2024.1
Each approach in HyperStudy serves a different purpose in the design study.
View new features for HyperStudy 2024.1.
Learn the basics and discover the workspace.
Discover HyperStudy functionality with interactive tutorials.
Create, open, import, and save models.
A study is a self-contained project in which models, variables, output responses, and approaches are defined.
A DOE is a series of tests in which purposeful changes are made to the input variables to investigate their effect upon the output responses and to get an understanding of the global behavior of a design problem. By running a DOE, you can determine which factors are most influential on an output response.
A Fit is a mathematical model that is trained by data and is capable of predicting output response variables for a given set of input variables.
An Optimization is a mathematical procedure used to determine the best design for a set of given constraints, by changing the input variables in an automatic manner.
A Sampling Fit is a combination of space-filling DOE method and mathematical model trained by the data generated.
A Stochastic approach is a method of probabilistic analysis where the input variables are defined by a probability distribution, and consequently the corresponding output responses are not a single deterministic value, but a distribution.
A Basic approach can be used to test nominal values and bounds by performing a nominal run, system bound check, or sweep.
A Verification approach compares two data sets in a side by side comparison.
A PhysicsAI approach is used to build fast predictive models from simulation data.
Customize HyperStudy by registering solver scripts, functions, and optimizers, and defining user preferences files.
Keyboard shortcuts used to access HyperStudy features.
This section provides quick responses to typical and frequently asked questions regarding HyperStudy.
View All Altair HyperWorks Help