Python package to model and to perform topology optimization for graphene kirigami using deep learning. We use convolutional neural networks (similar to VGGNet architecure) for regression.
See our published paper:
- P. Z. Hanakata, E. D. Cubuk, D. K. Campbell, H.S. Park, Accelerated search and design of stretchable graphene kirigami using machine learning, Phys. Rev. Lett, 121, 255304 (2018).
- P. Z. Hanakata, E. D. Cubuk, D. K. Campbell, H.S. Park, Forward and inverse design of kirigami via supervised autoencoder, Phys. Rev. Research, 121, 255304 (2018).
- Data generation and data handling
- A jupyter notebook to generate atomic configurations for LAMMPS input file is avalaible in
generate_LAMMPS_input/generate_LAMMPS_configuration_input.ipynb
. New methods to generate parallel cuts are now avalaible. - A simple jupyter notebook to convert coarse-grained dataset to fine-grid dataset is avalaible in
models/regression_CNN/convert_coarse_to_fine.ipynb
- Regression and optimization
- A python code to perform regression with TensorFlow is avalaible in
models/regression_CNN/tf_fgrid_dnn_validtrain.py
- A python code to perform search optimal design with TensorFlow is avalaible in
models/regression_CNN/tf_cnn_search_large_v2.py
- A simple jupyter notebook to perform predictions with scikit-learn package is avalaible in
models/simple/simple_machine_learning.ipynb
- Dataset
- Raw dataset of coarse-grained grid can be found in
mddata
. This dataset generated using AIREBO potential with 1.7 mincutoff which is the default of CH.airebo.
- Supervised Autoencoder
- A sAE notebook to perform forward and inverse design is now avaliable in
models_supervisedAutoencoder_forwardInverseDesign/supervisedAE_for_kirigamiDesign.ipynb
. See notebook for details of the code.
This package is still under developement. More features will be added soon.
git clone https://github.com/phanakata/ML_for_kirigami_design.git
Paul Hanakata
If you use this package/code/dataset, build on or find our research is useful for your work please cite
@article{hanakata-PhysRevLett.121.255304,
title = {Accelerated Search and Design of Stretchable Graphene Kirigami Using Machine Learning},
author = {Hanakata, Paul Z. and Cubuk, Ekin D. and Campbell, David K. and Park, Harold S.},
journal = {Phys. Rev. Lett.},
volume = {121},
issue = {25},
pages = {255304},
numpages = {6},
year = {2018},
month = {Dec},
publisher = {American Physical Society},
doi = {10.1103/PhysRevLett.121.255304},
url = {https://link.aps.org/doi/10.1103/PhysRevLett.121.255304}
}
@article{PhysRevResearch.2.042006,
title = {Forward and inverse design of kirigami via supervised autoencoder},
author = {Hanakata, Paul Z. and Cubuk, Ekin D. and Campbell, David K. and Park, Harold S.},
journal = {Phys. Rev. Research},
volume = {2},
issue = {4},
pages = {042006},
numpages = {6},
year = {2020},
month = {Oct},
publisher = {American Physical Society},
doi = {10.1103/PhysRevResearch.2.042006},
url = {https://link.aps.org/doi/10.1103/PhysRevResearch.2.042006}
}