@inproceedings{Silverman:2025:RandomWalkMicrostructures, author = {Silverman, Samuel and Balter, Dylan and Brown, Keith A. and Whiting, Emily}, title = {Random-Walk Microstructures for Differentiable Topology Optimization}, year = {2025}, isbn = {9798400720345}, publisher = {Association for Computing Machinery}, address = {New York, NY, USA}, url = {https://doi.org/10.1145/3745778.3766645}, doi = {10.1145/3745778.3766645}, abstract = {This paper presents a differentiable pipeline for topology optimization of high-resolution mechanical metamaterials on grid domains, enabling complete geometric freedom within a fixed-resolution design space. Our method begins with a microstructure generation procedure based on random walks, which avoids hand-crafted parameterizations and populates the design space without strong geometric priors, yielding a diverse set of mechanically meaningful microstructures. We train a convolutional neural network to predict homogenized stiffness tensors from these microstructures, enabling a fast and differentiable approximation of mechanical behavior without the need for finite element solves. By plugging this surrogate into a topology optimization loop, we can backpropagate through mechanical objectives and discover high-resolution, fabricable designs across a wide range of densities and target behaviors. We demonstrate our pipeline’s inverse design capabilities, producing microstructures with both isotropic and anisotropic stiffness, and validate our predictions through mechanical testing.}, booktitle = {Proceedings of the ACM Symposium on Computational Fabrication}, articleno = {25}, numpages = {11}, keywords = {microstructures, random walks, inverse design, neural networks, homogenization}, location = {}, series = {SCF '25} }