AdaptiveDirectionalStratification¶
- class AdaptiveDirectionalStratification(*args)¶
Adaptive directional simulation.
- Parameters:
- event
RandomVector
Event we are computing the probability of.
- rootStrategy
RootStrategy
, optional Strategy adopted to evaluate the intersections of each direction with the limit state function and take into account the contribution of the direction to the event probability. Set to
SafeAndSlow
by default.- samplingStrategy
SamplingStrategy
, optional Strategy adopted to sample directions. Set to
RandomDirection
by default.
- event
See also
Notes
Let denote the failure domain defined as , where are realization of the random vector and is the limit-state function as defined elsewhere in the documentation.
The purpose of the ADS-2 algorithm and its variants is to estimate the following probability:
Principles
The ADS-2 method [munoz2011] combines the stratified and directional sampling concepts. Stratified sampling consists in splitting the support of the random vector into mutually exclusive and collectively exhaustive subsets. Here, ADS-2 splits the standard space into quadrants, where is the dimension of the random vector . Stratified sampling is often run in two steps: (i) a learning step is used for polling the input space and detect the subsets that contribute most to the probability and (ii) an estimation step is used for estimating the probability by weighted sampling (some subsets are more sampled than the others). Directional sampling uses the spheric symmetry of the standard space for estimating the failure probability as the average of conditional probabilities calculated on directions drawn at random in the standard space.
The learning step uses an a priori number of random directions that is uniformly distributed over the quadrants, meaning the weights are as follows:
Directional sampling is used for estimating the failure probability in each quadrant:
and the corresponding estimation variances are denoted as . These probabilities are estimated using the same number of random directions per quadrant as told by the uniform weights distribution.
The probability of interest is then computed as a weighted average of the previously defined conditional probabilities:
where is the conditional probability estimator in the i-th quadrant. The corresponding variance of the stratified estimator reads:
where is the variance of the conditional probability estimator in the i-th quadrant.
At the end of the learning step, the weights are updated so as to minimize the stratified estimator variance. Indeed, it can be shown that the updated weights:
minimize the final estimation variance in eqref{eq:pf_est_sda2_var}. Note that some weights might be zero (due to a somewhat arbitrary rounding of the conditional probabilities’ estimation variance). The quadrants associated with a zero-weight will not be sampled in the estimation step.
Eventually, the estimation step proceeds in essentially the same way as the learning step with different weights for the quadrants though. eqref{eq:pf_est_sda2} and eqref{eq:pf_est_sda2_var} are used for evaluating the final probability probability estimate and its variance.
The computational budget per step is parametrized by a fraction of the total budget , such that . The number of directions sampled in quadrant at step is then defined as follows:
The number of evaluation of the limit-state function is of course greater than the total budget since directional sampling is used.
Variants
The ADS-2+ variant performs a dimension reduction step after the learning step for reducing the number of stratified quadrants. The statistic aggregates the sensitivity of expectation along dimension . It is defined as follows:
It is used for ranking the contributions of the quadrants. Then, only the most influential variables according to are stratified, leaving the remaining variables simulated without stratification. The corresponding quadrants will not be sampled.
The DP-ADS-2 variant combines the ADS method with a rotation of the quadrants. The idea is to get a possible design point (available e.g. after a preliminary FORM analysis) on the bisector of one of the quadrants to make the stratification even more efficient and thus save some evaluations of the model.
This 2-step algorithm can be generalized to steps by adding more than one learning step. For now, only ADS-2 is implemented.
Methods
drawProbabilityConvergence
(*args)Draw the probability convergence at a given level.
Accessor to the block size.
Accessor to the object's name.
Accessor to the convergence strategy.
getEvent
()Accessor to the event.
getGamma
()Gamma accessor.
Accessor to the maximum coefficient of variation.
Accessor to the maximum sample size.
Accessor to the maximum standard deviation.
Maximum stratification dimension accessor.
Accessor to the maximum duration.
getName
()Accessor to the object's name.
Partial stratification accessor.
Quadrant orientation accessor.
Accessor to the results.
Get the root strategy.
Get the direction sampling strategy.
T statistic accessor.
hasName
()Test if the object is named.
run
()Launch simulation.
setBlockSize
(blockSize)Accessor to the block size.
setConvergenceStrategy
(convergenceStrategy)Accessor to the convergence strategy.
setGamma
(gamma)Gamma accessor.
