Abstract:
Among the various structural optimization tools, topology optimization is the
widely used technique in obtaining the initial design of structural components.
The resulting topologically optimal initial design will be the input for subsequent
structural optimizations such as shape, size and layout optimizations. However,
iterative solvers used in conventional topology optimization schemes are
known to be computationally expensive, thus act as a bottleneck in themanufacturing
process. In this paper, a novel deep learning-based accelerated topology
optimization technique with the ability to predict ductile material failure is presented.
A Conditional Generative Adversarial Network (cGAN) coupled with
a Convolutional Neural Network (CNN) is used to predict the optimal topology
of a given structure subject to a set of input variables. Subsequently, the
same cGAN is trained to predict the Von-Mises stress contours on the optimal
structure by means of color transformed image-to-image translations. The ductile
failure criterion is evaluated by comparing the cGAN predicted maximum
Von-Mises stress with the yield strength of the material. The proposed novel
numericalmethod is proven to arrive at the topologically optimal design, accompanying
the material failure decision within a negligible amount of time but also
maintaining a higher prediction accuracy.
Citation:
Herath, S., & Haputhanthri, U. (2021). Topologically optimal design and failure prediction using conditional generative adversarial networks. International Journal for Numerical Methods in Engineering, 122, 6867–6887. https://doi.org/10.1002/nme.6814