In uncertainty analysis, surrogate modelling techniques demonstrate high efficiency and reliable precision in estimating the uncertainty for the finite difference time domain (FDTD) computation. However, building an accurate surrogate model may require a considerable number of system simulations which could be computationally expensive. To reduce such computational cost to build an accurate model, a general framework to build surrogate models for the FDTD computation in the human body based on the least angle regression (LARS) method and the artificial neural network (ANN) is proposed. The LARS method is adapted to dynamically select a number of informative random parameters which are significantly relevant to system outputs. We design a se...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
Surrogate models are widely used as approximations to exact functions that are computationally expen...
This work develops and benchmarks surrogate models for Dynamic Phasor (DP) simulation of electrical ...
The research data related to the paper "A general framework for building surrogate models for uncert...
International audienceThis paper focuses on quantifying the uncertainty in the specific absorption r...
The nonintrusive polynomial chaos expansion method is used to quantify the uncertainty of a stochast...
In contemporary practices, Computational Fluid Dynamics (CFD) based tools are increasingly applied t...
This research data relates to the article of "An adaptive least angle regression method for uncertai...
This thesis addresses surrogate modeling and forward uncertainty propagation for parametric/stochast...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
Uncertainty quantification plays a critical role in the process of decision making and optimization ...
Keywords FDTD, neural networks, multiplayer perceptron, EMC, data extrapolation, prediction, time se...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
Surrogate models are widely used as approximations to exact functions that are computationally expen...
This work develops and benchmarks surrogate models for Dynamic Phasor (DP) simulation of electrical ...
The research data related to the paper "A general framework for building surrogate models for uncert...
International audienceThis paper focuses on quantifying the uncertainty in the specific absorption r...
The nonintrusive polynomial chaos expansion method is used to quantify the uncertainty of a stochast...
In contemporary practices, Computational Fluid Dynamics (CFD) based tools are increasingly applied t...
This research data relates to the article of "An adaptive least angle regression method for uncertai...
This thesis addresses surrogate modeling and forward uncertainty propagation for parametric/stochast...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
Uncertainty quantification plays a critical role in the process of decision making and optimization ...
Keywords FDTD, neural networks, multiplayer perceptron, EMC, data extrapolation, prediction, time se...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
Surrogate models are widely used as approximations to exact functions that are computationally expen...
This work develops and benchmarks surrogate models for Dynamic Phasor (DP) simulation of electrical ...