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Global Pattern Search for alpha-level Optimisation

The Global Pattern Search for alpha-level Optimisation (aGPS) is a global optimisation approach explicitly designed for efficient and user-friendly alpha-level optimisations. It can be used to improve the efficiency of fuzzy structural analyses. The efficiency of aGPS stems from its deterministic sample generation, which allows a reuse of many samples within the various alpha-level optimisations. Moreover, information gained within an alpha-level optimisation is used for all subsequent optimisations. It outperforms state-of-the-art algorithms. This means that it requires less model evaluations, and therefore, it has lower computing times. Here, the entire source code for its implementation in MATLAB is given. For further information, it is referred to "Huebler, C., & Hofmeister, B. (2021). Efficient and user-friendly alpha-level optimisation for application-orientated fuzzy structural analyses. Submitted to Engineering Structures."

Data and Resources

Cite this as

Clemens Hübler, Benedikt Hofmeister (2020). Dataset: Global Pattern Search for alpha-level Optimisation. https://doi.org/10.25835/0043276

DOI retrieved: December 8, 2020

Additional Info

Field Value
Imported on October 14, 2021
Last update January 12, 2023
License CC-BY-SA-3.0
Source https://data.uni-hannover.de/dataset/global-pattern-search-for-alpha-level-optimisation
Author Clemens Hübler, Benedikt Hofmeister
Author Email Clemens Hübler, Benedikt Hofmeister
Maintainer Clemens Hübler
Maintainer Email Clemens Hübler
Source Creation 12 November, 2020, 09:01 AM (UTC+0000)
Source Modified 24 June, 2022, 05:41 AM (UTC+0000)