Skip to content
forked from aimclub/GEFEST

Toolbox for the generative design of geometrically-encoded physical objects using numerical modelling and evolutionary optimization

License

Notifications You must be signed in to change notification settings

DenisSidoren/GEFEST

 
 

Repository files navigation

Logo of GEFEST framework

docs Documentation Status
license
Supported Python Versions
support

GEFEST (Generative Evolution For Encoded STructures) is a toolbox for the generative design of physical objects.

It uses: (1) numerical modelling to simulate the interaction between object and environment; (2) evolutionary optimization to produce new variants of geometrically-encoded structures.

The basic abstractions in GEFEST are Point, Polygon, Structure and Domain.

The workflow of the generative design is the following:

workflow

Acknowledgments

We acknowledge the contributors for their important impact and the participants of the numerous scientific conferences and workshops for their valuable advice and suggestions.

Contacts

Citation

@inproceedings{nikitin2021generative, title={Generative design of microfluidic channel geometry using evolutionary approach}, author={Nikitin, Nikolay O and Hvatov, Alexander and Polonskaia, Iana S and Kalyuzhnaya, Anna V and Grigorev, Georgii V and Wang, Xiaohao and Qian, Xiang}, booktitle={Proceedings of the Genetic and Evolutionary Computation Conference Companion}, pages={59--60}, year={2021} }

@article{nikitin2020multi, title={The multi-objective optimisation of breakwaters using evolutionary approach}, author={Nikitin, Nikolay O and Polonskaia, Iana S and Kalyuzhnaya, Anna V and Boukhanovsky, Alexander V}, journal={arXiv preprint arXiv:2004.03010}, year={2020} }

About

Toolbox for the generative design of geometrically-encoded physical objects using numerical modelling and evolutionary optimization

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 98.2%
  • Batchfile 1.8%