StandardEvent¶
- class StandardEvent(*args)¶
Event defined in the standard space.
- Available constructor:
StandardEvent(antecedent, comparisonOperator, threshold)
StandardEvent(event)
- Parameters:
- antecedent
RandomVector
of dimension 1 Output variable of interest.
- comparisonOperator
ComparisonOperator
Comparison operator used to compare antecedent with threshold.
- thresholdfloat
threshold we want to compare to antecedent.
- event
RandomVector
Physical event associated with the standard event to be created.
- antecedent
See also
Notes
An event is defined as follows:
where denotes a random input vector, representing the sources of uncertainties, is a determinist vector, representing the fixed variables and is the limit state function of the model.
One way to evaluate the probability content of the event :
is to use an isoprobabilistic transformation to move from the physical space to a standard normal space (U-space) where distributions are spherical (invariant by rotation by definition), with zero mean, unit variance and unit correlation matrix. The usual isoprobabilistic transformations are the Generalized Nataf transformation and Rosenblatt transformation.
In that new U-space, the event can be expressed in terms of the transformed limit state function of the model
Examples
A StandardEvent created from a limit state function :
>>> import openturns as ot >>> myFunction = ot.SymbolicFunction(['E', 'F', 'L', 'I'], ['-F*L^3/(3*E*I)']) >>> myDistribution = ot.Normal(4) >>> vect = ot.RandomVector(myDistribution) >>> output = ot.CompositeRandomVector(myFunction, vect) >>> myStandardEvent = ot.StandardEvent(output, ot.Less(), 1.0)
A StandardEvent based on an event :
>>> myEvent = ot.ThresholdEvent(output, ot.Less(), 1.0) >>> myStandardEvent = ot.StandardEvent(myEvent)
Methods
Accessor to the antecedent RandomVector in case of a composite RandomVector.
Accessor to the object's name.
Accessor to the covariance of the RandomVector.
Accessor to the description of the RandomVector.
Accessor to the dimension of the RandomVector.
Accessor to the distribution of the RandomVector.
Accessor to the domain of the Event.
Accessor to the Function in case of a composite RandomVector.
getId
()Accessor to the object's id.
Accessor to the underlying implementation.
getMarginal
(*args)Get the random vector corresponding to the marginal component(s).
getMean
()Accessor to the mean of the RandomVector.
getName
()Accessor to the object's name.
Accessor to the comparaison operator of the Event.
Accessor to the parameter of the distribution.
Accessor to the parameter description of the distribution.
Compute one realization of the RandomVector.
getSample
(size)Compute realizations of the RandomVector.
Accessor to the threshold of the Event.
intersect
(other)Intersection of two events.
Accessor to know if the RandomVector is a composite one.
isEvent
()Whether the random vector is an event.
join
(other)Union of two events.
setDescription
(description)Accessor to the description of the RandomVector.
setName
(name)Accessor to the object's name.
setParameter
(parameters)Accessor to the parameter of the distribution.
- __init__(*args)¶
- getAntecedent()¶
Accessor to the antecedent RandomVector in case of a composite RandomVector.
- Returns:
- antecedent
RandomVector
Antecedent RandomVector in case of a
CompositeRandomVector
such as: .
- antecedent
- getClassName()¶
Accessor to the object’s name.
- Returns:
- class_namestr
The object class name (object.__class__.__name__).
- getCovariance()¶
Accessor to the covariance of the RandomVector.
- Returns:
- covariance
CovarianceMatrix
Covariance of the considered
UsualRandomVector
.
- covariance
Examples
>>> import openturns as ot >>> distribution = ot.Normal([0.0, 0.5], [1.0, 1.5], ot.CorrelationMatrix(2)) >>> randomVector = ot.RandomVector(distribution) >>> ot.RandomGenerator.SetSeed(0) >>> print(randomVector.getCovariance()) [[ 1 0 ] [ 0 2.25 ]]
- getDescription()¶
Accessor to the description of the RandomVector.
- Returns:
- description
Description
Describes the components of the RandomVector.
- description
- getDimension()¶
Accessor to the dimension of the RandomVector.
- Returns:
- dimensionpositive int
Dimension of the RandomVector.
- getDistribution()¶
Accessor to the distribution of the RandomVector.
- Returns:
- distribution
Distribution
Distribution of the considered
UsualRandomVector
.
- distribution
Examples
>>> import openturns as ot >>> distribution = ot.Normal([0.0, 0.0], [1.0, 1.0], ot.CorrelationMatrix(2)) >>> randomVector = ot.RandomVector(distribution) >>> ot.RandomGenerator.SetSeed(0) >>> print(randomVector.getDistribution()) Normal(mu = [0,0], sigma = [1,1], R = [[ 1 0 ] [ 0 1 ]])
- getDomain()¶
Accessor to the domain of the Event.
- Returns:
- domain
Domain
Describes the domain of an event.
- domain
- getFunction()¶
Accessor to the Function in case of a composite RandomVector.
- Returns:
- function
Function
Function used to define a
CompositeRandomVector
as the image through this function of the antecedent : .
