GM-TOuNN: Graded Multiscale Topology Optimization using Neural Networks
Aaditya Chandrasekhar, Saketh Sridhara, Krishnan Suresh

TL;DR
This paper introduces GM-TOuNN, a neural network-based framework for graded multiscale topology optimization that reduces computational costs and efficiently manages multiple microstructures while satisfying design constraints.
Contribution
It presents a novel neural network approach for GM-TO that handles numerous microstructures efficiently and enforces partition of unity without manual sensitivity analysis.
Findings
Reduces computational cost compared to traditional M-TO
Ensures partition of unity and discourages microstructure mixing
Supports automatic differentiation for sensitivity analysis
Abstract
Multiscale topology optimization (M-TO) entails generating an optimal global topology, and an optimal set of microstructures at a smaller scale, for a physics-constrained problem. With the advent of additive manufacturing, M-TO has gained significant prominence. However, generating optimal microstructures at various locations can be computationally very expensive. As an alternate, graded multiscale topology optimization (GM-TO) has been proposed where one or more pre-selected and graded (parameterized) microstructural topologies are used to fill the domain optimally. This leads to a significant reduction in computation while retaining many of the benefits of M-TO. A successful GM-TO framework must: (1) be capable of efficiently handling numerous pre-selected microstructures, (2) be able to continuously switch between these microstructures during optimization, (3) ensure that the…
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Taxonomy
TopicsTopology Optimization in Engineering
