MetaModelAlgorithm¶
- class MetaModelAlgorithm(*args)¶
Base class for metamodel algorithms.
- Parameters:
- sampleX, sampleY2-d sequence of float
Input/output samples
- distribution
Distribution
, optional Joint probability density function of the physical input vector.
See also
Methods
BuildDistribution
(inputSample)Recover the distribution, with metamodel performance in mind.
Accessor to the object's name.
Accessor to the joint probability density function of the physical input vector.
getId
()Accessor to the object's id.
Accessor to the input sample.
getName
()Accessor to the object's name.
Accessor to the output sample.
Accessor to the object's shadowed id.
Accessor to the object's visibility state.
Return the weights of the input sample.
hasName
()Test if the object is named.
Test if the object has a distinguishable name.
run
()Compute the response surfaces.
setDistribution
(distribution)Accessor to the joint probability density function of the physical input vector.
setName
(name)Accessor to the object's name.
setShadowedId
(id)Accessor to the object's shadowed id.
setVisibility
(visible)Accessor to the object's visibility state.
- __init__(*args)¶
- static BuildDistribution(inputSample)¶
Recover the distribution, with metamodel performance in mind.
For each marginal, find the best 1-d continuous parametric model else fallback to the use of a nonparametric one.
The selection is done as follow:
We start with a list of all parametric models (all factories)
For each model, we estimate its parameters if feasible.
We check then if model is valid, ie if its Kolmogorov score exceeds a threshold fixed in the MetaModelAlgorithm-PValueThreshold ResourceMap key. Default value is 5%
We sort all valid models and return the one with the optimal criterion.
For the last step, the criterion might be BIC, AIC or AICC. The specification of the criterion is done through the MetaModelAlgorithm-ModelSelectionCriterion ResourceMap key. Default value is fixed to BIC. Note that if there is no valid candidate, we estimate a non-parametric model (
KernelSmoothing
orHistogram
). The MetaModelAlgorithm-NonParametricModel ResourceMap key allows selecting the preferred one. Default value is HistogramOne each marginal is estimated, we use the Spearman independence test on each component pair to decide whether an independent copula. In case of non independence, we rely on a
NormalCopula
.- Parameters:
- sample
Sample
Input sample.
- sample
- Returns:
- distribution
Distribution
Input distribution.
- distribution
- getClassName()¶
Accessor to the object’s name.
- Returns:
- class_namestr
The object class name (object.__class__.__name__).
- getDistribution()¶
Accessor to the joint probability density function of the physical input vector.
- Returns:
- distribution
Distribution
Joint probability density function of the physical input vector.
- distribution
- getId()¶
Accessor to the object’s id.
- Returns:
- idint
Internal unique identifier.
- getInputSample()¶
Accessor to the input sample.
- Returns:
- inputSample
Sample
Input sample of a model evaluated apart.
- inputSample
- getName()¶
Accessor to the object’s name.
- Returns:
- namestr
The name of the object.
- getOutputSample()¶
Accessor to the output sample.
- Returns:
- outputSample
Sample
Output sample of a model evaluated apart.
- outputSample
- getShadowedId()¶
Accessor to the object’s shadowed id.
- Returns:
- idint
Internal unique identifier.
- getVisibility()¶
Accessor to the object’s visibility state.
- Returns:
- visiblebool
Visibility flag.
- getWeights()¶
Return the weights of the input sample.
- Returns:
- weightssequence of float
The weights of the points in the input sample.
- hasName()¶
Test if the object is named.
- Returns:
- hasNamebool
True if the name is not empty.
- hasVisibleName()¶
Test if the object has a distinguishable name.
- Returns:
- hasVisibleNamebool
True if the name is not empty and not the default one.
- run()¶
Compute the response surfaces.
Notes
It computes the response surfaces and creates a
MetaModelResult
structure containing all the results.
- setDistribution(distribution)¶
Accessor to the joint probability density function of the physical input vector.
- Parameters:
- distribution
Distribution
Joint probability density function of the physical input vector.
- distribution
- setName(name)¶
Accessor to the object’s name.
- Parameters:
- namestr
The name of the object.
- setShadowedId(id)¶
Accessor to the object’s shadowed id.
- Parameters:
- idint
Internal unique identifier.
- setVisibility(visible)¶
Accessor to the object’s visibility state.
- Parameters:
- visiblebool
Visibility flag.
Examples using the class¶
Build and validate a linear model
Create a general linear model metamodel
Fit a distribution from an input sample
Polynomial chaos over database
Compute grouped indices for the Ishigami function
Create a polynomial chaos metamodel by integration on the cantilever beam
Advanced polynomial chaos construction
Create a polynomial chaos metamodel
Create a polynomial chaos for the Ishigami function: a quick start guide to polynomial chaos
Polynomial chaos expansion cross-validation
Polynomial chaos is sensitive to the degree
Create a sparse chaos by integration
Compute Sobol’ indices confidence intervals
Kriging: propagate uncertainties
Kriging : multiple input dimensions
Kriging : cantilever beam model
Kriging: choose an arbitrary trend
Kriging the cantilever beam model using HMAT
Example of multi output Kriging on the fire satellite model
Kriging : generate trajectories from a metamodel
Kriging: choose a polynomial trend on the beam model
Kriging with an isotropic covariance function
Kriging: metamodel of the Branin-Hoo function
Sequentially adding new points to a kriging
Kriging :configure the optimization solver
Kriging: choose a polynomial trend
Kriging: metamodel with continuous and categorical variables
Viscous free fall: metamodel of a field function
Sobol’ sensitivity indices from chaos
Example of sensitivity analyses on the wing weight model
Compute leave-one-out error of a polynomial chaos expansion
EfficientGlobalOptimization examples