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Concurrent optimization of structural topology and infill properties with a CBF-based level set method

机译:基于CBF的水平集方法并发优化结构拓扑结构拓扑和填充属性

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In this paper, a parametric level-set-based topology optimization framework is proposed to concurrently optimize the structural topology at the macroscale and the effective infill properties at the micro/meso scale. The concurrent optimization is achieved by a computational framework combining a new parametric level set approach with mathematical programming. Within the proposed framework, both the structural boundary evolution and the effective infill property optimization can be driven by mathematical programming, which is more advantageous compared with the conventional partial differential equation-driven level set approach. Moreover, the proposed approach will be more efficient in handling nonlinear problems with multiple constraints. Instead of using radial basis functions (RBF), in this paper, we propose to construct a new type of cardinal basis functions (CBF) for the level set function parameterization. The proposed CBF parameterization ensures an explicit impose of the lower and upper bounds of the design variables. This overcomes the intrinsic disadvantage of the conventional RBF-based parametric level set method, where the lower and upper bounds of the design variables oftentimes have to be set by trial and error. A variational distance regularization method is utilized in this research to regularize the level set function to be a desired distance-regularized shape. With the distance information embedded in the level set model, the wrapping boundary layer and the interior infill region can be naturally defined. The isotropic infill achieved via the mesoscale topology optimization is conformally fit into the wrapping boundary layer using the shape-preserving conformal mapping method, which leads to a hierarchical physical structure with optimized overall topology and effective infill properties. The proposed method is expected to provide a timely solution to the increasing demand for multiscale and multifunctional structure design.
机译:在本文中,提出了一种基于参数级别的拓扑优化框架,以同时优化Macroscale的结构拓扑和微/间谍标度的有效填充性。通过计算具有数学编程的新的参数级别设置方法的计算框架来实现并发优化。在所提出的框架内,结构边界演化和有效的填充性优化都可以由数学编程驱动,与传统的部分微分方式驱动的水平设定方法相比更有利。此外,所提出的方法将在处理多个约束的非线性问题方面更有效。在本文中,我们建议为级别设置函数参数化构建新型的基础基函数(CBF)来构建新型的基础基函数(CBF)。所提出的CBF参数化可确保显式强加设计变量的下限和上限。这克服了传统的基于RBF的参数级集合方法的内在缺点,其中设计变量的下限和上限必须通过试验和误差来设定。在该研究中使用变分距离正则化方法,以将水平集合功能正规化为所需的距离正则化形状。利用嵌入在级别设置模型中的距离信息,可以自然地定义包裹边界层和内部填充区域。通过Mesoscale拓扑优化实现的各向同性填写,使用形状保存的保形映射方法恰好地符合包裹边界层,这导致具有优化整体拓扑结构和有效填充性的分层物理结构。建议的方法预计将及时解决对多尺度和多功能结构设计的不断增加的需求。

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