4.7 Article

Machine Learning based parameter tuning strategy for MMC based topology optimization

Journal

ADVANCES IN ENGINEERING SOFTWARE
Volume 149, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.advengsoft.2020.102841

Keywords

Topology optimization; Moving morphable component; Machine Learning; Extra-Trees; Image classification; Parameter tuning

Funding

  1. National Natural Science Foundation of China [11972155, 11572120, 51621004]
  2. Key Projects of the Research Foundation of Education Bureau of Hunan Province [17A224]

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Moving Morphable Component (MMC) based topology optimization approach is an explicit algorithm since the boundary of the entity explicitly described by its functions. Compared with other pixel or node point-based algorithms, it is optimized through the parameter optimization of a Topological Description Function (TDF). However, the optimized results partly depend on the selection of related parameters of Method of Moving Asymptote (MMA), which is the optimizer of MMC based topology optimization. Practically, these parameters are tuned according to the experience and the feasible solution might not be easily obtained, even the solution might be infeasible due to improper parameter setting. In order to address these issues, a Machine Learning (ML) based parameter tuning strategy is proposed in this study. An Extra-Trees (ET) based image classifier is integrated to the optimization framework, and combined with Particle Swarm Optimization (PSO) algorithm to form a closed loop. It makes the optimization process be free from the manual parameter adjustment and the feasible solution in the design domain is obtained. In this study, two classical cases are presented to demonstrate the efficiency of the proposed approach.

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