Enhancing Data-driven Multiscale Topology Optimization with Generalized De-homogenization
Liwei Wang, Zhao Liu, Daicong Da, Yu-Chin Chan, Wei Chen, Ping Zhu

TL;DR
This paper introduces a data-driven de-homogenization approach that enables complex microstructure design and unit-cell orientation optimization for multiscale structures, significantly improving dynamic performance beyond static compliance minimization.
Contribution
It presents a novel neural network-based surrogate model and conformal mapping technique for efficient, high-resolution multiscale topology optimization involving complex microstructures and orientations.
Findings
Achieved high-efficiency multiscale structure generation.
Demonstrated improved frequency response performance.
First application of sawtooth functions in de-homogenization for complex designs.
Abstract
De-homogenization is becoming an effective method to significantly expedite the design of high-resolution multiscale structures, but existing methods have thus far been confined to simple static compliance minimization. There are two critical challenges to be addressed in accommodating general cases: enabling the design of unit-cell orientation and using free-form microstructures. In this paper, we propose a data-driven de-homogenization method that allows effective design of the unit-cell orientation angles and conformal mapping of spatially varying, complex microstructures. We devise a parameterized microstructure composed of rods in different directions to provide more diversity in stiffness while retaining geometrical simplicity. The microstructural geometry-property relationship is then surrogated by a neural network to avoid costly homogenization. A Cartesian representation of the…
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Taxonomy
TopicsTopology Optimization in Engineering · Advanced Numerical Analysis Techniques
