light of da...
Computer codes simulating physical systems usually have responses that consist of a set of distinct ...
Melding of information from observed data, computer simulations, and scientifically-driven mechanist...
Computer models are now widely used across a range of scientific disciplines to describe various com...
Important decision making problems are increasingly addressed using computer models for complex real...
Part 2: UQ TheoryInternational audienceMost large and complex physical systems are studied by mathem...
A calibration-based approach is developed for predicting the behavior of a physical system that is m...
When performing classic uncertainty reduction based on dynamic data, a large number of reservoir sim...
We outline a probabilistic framework for linking mathematical models to the physical systems that th...
Reservoir simulation models incorporate physical laws and reservoir characteristics. They represent ...
Computer models provide useful tools in understanding and predicting quantities of interest for stru...
When a computer code is used to simulate a complex system, a fundamental task is to assess the uncer...
Copyright © 2014 Society for Industrial and Applied MathematicsWe develop Bayesian dynamic linear mo...
We harness the power of Bayesian emulation techniques, designed to aid the analysis of complex compu...
We harness the power of Bayesian emulation techniques, designed to aid the analysis of complex compu...
Computer models, aiming at simulating a complex real system, are often calibrated in the light of da...
Computer codes simulating physical systems usually have responses that consist of a set of distinct ...
Melding of information from observed data, computer simulations, and scientifically-driven mechanist...
Computer models are now widely used across a range of scientific disciplines to describe various com...