Inverse design of acoustic metamaterials based on machine learning using a Gauss–Bayesian model

计算机科学 灵活性(工程) 反向 贝叶斯概率 贝叶斯优化 吸收(声学) 高斯 独立性(概率论) 声学 人工智能 物理 数学 几何学 量子力学 统计
作者
Bin Zheng,Jing Yang,Bin Liang,Jian‐Chun Cheng
出处
期刊:Journal of Applied Physics [American Institute of Physics]
卷期号:128 (13) 被引量:50
标识
DOI:10.1063/5.0012392
摘要

Acoustic metamaterials (AMs) have attracted a substantial amount of attention in recent decades where the parameter design plays an important role. However, conventional design methods generally rely on analytical physical models and require a very large number of evaluations of acoustic performance. Here, we propose and experimentally demonstrate an inverse-design method for AMs based on machine learning using a Gauss–Bayesian model. As a result of the cycle of training and prediction and the use of adaptive acquisition functions, this method allows the parameters of AMs to be efficiently designed for specific functionalities without the need for physical models. Considering the significance of low-frequency ventilated sound absorption, we present a design for a typical acoustic metamaterial absorber with multiple structural parameters that facilitate high sound absorption at low frequencies. In the design process, the parameters were adaptively adjusted to improve the sound absorption performance at low frequencies using only 37 evaluations, and this high absorption performance was verified by the agreement of numerical and experimental results. Because of its low cost, high flexibility, and independence from physical models, this method paves the way for tremendous opportunities in the design of various AMs for particular desired functionalities.

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