When making predictions with complex simulators it can be important to quantify the various sources of uncertainty. Errors in the structural specification of the simulator, for example due to missing processes or incorrect mathematical specification, can be a major source of uncertainty, but are often ignored. We introduce a methodology for inferring the discrepancy between the simulator and the system in discrete-time dynamical simulators. We assume a structural form for the discrepancy function, and show how to infer the maximum-likelihood parameter estimates using a particle filter embedded within a Monte Carlo expectation maximization (MCEM) algorithm. We illustrate the method on a conceptual rainfall-runoff simulator (logSPM) used to m...
Computer models provide useful tools in understanding and predicting quantities of interest for stru...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe dyna...
A Bayesian-Monte Carlo approach was carried out to assess uncertainties in process-based, continuous...
When making predictions with complex simulators it can be important to quantify the various sources ...
When making predictions with complex simulators it can be important to quantify the various sources ...
Predicting events in the real world with a computer model (simulator) is challenging. Every simulato...
Output of complex simulators such as multiphase fluid flow simulators used in reservoir forecasting,...
In this paper we present and illustrate basic Bayesian techniques for the uncertainty analysis of co...
Predictive accuracy is the sum of two kinds of uncertainty–natural variability and modeling uncertai...
In order to understand underlying processes governing environmental and physical processes, and pred...
The study of environmental systems as ecological and physicochemical as well as socioeconomic entiti...
This paper explores learning emulators for parameter estimation with uncertainty estimation of high-...
Simulation models of physical systems such as oil field reservoirs are subject to numerous uncertain...
The last century has seen a growing interest in complexity in economics and social sciences. The nee...
[1] In recent years, increasing computational power has been used to weight competing hydrological m...
Computer models provide useful tools in understanding and predicting quantities of interest for stru...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe dyna...
A Bayesian-Monte Carlo approach was carried out to assess uncertainties in process-based, continuous...
When making predictions with complex simulators it can be important to quantify the various sources ...
When making predictions with complex simulators it can be important to quantify the various sources ...
Predicting events in the real world with a computer model (simulator) is challenging. Every simulato...
Output of complex simulators such as multiphase fluid flow simulators used in reservoir forecasting,...
In this paper we present and illustrate basic Bayesian techniques for the uncertainty analysis of co...
Predictive accuracy is the sum of two kinds of uncertainty–natural variability and modeling uncertai...
In order to understand underlying processes governing environmental and physical processes, and pred...
The study of environmental systems as ecological and physicochemical as well as socioeconomic entiti...
This paper explores learning emulators for parameter estimation with uncertainty estimation of high-...
Simulation models of physical systems such as oil field reservoirs are subject to numerous uncertain...
The last century has seen a growing interest in complexity in economics and social sciences. The nee...
[1] In recent years, increasing computational power has been used to weight competing hydrological m...
Computer models provide useful tools in understanding and predicting quantities of interest for stru...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe dyna...
A Bayesian-Monte Carlo approach was carried out to assess uncertainties in process-based, continuous...