BlueM.Opt: Difference between revisions

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__NOTOC__
__NOTOC__
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[[Bild:Simulation-based-optimization.png|thumb|Simulation-based optimization]]
[[File:Simulation-based-optimization.png|thumb|Simulation-based optimization]]
[[Bild:EVO Box screenshot.png|thumb|Screenshot]]
[[File:EVO Box screenshot.png|thumb|Screenshot]]
[[File:Scatterplot screenshot.png|thumb|Scatterplot Matrix]]
==Description==
==Description==
BlueM.Opt is an optimization framework that can be coupled with an arbitrary simulation software (only current requirement: input data and results are to be stored in ASCII format). The optimization parameters, objective functions and (optionally) boundary conditions are defined in a flexible manner.
BlueM.Opt is an optimization framework that can be coupled with an arbitrary simulation software (only current requirement: input data and results are to be stored in ASCII format). The optimization parameters, objective functions and (optionally) boundary conditions are defined in a flexible manner.

Revision as of 07:35, 7 September 2009

EVO.png BlueM.Opt | Download | Usage | Development

Simulation-based optimization
Screenshot
Scatterplot Matrix

Description

BlueM.Opt is an optimization framework that can be coupled with an arbitrary simulation software (only current requirement: input data and results are to be stored in ASCII format). The optimization parameters, objective functions and (optionally) boundary conditions are defined in a flexible manner.

Optimization results are stored in a database.

BlueM.Opt integrates a graphing feature for displaying the optimization progress and results. Optimization results can also be analyzed in detail.

Where possible, BlueM.Opt utilizes multithreading in order to evaluate multiple parameter sets simultaneously.

List of available methods (optimization algorithms):

  • PES: Parametric Evolution Strategy
  • CES: Combinatorial Evolution Strategy
  • HYBRID: Combination of PES and CES
  • Hooke & Jeeves: Hillclimbing Algorithm
  • MetaEvo: multicritera, hybrid optimization algorithm
  • DDS: Dynamically Dimensioned Search

another method is

List of currently implemented applications (simulation models):

Downloads

Usage

Development

Internal