Easily generate renders of lattices, moiré lattices and even quasi-lattices in Python.
Documentation: https://moire-lattice-generator.readthedocs.io
Magic angle bilayer graphene was shown to be superconducting in 2018 [1]. Despite the considerable hype concerning this discovery, little code exists to visualize the moiré pattern of two graphene layers.
To illustrate the work as done in our own paper "Direct evidence for flat bands in twisted bilayer graphene from nano-ARPES" (arXiv version here), I created this repository.
This repository contains Python code to generate lattices with values reasonably like experimental (e.g. STM or TEM) results. If you are looking to generate more schematic like hexagonal lattice drawings, have a look at @alexkaz2's excellent hexalattice.
- Trigonal, hexagonal, square lattices as well as quasi lattices can be created and combined.
- Linear distortions, such as a uniaxial strain along an arbitrary direction and rotations are supported. In addition, arbitrary deformations can be rendered (by passing a deformation tensor to the
shift
parameter). - Edge dislocations can be added to the lattice as well.
A simple Python notebook to interactively generate visualizations of moire patterns of hexagonal lattices at different angles is included.
A high resolution resulting movie of varying twist angle can be found here.
Furthermore, the effect of uniaxial deformation along a single direction as described in e.g. "Measuring local moiré lattice heterogeneity of twisted bilayer graphene " can be visualized.
Click the "Launch binder" button above to open an interactive notebook directly in your browser. (Note: performance in the mybinder environment is somewhat slow. Download and run the notebook on a local machine for better performance.)
The package is available on pypi:
pip install latticegen
If you want to install from source, that is of course also possible:
git clone https://github.com/TAdeJong/moire-lattice-generator.git
cd moire-lattice-generator
pip install .
If you want to be able to play around with the functions themselves, consider using pip install -e .
.
Not yet available in conda-forge, but you can install it in a conda environment using pip. There is an environment.yml
located in the binder folder in this project which can be used to create the environment:
conda env create -f binder/environment.yml
This project uses pytest
and hypothesis
to run tests.
Install the test dependencies:
$ pip install -r requirements_test.txt
To run the tests:
$ pytest
Releases are published to PyPI by github actions when a tag is pushed to GitHub. (Note: we are using versioneer for version management)
This work was financially supported by the Netherlands Organisation for Scientific Research (NWO/OCW) as part of the Frontiers of Nanoscience (NanoFront) program.