2021
DOI: 10.3390/ma14164551
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Integrating Geometric Data into Topology Optimization via Neural Style Transfer

Abstract: This research proposes a novel topology optimization method using neural style transfer to simultaneously optimize both structural performance for a given loading condition and geometric similarity for a reference design. For the neural style transfer, the convolutional layers of a pre-trained neural network extract and quantify characteristic features from the reference and input designs for optimization. The optimization analysis is evaluated as a single weighted objective function with the ability for the u… Show more

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Cited by 15 publications
(5 citation statements)
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References 34 publications
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“…Within generative design, the generator can also be considered as a reparametrization of the design space that reduces the number of design variables. With autoencoders, the latent vector serves as the design parameter [553,554], which is then optimized 25 . Similarly, [556] find that point cloud autoencoders [117,557,558] are advantageous as geometric dimensionality reduction tools (potentially combined with performance features) for efficiently exploring the design space.…”
Section: Generative Design and Design Optimizationmentioning
confidence: 99%
“…Within generative design, the generator can also be considered as a reparametrization of the design space that reduces the number of design variables. With autoencoders, the latent vector serves as the design parameter [553,554], which is then optimized 25 . Similarly, [556] find that point cloud autoencoders [117,557,558] are advantageous as geometric dimensionality reduction tools (potentially combined with performance features) for efficiently exploring the design space.…”
Section: Generative Design and Design Optimizationmentioning
confidence: 99%
“…This method also pre-trains the convolutional layers of the neural network and extracts quantitative features from the reference and input data to perform structural optimization. Test results show that the use of this method to optimize the design of mechanical components resulted in the production of components with a 16.7% reduction in dead weight with only a 2.82% increase in maximum stress [26].…”
Section: Related Workmentioning
confidence: 99%
“…This Special Issue contains eleven articles, including three reviews [ 3 , 4 , 5 ], one perspective article [ 6 ], and seven research articles [ 7 , 8 , 9 , 10 , 11 , 12 , 13 ] from leading institutes in the United States, China, Australia, Germany, Sweden, the Netherlands, Slovakia, the Czech Republic, Egypt, and United Arab Emirates. These articles cover the 3D printing of diverse materials such as metallic materials [ 5 , 7 , 8 , 9 , 10 , 11 , 12 , 13 ], composites [ 4 , 6 ], and soft materials [ 3 ].…”
Section: Contributions To This Special Issuementioning
confidence: 99%
“…The articles in this Special Issue cover a wide variety of experimental [ 8 , 9 , 10 , 11 , 13 ], theoretical [ 12 ], and data-science [ 7 ]-based research on the science and technology of 3D printing. For example, experimental investigations were performed to identify the most important factors that affect the microstructure and properties of Ti-6Al-4V parts printed using powder bed fusion [ 9 , 11 ].…”
Section: Contributions To This Special Issuementioning
confidence: 99%