2020
DOI: 10.1007/s00158-020-02770-6
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Accelerating gradient-based topology optimization design with dual-model artificial neural networks

Abstract: Topology optimization (TO) is a common technique used in free-form designs. However, conventional TO-based design approaches suffer from high computational cost due to the need for repetitive forward calculations and/or sensitivity analysis, which are typically done using high-dimensional simulations such as Finite Element Analysis (FEA). In this work, neural networks are used as efficient surrogate models for forward and sensitivity calculations in order to greatly accelerate the design process of topology op… Show more

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Cited by 49 publications
(16 citation statements)
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References 44 publications
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“…White et al [22] established a two-layered neural network model to map the geometrical parameters of microscale metamaterials to the element stiffness matrix. Qian et al [7] improved the above method and built a dual-model neural network to improve the accuracy of topology optimization.…”
Section: Surrogate-based Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…White et al [22] established a two-layered neural network model to map the geometrical parameters of microscale metamaterials to the element stiffness matrix. Qian et al [7] improved the above method and built a dual-model neural network to improve the accuracy of topology optimization.…”
Section: Surrogate-based Methodsmentioning
confidence: 99%
“…Traditional stiffness calculation methods mainly include mechanics calculation methods [4], empirical formula methods [5], finite element methods (FEM) [6] and surrogate-based methods [7]. However, due to the structural complexity, these methods are either inaccurate or time consuming, which is far away from the requirements of real manufacturing.…”
Section: Introductionmentioning
confidence: 99%
“…Sosnovik and Oseledets used DL to speed up conventional TO by [24] by using the results from some conventional TO iterations as input for the ANN. Qian and Ye accelerated conventional TO by utilizing surrogate models for forward and sensitivity calculations [25]. These approaches are indirect since some iterations are required.…”
Section: Deep Learning-based Topology Optimizationmentioning
confidence: 99%
“…Such an approach is not only inefficient in problems with many design variables, but also not suitable for problems in which good design solutions lie in an extremely small portion of the design space. How to efficiently generate training data to truly achieve time saving in design problems is an ongoing research topic [7]. In a recent work [8], a machine learning framework was developed for topology optimization, in which a deep neural network (DNN) was used to predict the sensitivity information required to update the design.…”
Section: Introductionmentioning
confidence: 99%