Data-driven multifidelity topology design with multi-channel variational auto-encoder for concurrent optimization of multiple design variable fields
The objective of this study is to establish a gradient-free topology optimization framework that facilitates more global solution searches to avoid entrapping in undesirable local optima, especially in problems with strong non-linearity. The framework utilizes a data-driven multifidelity topology de...
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Zusammenfassung: | The objective of this study is to establish a gradient-free topology
optimization framework that facilitates more global solution searches to avoid
entrapping in undesirable local optima, especially in problems with strong
non-linearity. The framework utilizes a data-driven multifidelity topology
design, where solution candidates resulting from low-fidelity optimization
problems are iteratively updated by a variational auto-encoder (VAE) and
high-fidelity (HF) evaluation. A key step in the solution update involves
constructing HF models by extruding VAE-generated material distributions to a
constant thickness (the HF modeling parameter) across all candidates, which
limits exploration of the parameter space and requires extensive parametric
studies outside the optimization loop. To achieve comprehensive optimization in
a single run, we propose a multi-channel image data architecture that stores
material distributions and HF modeling parameters in separate channels,
allowing simultaneous optimization of the HF parameter space. We demonstrated
the efficacy of the proposed framework by solving a maximum stress minimization
problem, characterized by strong non-linearity due to its minimax formulation. |
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DOI: | 10.48550/arxiv.2409.04692 |