论文标题

机器学习加速了带有圆柱体空隙的水下原声聚氨酯涂层的反设计

A machine learning accelerated inverse design of underwater acoustic polyurethane coatings with cylindrical voids

论文作者

Weeratunge, Hansani, Shireen, Zakiya, Iyer, Sagar, Sandberg, Richard, Halgamuge, Saman, Menzel, Adrian, Phillips, Andrew, Hajizadeh, Elnaz

论文摘要

在这里,我们报告了通过集成机器学习(ML)和统计优化算法与有限元模型(FEM)的统计优化算法的详细“材料信息学”框架的详细“材料信息学”框架。开发了有限元模型,以模拟基于具有嵌入式圆柱体空隙的聚氨酯(PU)弹性体的声学涂层的现实性能。 FEM结果表明,聚氨酯基质的频率依赖性粘弹性行为对与圆柱体相关的吸收峰的幅度和频率有重大影响,在低频下,这通常在对类似系统的先前研究中被忽略。使用FEM生成的数据用于训练深神网络(DNN)以加速设计过程,随后将其与遗传算法(GA)集成在一起,以确定圆柱体的最佳几何参数,以实现最大化,宽带,低频,低频率的水上声音衰减。通过最佳配置圆柱体空隙的层和使用衰减机制,包括Fabry-Pérot共振和Bragg散射,可以实现重要的宽带,低频衰减。将机器学习技术集成到优化算法中,进一步加速了针对目标性能的高维设计空间的探索。与常规FEM相比,开发的DNN在预测吸收系数方面表现出明显提高的速度($ 4.5 \乘以10^3 $)。因此,与传统的试验和纠正实践相比,材料信息框架引起的加速度使声学涂料的设计和开发范式转变为范式。

Here, we report the development of a detailed "Materials Informatics" framework for the design of acoustic coatings for underwater sound attenuation through integrating Machine Learning (ML) and statistical optimization algorithms with a Finite Element Model (FEM). The finite element models were developed to simulate the realistic performance of the acoustic coatings based on polyurethane (PU) elastomers with embedded cylindrical voids. The FEM results revealed that the frequency-dependent viscoelastic behavior of the polyurethane matrix has a significant impact on the magnitude and frequency of the absorption peak associated with the cylinders at low frequencies, which has been commonly ignored in previous studies on similar systems. The data generated from the FEM was used to train a Deep Neural Network (DNN) to accelerate the design process, and subsequently, was integrated with a Genetic Algorithm (GA) to determine the optimal geometric parameters of the cylinders to achieve maximized, broadband, low-frequency waterborne sound attenuation. A significant, broadband, low-frequency attenuation is achieved by optimally configuring the layers of cylindrical voids and using attenuation mechanisms, including Fabry-Pérot resonance and Bragg scattering of the layers of voids. Integration of the machine learning technique into the optimization algorithm further accelerated the exploration of the high dimensional design space for the targeted performance. The developed DNN exhibited significantly increased speed (by a factor of $4.5\times 10^3$ ) in predicting the absorption coefficient compared to the conventional FEM(s). Therefore, the acceleration brought by the materials informatics framework brings a paradigm shift to the design and development of acoustic coatings compared to the conventional trial-and-error practices.

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