The article describes a new methodology for the emulation of high-order, dynamic simulation models. This exploits the technique of dominant mode analysis to identify a reduced-order, linear transfer function model that closely reproduces the linearized dynamic behavior of the large model. Based on a set of such reduced-order models, identified over a specified region of the large model's parameter space, nonparametric regression, tensor product cubic spline smoothing, or Gaussian process emulation are used to construct a computationally efficient, low-order, dynamic emulation (or meta) model that can replace the large model in applications such as sensitivity analysis, forecasting, or control system design. Two modes of emulation are possib...
International audienceDynamical model approximation aims at alleviating numerical issues induced by ...
The efficiency of sampling remains as one of the major challenges for uncertainty analysis in struct...
Uncertainty analysis in computer models has seen a rise in interest in recent years as a result of t...
The paper describes a new methodology for the emulation of high order, dynamic simulation models. Th...
The simplest Transfer Function (TF) model is a linear regression in which the dependent output varia...
Statistical emulation is a technique for studying the behavior of computational simulation models. W...
Many model-based investigation techniques, such as sensitivity analysis, optimization, and statistic...
Many model-based investigation techniques, such as sensitivity analysis, optimization, and statistic...
The paper describes a software framework for implementing the main stages of the Data Based Mechanis...
Abstract: The paper discusses the emulation of large, distributed parameter, computer models by low ...
The paper discusses the emulation of large, distributed parameter, computer models by low order, con...
In applied sciences, we often deal with deterministic simulation models that are too slow for simula...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe dyna...
Emulation modelling is an effective way of overcoming the large computational bur- den associated wi...
International audienceDynamical model approximation aims at alleviating numerical issues induced by ...
The efficiency of sampling remains as one of the major challenges for uncertainty analysis in struct...
Uncertainty analysis in computer models has seen a rise in interest in recent years as a result of t...
The paper describes a new methodology for the emulation of high order, dynamic simulation models. Th...
The simplest Transfer Function (TF) model is a linear regression in which the dependent output varia...
Statistical emulation is a technique for studying the behavior of computational simulation models. W...
Many model-based investigation techniques, such as sensitivity analysis, optimization, and statistic...
Many model-based investigation techniques, such as sensitivity analysis, optimization, and statistic...
The paper describes a software framework for implementing the main stages of the Data Based Mechanis...
Abstract: The paper discusses the emulation of large, distributed parameter, computer models by low ...
The paper discusses the emulation of large, distributed parameter, computer models by low order, con...
In applied sciences, we often deal with deterministic simulation models that are too slow for simula...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe dyna...
Emulation modelling is an effective way of overcoming the large computational bur- den associated wi...
International audienceDynamical model approximation aims at alleviating numerical issues induced by ...
The efficiency of sampling remains as one of the major challenges for uncertainty analysis in struct...
Uncertainty analysis in computer models has seen a rise in interest in recent years as a result of t...