• Complex
  • Title
  • Keyword
  • Abstract
  • Scholars
  • Journal
  • ISSN
  • Conference
成果搜索
High Impact Results & Cited Count Trend for Year Keyword Cloud and Partner Relationship

Query:

学者姓名:项程

Refining:

Year

Submit Unfold

Type

Submit Unfold

Indexed by

Submit Unfold

Complex

Submit Unfold

Language

Submit

Clean All

Sort by:
Default
  • Default
  • Title
  • Year
  • WOS Cited Count
  • Impact factor
  • Ascending
  • Descending
< Page ,Total 1 >
A two-stage network framework for topology optimization incorporating deep learning and physical information SCIE
期刊论文 | 2024 , 133 | ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE
Abstract&Keyword Cite

Abstract :

The advent of deep learning provides a promising opportunity to improve the efficiency of topology optimization. However, existing methods make it difficult to achieve a balance between efficiency, accuracy, and generalization ability. To tackle this challenge, we propose a novel method based on a two -stage network framework. In the network, the partial convolution block and shifted windows attention mechanism are integrated to improve the model performance. In the first stage, a convolutional neural network -based model trained with a novel -designed loss function is employed to achieve real-time prediction of suboptimal structures. In the second stage, transfer learning is introduced to inherit the output of the first stage. Subsequently, the second stage optimizes the suboptimal structures to get the final optimal structures in a physical information -driven way. On the 2000 dataset, the two -stage method achieves an average compliance error of -1.45%, and 95.5% of the optimal structures perform better than that obtained by the traditional method and strictly meet volume constraints while eliminating structural disconnections. Finally, the proposed method is applied to a real -world engineering application for the first time, and the design of bridge pylons is given as an example. The results show that the proposed method is a promising exploration of topology optimization based on deep learning.

Keyword :

Bridge pylon design Bridge pylon design Convolutional neural network Convolutional neural network Deep learning Deep learning Physical information Physical information Self-attention mechanism Self-attention mechanism Topology optimization Topology optimization

Cite:

Copy from the list or Export to your reference management。

GB/T 7714 Wang, Dalei , Ning, Yun , Xiang, Cheng et al. A two-stage network framework for topology optimization incorporating deep learning and physical information [J]. | ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , 2024 , 133 .
MLA Wang, Dalei et al. "A two-stage network framework for topology optimization incorporating deep learning and physical information" . | ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE 133 (2024) .
APA Wang, Dalei , Ning, Yun , Xiang, Cheng , Chen, Airong . A two-stage network framework for topology optimization incorporating deep learning and physical information . | ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , 2024 , 133 .
Export to NoteExpress RIS BibTex

Version :

10| 20| 50 per page
< Page ,Total 1 >

Export

Results:

Selected

to

Format:
Online/Total:266/7275234
Address:FZU Library(No.2 Xuyuan Road, Fuzhou, Fujian, PRC Post Code:350116) Contact Us:0591-22865326
Copyright:FZU Library Technical Support:Beijing Aegean Software Co., Ltd. 闽ICP备05005463号-1