Accessor to the maximum coefficient of variation.
setMaximumOuterSampling
(maximumOuterSampling)Accessor to the maximum sample size.
Accessor to the maximum standard deviation.
Maximum stratification dimension accessor.
setMaximumTimeDuration
(maximumTimeDuration)Accessor to the maximum duration.
setName
(name)Accessor to the object's name.
setPartialStratification
(partialStratification)Partial stratification accessor.
setProgressCallback
(*args)Set up a progress callback.
setQuadrantOrientation
(quadrantOrientation)Quadrant orientation accessor.
setRootStrategy
(rootStrategy)Set the root strategy.
setSamplingStrategy
(samplingStrategy)Set the direction sampling strategy.
setStopCallback
(*args)Set up a stop callback.
- __init__(*args)¶
- drawProbabilityConvergence(*args)¶
Draw the probability convergence at a given level.
- Parameters:
- levelfloat, optional
The probability convergence is drawn at this given confidence length level. By default level is 0.95.
- Returns:
- grapha
Graph
probability convergence graph
- grapha
- getBlockSize()¶
Accessor to the block size.
- Returns:
- blockSizeint
Number of terms in the probability simulation estimator grouped together. It is set by default to 1.
- getClassName()¶
Accessor to the object’s name.
- Returns:
- class_namestr
The object class name (object.__class__.__name__).
- getConvergenceStrategy()¶
Accessor to the convergence strategy.
- Returns:
- storage_strategy
HistoryStrategy
Storage strategy used to store the values of the probability estimator and its variance during the simulation algorithm.
- storage_strategy
- getEvent()¶
Accessor to the event.
- Returns:
- event
RandomVector
Event we want to evaluate the probability.
- event
- getMaximumCoefficientOfVariation()¶
Accessor to the maximum coefficient of variation.
- Returns:
- coefficientfloat
Maximum coefficient of variation of the simulated sample.
- getMaximumOuterSampling()¶
Accessor to the maximum sample size.
- Returns:
- outerSamplingint
Maximum number of groups of terms in the probability simulation estimator.
- getMaximumStandardDeviation()¶
Accessor to the maximum standard deviation.
- Returns:
- sigmafloat,
Maximum standard deviation of the estimator.
- getMaximumStratificationDimension()¶
Maximum stratification dimension accessor.
- Returns:
- maxint
Maximum stratification dimension.
- getMaximumTimeDuration()¶
Accessor to the maximum duration.
- Returns:
- maximumTimeDurationfloat
Maximum optimization duration in seconds.
- getName()¶
Accessor to the object’s name.
- Returns:
- namestr
The name of the object.
- getPartialStratification()¶
Partial stratification accessor.
- Returns:
- partialStratificationbool
Partial stratification.
- getQuadrantOrientation()¶
Quadrant orientation accessor.
- Returns:
- orientation
Point
Quadrant orientation.
- orientation
- getResult()¶
Accessor to the results.
- Returns:
- results
SimulationResult
Structure containing all the results obtained after simulation and created by the method
run()
.
- results
- getRootStrategy()¶
Get the root strategy.
- Returns:
- strategy
RootStrategy
Root strategy adopted.
- strategy
- getSamplingStrategy()¶
Get the direction sampling strategy.
- Returns:
- strategy
SamplingStrategy
Direction sampling strategy adopted.
- strategy
- getTStatistic()¶
T statistic accessor.
The statistic aggregates the sensitivity of expectation.
- Returns:
- gamma
Point
T statistic value.
- gamma
- hasName()¶
Test if the object is named.
- Returns:
- hasNamebool
True if the name is not empty.
- run()¶
Launch simulation.
See also
Notes
It launches the simulation and creates a
SimulationResult
, structure containing all the results obtained after simulation. It computes the probability of occurrence of the given event by computing the empirical mean of a sample of size at most outerSampling * blockSize, this sample being built by blocks of size blockSize. It allows one to use efficiently the distribution of the computation as well as it allows one to deal with a sample size by a combination of blockSize and outerSampling.
- setBlockSize(blockSize)¶
Accessor to the block size.
