A parallel geometric multigrid method for adaptive topology optimization

IF 3.6 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Structural and Multidisciplinary Optimization Pub Date : 2023-10-01 DOI:10.1007/s00158-023-03675-w
David Herrero-Pérez, Sebastián Ginés Picó-Vicente
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引用次数: 1

Abstract

Abstract This work presents an efficient parallel geometric multigrid (GMG) implementation for preconditioning Krylov subspace methods solving differential equations using non-conforming meshes for discretization. The approach does not constrain such meshes to the typical multiscale grids used by Cartesian hierarchical grid methods, such as octree-based approaches. It calculates the restriction and interpolation operators for grid transferring between the non-conforming hierarchical meshes of the cycle scheme. Using non-Cartesian grids in topology optimization, we reduce the mesh size discretizing only the design domain and keeping the geometry of boundaries in the final design. We validate the GMG method operating on non-conforming meshes using an adaptive density-based topology optimization method, which coarsens the finite elements dynamically following a weak material estimation criterion. The GMG method requires the generation of the hierarchical non-conforming meshes dynamically from the one used by the adaptive topology optimization to analyze to the one coarsening all the mesh elements until the coarsest level of the mesh hierarchy. We evaluate the performance of the adaptive topology optimization using the GMG preconditioner operating on non-conforming meshes using topology optimization on a fine-conforming mesh as the reference. We also test the strong and weak scaling of the parallel GMG preconditioner with two three-dimensional topology optimization problems using adaptivity, showing the computational advantages of the proposed method.
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一种并行几何多重网格自适应拓扑优化方法
摘要本文提出了一种有效的并行几何多网格(GMG)实现,用于预处理Krylov子空间方法,该方法使用非一致性网格进行离散化求解微分方程。该方法不局限于笛卡尔分层网格方法(如基于八叉树的方法)所使用的典型多尺度网格。计算了循环方案中不同层次网格间网格转换的约束算子和插值算子。在拓扑优化中采用非笛卡尔网格,减小了网格尺寸,只对设计域进行离散,并在最终设计中保持了边界的几何形状。采用基于自适应密度的拓扑优化方法,在弱材料估计准则下对有限元进行动态粗化,验证了GMG方法在非一致性网格上的有效性。GMG方法要求从自适应拓扑优化分析使用的分层网格到将所有网格元素粗化到网格层次的最粗层次,动态地生成分层不一致网格。我们以精细网格的拓扑优化为参考,评估了在非一致性网格上运行的GMG预调节器的自适应拓扑优化性能。通过两个三维拓扑优化问题对并行GMG预调节器的强弱尺度进行了自适应测试,证明了该方法的计算优势。
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来源期刊
Structural and Multidisciplinary Optimization
Structural and Multidisciplinary Optimization 工程技术-工程:综合
CiteScore
7.60
自引率
15.40%
发文量
304
审稿时长
3.6 months
期刊介绍: The journal’s scope ranges from mathematical foundations of the field to algorithm and software development, and from benchmark examples to case studies of practical applications in structural, aero-space, mechanical, civil, chemical, naval and bio-engineering. Fields such as computer-aided design and manufacturing, uncertainty quantification, artificial intelligence, system identification and modeling, inverse processes, computer simulation, bio-mechanics, bio-medical applications, nano-technology, MEMS, optics, chemical processes, computational biology, meta-modeling, DOE and active control of structures are covered when the topic is closely related to the optimization of structures or fluids. Structural and Multidisciplinary Optimization publishes original research papers, review articles, industrial applications, brief notes, educational articles, book reviews, conference diary, forum section, discussions on papers, authors´ replies, obituaries, announcements and society news.
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