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Machine Learning-Evolutionary Algorithm Enabled Design for 4D-Printed Active Composite Structures

机译:基于机器学习进化算法的4D打印有源复合材料结构设计

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摘要

Active composites consisting of materials that respond differently to environmental stimuli can transform their shapes. Integrating active composites and 4D printing allows the printed structure to have a pre-designed complex material or property distribution on numerous small voxels, offering enormous design flexibility. However, this tremendous design space also poses a challenge in efficiently finding appropriate designs to achieve a target shape change. Here, a novel machine learning (ML) and evolutionary algorithm (EA) based approach is presented to guide the design process. Inspired by the beam deformation characteristics, a recurrent neural network (RNN) based ML model whose training dataset is acquired by finite element simulations is developed for the forward shape-change prediction. EA empowered with ML is then used to solve the inverse problem of finding the optimal design. For multiple target shapes with different complexities, the ML-EA approach demonstrates high efficiency. Combining the ML-EA with computer vision algorithms, a new paradigm is presented that streamlines design and 4D printing process where active straight beams can be designed based on hand-drawn lines and be 4D printed that transform into the drawn profiles under the stimulus. The approach thus provides a highly efficient tool for the design of 4D-printed active composites.
机译:由对环境刺激反应不同的材料组成的活性复合材料可以改变其形状。集成活性复合材料和 4D 打印使打印结构能够在许多小体素上具有预先设计的复杂材料或属性分布,从而提供巨大的设计灵活性。然而,这种巨大的设计空间也给有效寻找合适的设计以实现目标形状变化带来了挑战。本文提出了一种基于机器学习(ML)和进化算法(EA)的新型方法来指导设计过程。受梁变形特性的启发,开发了一种基于循环神经网络(RNN)的机器学习模型,该模型通过有限元仿真获取训练数据集,用于前向形状变化预测。然后,使用 ML 赋能的 EA 来解决寻找最佳设计的逆问题。对于具有不同复杂性的多个目标形状,ML-EA 方法表现出高效率。将ML-EA与计算机视觉算法相结合,提出了一种新的范式,可以简化设计和4D打印过程,其中可以基于手绘线条设计有源直梁,并在刺激下进行4D打印,转换为绘制的轮廓。因此,该方法为4D打印活性复合材料的设计提供了一种高效的工具。

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