Prediction and design of mechanical properties of origami-inspired braces based on machine learning

Jianguo Cai, Huafei Xu, Jiacheng Chen, Jian Feng, Qian Zhang
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Abstract

In order to rapidly and accurately evaluate the mechanical properties of a novel origami-inspired tube structure with multiple parameter inputs, this study developed a method of designing origami-inspired braces based on machine learning models. Four geometric parameters, i.e., cross-sectional side length, plate thickness, crease weakening coefficient, and plane angles, were used to establish a mapping relationship with five mechanical parameters, including elastic stiffness, yield load, yield displacement, ultimate load, and ultimate displacement, all of which were calculated from load-displacement curves. Firstly, forward prediction models were trained and compared for single and multiple mechanical outputs. The parameter ranges were extended and refined to improve the predicted results by introducing the intrinsic mechanical relationships. Secondly, certain reverse prediction models were established to obtain the optimized design parameters. Finally, the design method of this study was verified in finite element methods. The design and analysis framework proposed in this study can be used to promote the application of other novel multi-parameter structures.

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基于机器学习的折纸支架机械性能预测与设计
为了在多参数输入的情况下快速准确地评估新型折纸启发管结构的力学性能,本研究开发了一种基于机器学习模型的折纸启发支架设计方法。利用四个几何参数,即横截面边长、板厚、折痕削弱系数和平面角度,建立了与五个力学参数的映射关系,包括弹性刚度、屈服载荷、屈服位移、极限载荷和极限位移,所有这些参数都是通过载荷-位移曲线计算得出的。首先,对单个和多个机械输出进行了正向预测模型的训练和比较。通过引入内在力学关系,对参数范围进行了扩展和细化,以改善预测结果。其次,建立了一些反向预测模型,以获得优化设计参数。最后,本研究的设计方法在有限元方法中得到了验证。本研究提出的设计和分析框架可用于促进其他新型多参数结构的应用。
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