FunctionalBasisProcess¶
(Source code
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- class FunctionalBasisProcess(*args)¶
Functional basis process.
- Parameters:
- distribution
Distribution
The distribution of the random vector .
- basissequence of
Function
Collection of deterministic functions.
- mesh
Mesh
Mesh over which the domain is discretized.
- distribution
Methods
getBasis
()Get the basis of deterministic functions.
Accessor to the object's name.
Get a continuous realization.
Accessor to the covariance model.
Get the description of the process.
Get the coefficients distribution.
getFuture
(*args)Prediction of the future iterations of the process.
Get the dimension of the domain .
getMarginal
(indices)Get the marginal of the random process.
getMesh
()Get the mesh.
getName
()Accessor to the object's name.
Get the dimension of the domain .
Get a realization of the process.
getSample
(size)Get realizations of the process.
Get the time grid of observation of the process.
getTrend
()Accessor to the trend.
hasName
()Test if the object is named.
Test whether the process is composite or not.
isNormal
()Test whether the process is normal or not.
Test whether the process is stationary or not.
setBasis
(basis)Set the basis of deterministic functions.
setDescription
(description)Set the description of the process.
setDistribution
(distribution)Set the coefficients distribution.
setMesh
(mesh)Set the mesh.
setName
(name)Accessor to the object's name.
setTimeGrid
(timeGrid)Set the time grid of observation of the process.
Notes
A functional basis process where , writes:
with for and a random vector of dimension .
Examples
Create the coefficients distribution:
>>> import openturns as ot >>> coefDist = ot.Normal([2]*2, [5]*2, ot.CorrelationMatrix(2))
Create a basis of functions:
>>> phi_1 = ot.SymbolicFunction(['t'], ['sin(t)']) >>> phi_2 = ot.SymbolicFunction(['t'], ['cos(t)*cos(t)']) >>> myBasis = ot.Basis([phi_1, phi_2])
Create a mesh:
>>> myMesh = ot.RegularGrid(0.0, 0.1, 10)
Create the functional basis process:
>>> myFBProcess = ot.FunctionalBasisProcess(coefDist, myBasis, myMesh)
- __init__(*args)¶
- getBasis()¶
Get the basis of deterministic functions.
- Returns:
- basiscollection of
Function
Collection of functions .
- basiscollection of
- getClassName()¶
Accessor to the object’s name.
- Returns:
- class_namestr
The object class name (object.__class__.__name__).
- getContinuousRealization()¶
Get a continuous realization.
- Returns:
- realization
Function
According to the process, the continuous realizations are built:
either using a dedicated functional model if it exists: e.g. a functional basis process.
or using an interpolation from a discrete realization of the process on : in dimension , a linear interpolation and in dimension , a piecewise constant function (the value at a given position is equal to the value at the nearest vertex of the mesh of the process).
- realization
- getCovarianceModel()¶
Accessor to the covariance model.
- Returns:
- cov_model
CovarianceModel
Covariance model, if any.
- cov_model
- getDescription()¶
Get the description of the process.
- Returns:
- description
Description
Description of the process.
- description
- getDistribution()¶
Get the coefficients distribution.
- Returns:
- distribution
Distribution
The distribution of the random vector of dimension .
- distribution
- getFuture(*args)¶
Prediction of the future iterations of the process.
- Parameters:
- stepNumberint,
Number of future steps.
- sizeint, , optional
Number of futures needed. Default is 1.
- Returns:
- prediction
ProcessSample
orTimeSeries
future iterations of the process. If , prediction is a
TimeSeries
. Otherwise, it is aProcessSample
.
- prediction
- getInputDimension()¶
Get the dimension of the domain .
- Returns:
- nint
Dimension of the domain : .
- getMarginal(indices)¶
Get the marginal of the random process.
- Parameters:
- kint or list of ints
Index of the marginal(s) needed.
- Returns:
- marginals
Process
Process defined with marginal(s) of the random process.
- marginals
- getName()¶
Accessor to the object’s name.
- Returns:
- namestr
The name of the object.
- getOutputDimension()¶
Get the dimension of the domain .
- Returns:
- dint
Dimension of the domain .
- getRealization()¶
Get a realization of the process.
- Returns:
- realization
Field
Contains a mesh over which the process is discretized and the values of the process at the vertices of the mesh.
- realization
- getSample(size)¶
Get realizations of the process.
- Parameters:
- nint,
Number of realizations of the process needed.
- Returns:
- processSample
ProcessSample
realizations of the random process. A process sample is a collection of fields which share the same mesh .
- processSample
- getTimeGrid()¶
Get the time grid of observation of the process.
- Returns:
- timeGrid
RegularGrid
Time grid of a process when the mesh associated to the process can be interpreted as a
RegularGrid
. We check if the vertices of the mesh are scalar and are regularly spaced in but we don’t check if the connectivity of the mesh is conform to the one of a regular grid (without any hole and composed of ordered instants).
- timeGrid
- getTrend()¶
Accessor to the trend.
- Returns:
- trend
TrendTransform
Trend, if any.
- trend
- hasName()¶
Test if the object is named.
- Returns:
- hasNamebool
True if the name is not empty.
- isComposite()¶
Test whether the process is composite or not.
- Returns:
- isCompositebool
True if the process is composite (built upon a function and a process).
- isNormal()¶
Test whether the process is normal or not.
- Returns:
- isNormalbool
True if the process is normal.
Notes
A stochastic process is normal if all its finite dimensional joint distributions are normal, which means that for all and , with , there is and such that:
where , and and is the symmetric matrix:
A Gaussian process is entirely defined by its mean function and its covariance function (or correlation function ).
- isStationary()¶
Test whether the process is stationary or not.
- Returns:
- isStationarybool
True if the process is stationary.
Notes
A process is stationary if its distribution is invariant by translation: , , , we have:
- setBasis(basis)¶
Set the basis of deterministic functions.
- Parameters:
- basissequence of
Function
Collection of functions .
- basissequence of
- setDescription(description)¶
Set the description of the process.
- Parameters:
- descriptionsequence of str
Description of the process.
- setDistribution(distribution)¶
Set the coefficients distribution.
- Parameters:
- distribution
Distribution
The distribution of the random vector of dimension .
- distribution
- setName(name)¶
Accessor to the object’s name.
- Parameters:
- namestr
The name of the object.
- setTimeGrid(timeGrid)¶
Set the time grid of observation of the process.
- Returns:
- timeGrid
RegularGrid
Time grid of observation of the process when the mesh associated to the process can be interpreted as a
RegularGrid
. We check if the vertices of the mesh are scalar and are regularly spaced in but we don’t check if the connectivity of the mesh is conform to the one of a regular grid (without any hole and composed of ordered instants).
- timeGrid
Examples using the class¶
Create a functional basis process
Create a process from random vectors and processes
Estimate Sobol indices on a field to point function