English

Deep convolutional neural network for shape optimization using level-set approach

Optimization and Control 2022-02-16 v3 Machine Learning

Abstract

This article presents a reduced-order modeling methodology via deep convolutional neural networks (CNNs) for shape optimization applications. The CNN provides a nonlinear mapping between the shapes and their associated attributes while conserving the equivariance of these attributes to the shape translations. To implicitly represent complex shapes via a CNN-applicable Cartesian structured grid, a level-set method is employed. The CNN-based reduced-order model (ROM) is constructed in a completely data-driven manner thus well suited for non-intrusive applications. We demonstrate our ROM-based shape optimization framework on a gradient-based three-dimensional shape optimization problem to minimize the induced drag of a wing in low-fidelity potential flow. We show a good agreement between ROM-based optimal aerodynamic coefficients and their counterparts obtained via a potential flow solver. The predicted behavior of the optimized shape is consistent with theoretical predictions. We also present the learning mechanism of the deep CNN model in a physically interpretable manner. The CNN-ROM-based shape optimization algorithm exhibits significant computational efficiency compared to the full-order model-based online optimization applications. The proposed algorithm promises to develop a tractable DL-ROM-driven framework for shape optimization and adaptive morphing structures.

Keywords

Cite

@article{arxiv.2201.06210,
  title  = {Deep convolutional neural network for shape optimization using level-set approach},
  author = {Wrik Mallik and Neil Farvolden and Jasmin Jelovica and Rajeev K. Jaiman},
  journal= {arXiv preprint arXiv:2201.06210},
  year   = {2022}
}
R2 v1 2026-06-24T08:51:55.251Z