A toolkit for processing 3D components made with mixtures of materials and multiple manufacturing processes
Project description
VoxelFuse is a Python library for processing multi-material 3D model data. It includes the tools needed for a complete workflow from design to part fabrication, including part composition, manufacturing planning, design simulation, mesh generation, and file export. This library allows scripts to be quickly created for processing different classes of models and generating the files needed to produce them.
Created as part of a research project with IDEAlab at ASU.
Example Applications
Design of a part with embedded electronic components
Generation of blurred material transitions
Features
Model Composition
- Primitive solid generation
- Triply periodic structure generation
- Mesh file import
- Import of the .vox voxel file format
- Import of native .vf file format
Model Modification
- Boolean operations for both volumes and materials
- Transformation operations
- Morphology operations
- Gaussian blurring
- Dithering
Manufacturing Planning
Simulation
- VoxCad simulation configuration
- Integrated simulation engine based on Voxelyze
- Simulation features include stress analysis, physics, and thermal actuation
- Automated execution of individual and multiprocess simulation tasks
- Logging of "sensor" voxels and model position throughout simulation
- Export to .vxc and .vxa files
Mesh Generation
- Conversion of voxel faces to mesh surfaces
- Conversion of voxel data to a mesh using a marching cubes algorithm
- Mesh simplification
- Mesh rendering with grids and axes using PyQt and OpenGL
- Mesh plotting in Jupyter Notebook
- Mesh file export
Installation
The voxelfuse library can be installed using pip.
pip3 install voxelfuse
Gmsh is used for mesh file import and Windows/Linux binaries are included with the library.
VoxCad is used for running interactive simulations in a GUI. Windows/Linux binaries are included with the library.
A custom version of Voxelyze is used for most simulation features. Windows/Linux binaries are included with the library. To use multiprocess simulation features on Windows, WSL must be configured.
voxcraft-viz can be used to view simulation history files (must be installed separately).
Jupyter Notebook is used for some examples.
Templates
Base template for creating scripts:
# Import Library
import voxelfuse as vf
# Start Application
if __name__=='__main__':
# Create Models
model = vf.sphere(5)
# Process Models
modelResult = model.dilate(3, vf.Axes.XY)
# Create and Export Mesh
mesh = vf.Mesh.fromVoxelModel(modelResult)
mesh.export('modelResult.stl')
# Create Plot
mesh.viewer(grids=True, name='mesh')
Template for creating scripts using VoxCad simulation:
# Import Library
import voxelfuse as vf
# Start Application
if __name__=='__main__':
# Create Models
model = vf.sphere(5)
# Process Models
modelResult = model.dilate(3, vf.Axes.XY)
modelResult = modelResult.translate((0, 0, 20))
# Create simulation and launch
simulation = vf.Simulation(modelResult)
simulation.runSimVoxCad()
Usage
See cdbrauer.github.io/VoxelFuse for library documentation.
See cdbrauer.github.io/VoxelFuse/voxelfuse_examples for a list of the example scripts.
.vox File Generation
If desired, input models can be created in a .vox file format to allow different materials to be specified in a single model. This also speeds up import times compared to mesh files. My process using MagicaVoxel is as follows:
- Use the "Open" button under the "Palette" section to open the color-palette.png file. This will give you a set of colors that correspond to the materials defined in materials.py
- Create your model. By default, the library will use a scale of 1mm per voxel when importing/exporting, but this can be changed if necessary.
- Save the model as a .vox file using the "export" function (NOT the "save" function).
Using MagicaVoxel and the .vox format will limit you to using distinct voxel materials. The library's import function will convert these files to a data format that allows material mixing.
Papers
For more information about our work, please see:
Brauer, C., & Aukes, D. M. (2020). Automated Generation of Multi-Material Structures Using the VoxelFuse Framework. Symposium on Computational Fabrication, 1–8. https://doi.org/10.1145/3424630.3425417
Brauer, C. (2020). Automated Design of Graded Material Transitions for Educational Robotics Applications [PQDT-Global]. https://search.proquest.com/openview/3be6eafdf193c7b7271ccf714d51da9d
Brauer, C., & Aukes, D. M. (2019). Voxel-Based CAD Framework for Planning Functionally Graded and Multi-Step Rapid Fabrication Processes. Volume 2A: 45th Design Automation Conference, 2A-2019. https://doi.org/10.1115/DETC2019-98103
To cite this library, consider using:
Brauer, C., Aukes, D., Brauer, J., & Jeffries, C. (2020). VoxelFuse. https://github.com/cdbrauer/VoxelFuse
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