- function
- getId()¶
Accessor to the object’s id.
- Returns:
- idint
Internal unique identifier.
- getImplementation()¶
Accessor to the underlying implementation.
- Returns:
- implImplementation
A copy of the underlying implementation object.
- getMarginal(*args)¶
Get the random vector corresponding to the marginal component(s).
- Parameters:
- iint or list of ints,
Indicates the component(s) concerned. is the dimension of the RandomVector.
- Returns:
- vector
RandomVector
RandomVector restricted to the concerned components.
- vector
Notes
Let’s note a random vector and a set of indices. If is a
UsualRandomVector
, the subvector is defined by . If is aCompositeRandomVector
, defined by with , some scalar functions, the subvector is .Examples
>>> import openturns as ot >>> distribution = ot.Normal([0.0, 0.0], [1.0, 1.0], ot.CorrelationMatrix(2)) >>> randomVector = ot.RandomVector(distribution) >>> ot.RandomGenerator.SetSeed(0) >>> print(randomVector.getMarginal(1).getRealization()) [0.608202] >>> print(randomVector.getMarginal(1).getDistribution()) Normal(mu = 0, sigma = 1)
- getMean()¶
Accessor to the mean of the RandomVector.
- Returns:
- mean
Point
Mean of the considered
UsualRandomVector
.
- mean
Examples
>>> import openturns as ot >>> distribution = ot.Normal([0.0, 0.5], [1.0, 1.5], ot.CorrelationMatrix(2)) >>> randomVector = ot.RandomVector(distribution) >>> ot.RandomGenerator.SetSeed(0) >>> print(randomVector.getMean()) [0,0.5]
- getName()¶
Accessor to the object’s name.
- Returns:
- namestr
The name of the object.
- getOperator()¶
Accessor to the comparaison operator of the Event.
- Returns:
- operator
ComparisonOperator
Comparaison operator used to define the
RandomVector
.
- operator
- getParameter()¶
Accessor to the parameter of the distribution.
- Returns:
- parameter
Point
Parameter values.
- parameter
- getParameterDescription()¶
Accessor to the parameter description of the distribution.
- Returns:
- description
Description
Parameter names.
- description
- getRealization()¶
Compute one realization of the RandomVector.
- Returns:
- aRealization
Point
Sequence of values randomly determined from the RandomVector definition. In the case of an event: one realization of the event (considered as a Bernoulli variable) which is a boolean value (1 for the realization of the event and 0 else).
- aRealization
See also
Examples
>>> import openturns as ot >>> distribution = ot.Normal([0.0, 0.0], [1.0, 1.0], ot.CorrelationMatrix(2)) >>> randomVector = ot.RandomVector(distribution) >>> ot.RandomGenerator.SetSeed(0) >>> print(randomVector.getRealization()) [0.608202,-1.26617] >>> print(randomVector.getRealization()) [-0.438266,1.20548]
- getSample(size)¶
Compute realizations of the RandomVector.
- Parameters:
- nint,
Number of realizations needed.
- Returns:
- realizations
Sample
n sequences of values randomly determined from the RandomVector definition. In the case of an event: n realizations of the event (considered as a Bernoulli variable) which are boolean values (1 for the realization of the event and 0 else).
- realizations
See also
Examples
>>> import openturns as ot >>> distribution = ot.Normal([0.0, 0.0], [1.0, 1.0], ot.CorrelationMatrix(2)) >>> randomVector = ot.RandomVector(distribution) >>> ot.RandomGenerator.SetSeed(0) >>> print(randomVector.getSample(3)) [ X0 X1 ] 0 : [ 0.608202 -1.26617 ] 1 : [ -0.438266 1.20548 ] 2 : [ -2.18139 0.350042 ]
- getThreshold()¶
Accessor to the threshold of the Event.
- Returns:
- thresholdfloat
Threshold of the
RandomVector
.
- intersect(other)¶
Intersection of two events.
- Parameters:
- event
RandomVector
A composite event
- event
- Returns:
- event
RandomVector
Intersection event
- event
- isComposite()¶
Accessor to know if the RandomVector is a composite one.
- Returns:
- isCompositebool
Indicates if the RandomVector is of type Composite or not.
- isEvent()¶
Whether the random vector is an event.
- Returns:
- isEventbool
Whether it takes it values in {0, 1}.
- join(other)¶
Union of two events.
- Parameters:
- event
RandomVector
A composite event
- event
- Returns:
- event
RandomVector
Union event
- event
- setDescription(description)¶
Accessor to the description of the RandomVector.
- Parameters:
- descriptionstr or sequence of str
Describes the components of the RandomVector.
- setName(name)¶
Accessor to the object’s name.
- Parameters:
- namestr
The name of the object.
- setParameter(parameters)¶
Accessor to the parameter of the distribution.
- Parameters:
- parametersequence of float
Parameter values.
Examples using the class¶
Use the Importance Sampling algorithm
Test the design point with the Strong Maximum Test
Axial stressed beam : comparing different methods to estimate a probability