The provided code allows the generation and application of machine learning surrogate models based on a data set of template model in- and outputs. Example training and test data originates from the kinetic multilayer model of aerosol surface and bulk chemistry (KM-SUB, https://doi.org/10.5194/acp-10-3673-2010). Artificial neural networks are implemented with the python library Keras, polynomial chaos expansion with the Matlab software UQLab. Further information can be found in the provided files. An overview is also given in file contents.txt. This code is the product of a collaboration between: Max Planck Institute for Chemistry, Hahn-Meitner-Weg 1, 55128 Mainz, Germany Institute for Atmospheric and Climate Science, ETH Zürich, 8092 Zü...
Abstract. Metamodelling decreases the computational effort of time-consuming computer simulations by...
Stochastic simulators are computational models that produce different results when evaluated repeate...
NNaPS is a python package to simplify the use of machine learning when preforming population synthes...
The provided code allows the generation and application of machine learning surrogate models based o...
Complex computational models are used nowadays in all fields of applied sciences to predict the beha...
Implementation of online optimization and control of complex processes near impossible in given time...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
In surrogate modeling, polynomial chaos expansion (PCE) is popularly utilized to represent the rando...
In this work we introduce a manifold learning-based method for uncertainty quantification (UQ) in sy...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
While attaining the objective of online optimization of complex chemical processes, the possibility ...
Nowadays computational models are used in virtually all fields of applied sciences and engineering t...
Computer simulation has become the standard tool in many engineering fields for designing and optimi...
In this article, multi-fidelity kriging and sparse polynomial chaos expansion (SPCE) surrogate model...
This paper presents a surrogate modelling technique based on domain partitioning for Bayesian parame...
Abstract. Metamodelling decreases the computational effort of time-consuming computer simulations by...
Stochastic simulators are computational models that produce different results when evaluated repeate...
NNaPS is a python package to simplify the use of machine learning when preforming population synthes...
The provided code allows the generation and application of machine learning surrogate models based o...
Complex computational models are used nowadays in all fields of applied sciences to predict the beha...
Implementation of online optimization and control of complex processes near impossible in given time...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
In surrogate modeling, polynomial chaos expansion (PCE) is popularly utilized to represent the rando...
In this work we introduce a manifold learning-based method for uncertainty quantification (UQ) in sy...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
While attaining the objective of online optimization of complex chemical processes, the possibility ...
Nowadays computational models are used in virtually all fields of applied sciences and engineering t...
Computer simulation has become the standard tool in many engineering fields for designing and optimi...
In this article, multi-fidelity kriging and sparse polynomial chaos expansion (SPCE) surrogate model...
This paper presents a surrogate modelling technique based on domain partitioning for Bayesian parame...
Abstract. Metamodelling decreases the computational effort of time-consuming computer simulations by...
Stochastic simulators are computational models that produce different results when evaluated repeate...
NNaPS is a python package to simplify the use of machine learning when preforming population synthes...