- Parameters:
- blockSizeint,
Number of terms in the probability simulation estimator grouped together. It is set by default to 1.
Notes
For Monte Carlo, LHS and Importance Sampling methods, this allows one to save space while allowing multithreading, when available we recommend to use the number of available CPUs; for the Directional Sampling, we recommend to set it to 1.
- setConvergenceStrategy(convergenceStrategy)¶
Accessor to the convergence strategy.
- Parameters:
- storage_strategy
HistoryStrategy
Storage strategy used to store the values of the probability estimator and its variance during the simulation algorithm.
- storage_strategy
- setGamma(gamma)¶
Gamma accessor.
The computational budget per step .
- Parameters:
- gammasequence of float
Gamma value.
- setMaximumCoefficientOfVariation(maximumCoefficientOfVariation)¶
Accessor to the maximum coefficient of variation.
- Parameters:
- coefficientfloat
Maximum coefficient of variation of the simulated sample.
- setMaximumOuterSampling(maximumOuterSampling)¶
Accessor to the maximum sample size.
- Parameters:
- outerSamplingint
Maximum number of groups of terms in the probability simulation estimator.
- setMaximumStandardDeviation(maximumStandardDeviation)¶
Accessor to the maximum standard deviation.
- Parameters:
- sigmafloat,
Maximum standard deviation of the estimator.
- setMaximumStratificationDimension(maximumStratificationDimension)¶
Maximum stratification dimension accessor.
- Parameters:
- maxint
Maximum stratification dimension.
- setMaximumTimeDuration(maximumTimeDuration)¶
Accessor to the maximum duration.
- Parameters:
- maximumTimeDurationfloat
Maximum optimization duration in seconds.
- setName(name)¶
Accessor to the object’s name.
- Parameters:
- namestr
The name of the object.
- setPartialStratification(partialStratification)¶
Partial stratification accessor.
- Parameters:
- partialStratificationbool
Partial stratification.
- setProgressCallback(*args)¶
Set up a progress callback.
Can be used to programmatically report the progress of a simulation.
- Parameters:
- callbackcallable
Takes a float as argument as percentage of progress.
Examples
>>> import sys >>> import openturns as ot >>> experiment = ot.MonteCarloExperiment() >>> X = ot.RandomVector(ot.Normal()) >>> Y = ot.CompositeRandomVector(ot.SymbolicFunction(['X'], ['1.1*X']), X) >>> event = ot.ThresholdEvent(Y, ot.Less(), -2.0) >>> algo = ot.ProbabilitySimulationAlgorithm(event, experiment) >>> algo.setMaximumOuterSampling(100) >>> algo.setMaximumCoefficientOfVariation(-1.0) >>> def report_progress(progress): ... sys.stderr.write('-- progress=' + str(progress) + '%\n') >>> algo.setProgressCallback(report_progress) >>> algo.run()
- setQuadrantOrientation(quadrantOrientation)¶
Quadrant orientation accessor.
- Parameters:
- orientationsequence of float
Quadrant orientation.
- setRootStrategy(rootStrategy)¶
Set the root strategy.
- Parameters:
- strategy
RootStrategy
Root strategy adopted.
- strategy
- setSamplingStrategy(samplingStrategy)¶
Set the direction sampling strategy.
- Parameters:
- strategy
SamplingStrategy
Direction sampling strategy adopted.
- strategy
- setStopCallback(*args)¶
Set up a stop callback.
Can be used to programmatically stop a simulation.
- Parameters:
- callbackcallable
Returns an int deciding whether to stop or continue.
Examples
Stop a Monte Carlo simulation algorithm using a time limit
>>> import openturns as ot >>> experiment = ot.MonteCarloExperiment() >>> X = ot.RandomVector(ot.Normal()) >>> Y = ot.CompositeRandomVector(ot.SymbolicFunction(['X'], ['1.1*X']), X) >>> event = ot.ThresholdEvent(Y, ot.Less(), -2.0) >>> algo = ot.ProbabilitySimulationAlgorithm(event, experiment) >>> algo.setMaximumOuterSampling(10000000) >>> algo.setMaximumCoefficientOfVariation(-1.0) >>> algo.setMaximumTimeDuration(0.1) >>> algo.run()
Examples using the class¶
Use the Adaptive Directional Stratification Algorithm