LGJun 25, 2021

A mechanistic-based data-driven approach to accelerate structural topology optimization through finite element convolutional neural network (FE-CNN)

arXiv:2106.13652v11 citations
Originality Incremental advance
AI Analysis

This addresses the curse-of-dimensionality in density-based structural topology optimization, offering a domain-specific incremental improvement for engineering design.

The paper tackles the computational inefficiency of structural topology optimization by proposing a mechanistic data-driven approach using a finite element convolutional neural network (FE-CNN), which accelerates optimization by up to an order of magnitude in computational time.

In this paper, a mechanistic data-driven approach is proposed to accelerate structural topology optimization, employing an in-house developed finite element convolutional neural network (FE-CNN). Our approach can be divided into two stages: offline training, and online optimization. During offline training, a mapping function is built between high and low resolution representations of a given design domain. The mapping is expressed by a FE-CNN, which targets a common objective function value (e.g., structural compliance) across design domains of differing resolutions. During online optimization, an arbitrary design domain of high resolution is reduced to low resolution through the trained mapping function. The original high-resolution domain is thus designed by computations performed on only the low-resolution version, followed by an inverse mapping back to the high-resolution domain. Numerical examples demonstrate that this approach can accelerate optimization by up to an order of magnitude in computational time. Our proposed approach therefore shows great potential to overcome the curse-of-dimensionality incurred by density-based structural topology optimization. The limitation of our present approach is also discussed.

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