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GEOMETRY OPTIMIZATION OF FLEXURE SYSTEM TOPOLOGIES USING THE BOUNDARY LEARNING OPTIMIZATION TOOL (BLOT)

机译:利用边界学习优化工具对挠性系统拓扑进行几何优化

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摘要

In this paper, we introduce a new computational tool called the Boundary Learning Optimization Tool (BLOT) that rapidly identifies the boundary of the performance capabilities achieved by a general flexure topology if its geometric parameters are allowed to vary from their smallest allowable feature sizes to the largest geometrically compatible feature sizes for a given constituent material. The boundaries generated by the BLOT fully define a flexure topology's design space and allow designers to visually identify which geometric versions of their synthesized topology best achieve a desired combination of performance capabilities. The BLOT was created as a complementary tool to the Freedom And Constraint Topologies (FACT) synthesis approach in that the BLOT is intended to optimize the geometry of the flexure topologies synthesized using the FACT approach. The BLOT trains artificial neural networks to create sufficiently accurate models of parameterized flexure topologies using the fewest number of design instantiations and their corresponding numerically generated performance solutions. These models are then used by an efficient algorithm to plot the desired topology's performance boundary. A FACT-synthesized flexure topology is optimized using the BLOT as a case study.
机译:在本文中,我们引入了一种称为边界学习优化工具(BLOT)的新计算工具,如果允许其几何参数从最小允许特征尺寸变化到最大允许弯曲尺寸,则可以快速识别出一般挠曲拓扑所实现的性能能力的边界。给定组成材料的最大几何兼容特征尺寸。 BLOT生成的边界完全定义了挠性​​拓扑的设计空间,并使设计人员可以直观地识别出其合成拓扑的哪些几何版本最能实现所需的性能组合。创建BLOT作为自由和约束拓扑(FACT)合成方法的补充工具,因为BLOT旨在优化使用FACT方法合成的挠曲拓扑的几何形状。 BLOT使用最少的设计实例及其相应的数字生成的性能解决方案来训练人工神经网络,以创建足够精确的参数化挠曲拓扑模型。然后,这些模型将由高效算法使用,以绘制所需拓扑的性能边界。使用BLOT作为案例研究,对FACT合成的挠曲拓扑进行了优化。

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