Topology optimization using the discrete element method. Part 1: Methodology, validation, and geometric nonlinearity

被引:0
|
作者
Connor O’Shaughnessy
Enrico Masoero
Peter D. Gosling
机构
[1] Newcastle University,School of Engineering
[2] Cardiff University,School of Engineering
来源
Meccanica | 2022年 / 57卷
关键词
Topology optimization; Discrete element method; Granular material; Geometric nonlinearity;
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暂无
中图分类号
学科分类号
摘要
Structural Topology optimization is attracting increasing attention as a complement to additive manufacturing techniques. The optimization algorithms usually employ continuum-based Finite Element analyses, but some important materials and processes are better described by discrete models, for example granular materials, powder-based 3D printing, or structural collapse. To address these systems, we adapt the established framework of SIMP Topology optimization to address a system modelled with the Discrete Element Method. We consider a typical problem of stiffness maximization for which we define objective function and related sensitivity for the Discrete Element framework. The method is validated for simply supported beams discretized as interacting particles, whose predicted optimum solutions match those from a classical continuum-based algorithm. A parametric study then highlights the effects of mesh dependence and filtering. An advantage of the Discrete Element Method is that geometric nonlinearity is captured without additional complexity; this is illustrated when changing the beam supports from rollers to hinges, which indeed generates different optimum structures. The proposed Discrete Element Topology Optimization method enables future incorporation of nonlinear interactions, as well as discontinuous processes such as during fracture or collapse.
引用
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页码:1213 / 1231
页数:18
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