Self-Directed Online Machine Learning for Topology Optimization
- URL: http://arxiv.org/abs/2002.01927v8
- Date: Wed, 26 Jan 2022 03:07:40 GMT
- Title: Self-Directed Online Machine Learning for Topology Optimization
- Authors: Changyu Deng, Yizhou Wang, Can Qin, Yun Fu, Wei Lu
- Abstract summary: Self-directed Online Learning Optimization integrates Deep Neural Network (DNN) with Finite Element Method (FEM) calculations.
Our algorithm was tested by four types of problems including compliance minimization, fluid-structure optimization, heat transfer enhancement and truss optimization.
It reduced the computational time by 2 5 orders of magnitude compared with directly using methods, and outperformed all state-of-the-art algorithms tested in our experiments.
- Score: 58.920693413667216
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Topology optimization by optimally distributing materials in a given domain
requires non-gradient optimizers to solve highly complicated problems. However,
with hundreds of design variables or more involved, solving such problems would
require millions of Finite Element Method (FEM) calculations whose
computational cost is huge and impractical. Here we report Self-directed Online
Learning Optimization (SOLO) which integrates Deep Neural Network (DNN) with
FEM calculations. A DNN learns and substitutes the objective as a function of
design variables. A small number of training data is generated dynamically
based on the DNN's prediction of the optimum. The DNN adapts to the new
training data and gives better prediction in the region of interest until
convergence. The optimum predicted by the DNN is proved to converge to the true
global optimum through iterations. Our algorithm was tested by four types of
problems including compliance minimization, fluid-structure optimization, heat
transfer enhancement and truss optimization. It reduced the computational time
by 2 ~ 5 orders of magnitude compared with directly using heuristic methods,
and outperformed all state-of-the-art algorithms tested in our experiments.
This approach enables solving large multi-dimensional optimization problems.
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