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Dakota Reference Manual
Version 6.4
Large-Scale Engineering Optimization and Uncertainty Analysis
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Uses Latin Hypercube Sampling (LHS) to sample variables
Alias: none
Argument(s): none
The lhs
keyword invokes Latin Hypercube Sampling as the means of drawing samples of uncertain variables according to their probability distributions. This is a stratified, space-filling approach that selects variable values from a set of equi-probable bins.
Default Behavior
Latin Hypercube Sampling is the default sampling mode in most contexts (exception: multilevel_sampling). To explicitly specify LHS in the Dakota input file, the lhs
keyword must appear in conjunction with the sample_type
keyword.
Usage Tips
Latin Hypercube Sampling is very robust and can be applied to any problem. It is fairly effective at estimating the mean of model responses and linear correlations with a reasonably small number of samples relative to the number of variables.
method sampling sample_type lhs samples = 20