Multiscale topology optimization of functionally graded lattice structures based on physics-augmented neural network material models

Jonathan Stollberg, Tarun Gangwar, Oliver Weeger, Dominik Schillinger
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Abstract

We present a new framework for the simultaneous optimiziation of both the topology as well as the relative density grading of cellular structures and materials, also known as lattices. Due to manufacturing constraints, the optimization problem falls into the class of NP-complete mixed-integer nonlinear programming problems. To tackle this difficulty, we obtain a relaxed problem from a multiplicative split of the relative density and a penalization approach. The sensitivities of the objective function are derived such that any gradient-based solver might be applied for the iterative update of the design variables. In a next step, we introduce a material model that is parametric in the design variables of interest and suitable to describe the isotropic deformation behavior of quasi-stochastic lattices. For that, we derive and implement further physical constraints and enhance a physics-augmented neural network from the literature that was formulated initially for rhombic materials. Finally, to illustrate the applicability of the method, we incorporate the material model into our computational framework and exemplary optimize two-and three-dimensional benchmark structures as well as a complex aircraft component.
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基于物理增强神经网络材料模型的功能分级晶格结构的多尺度拓扑优化
我们提出了一种新的框架,用于同时优化蜂窝结构和材料(也称为晶格)的拓扑结构和相对密度分级。由于制造限制,优化问题属于 NP-complete(NP-complete)混合非线性编程问题。为了解决这一难题,我们从相对密度的乘法分割和惩罚方法中得到了一个宽松的问题。目标函数的敏感性被推导出来,因此任何基于梯度的求解器都可以用于设计变量的迭代更新。下一步,我们将引入一种材料模型,该模型与相关设计变量参数化,适用于描述准随机晶格的各向同性变形行为。为此,我们进一步推导并实施了物理约束,并增强了文献中最初针对菱形材料制定的物理增强神经网络。最后,为了说明该方法的适用性,我们将材料模型纳入计算框架,并对二维和三维基准结构以及一个复杂的飞机部件进行了示范性优化。
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