Publication | Open Access
Efficient, high-resolution topology optimization method based on convolutional neural networks
43
Citations
60
References
2021
Year
High ResolutionEngineeringMechanical EngineeringAbstract Topology OptimizationComputer-aided DesignStructural OptimizationComputational MechanicsMesh OptimizationShape OptimizationPath ExtractionComputational GeometryGeometric ModelingComputer EngineeringLarge Scale OptimizationDeep LearningTopology OptimizationNatural SciencesConvolutional Neural NetworksStructural TopologySolid Modeling
Abstract Topology optimization is a pioneer design method that can provide various candidates with high mechanical properties. However, high resolution is desired for optimum structures, but it normally leads to a computationally intractable puzzle, especially for the solid isotropic material with penalization (SIMP) method. In this study, an efficient, high-resolution topology optimization method is developed based on the superresolution convolutional neural network (SRCNN) technique in the framework of SIMP. SRCNN involves four processes, namely, refinement, path extraction and representation, nonlinear mapping, and image reconstruction. High computational efficiency is achieved with a pooling strategy that can balance the number of finite element analyses and the output mesh in the optimization process. A combined treatment method that uses 2D SRCNN is built as another speed-up strategy to reduce the high computational cost and memory requirements for 3D topology optimization problems. Typical examples show that the high-resolution topology optimization method using SRCNN demonstrates excellent applicability and high efficiency when used for 2D and 3D problems with arbitrary boundary conditions, any design domain shape, and varied load.
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