A machine learning accelerated inverse design of underwater acoustic polyurethane coatings with cylindrical voids
Hansani Weeratunge, Zakiya Shireen, Sagar Iyer, Richard Sandberg,, Saman Halgamuge, Adrian Menzel, Andrew Phillips, Elnaz Hajizadeh

TL;DR
This paper presents a materials informatics framework combining finite element modeling, deep neural networks, and genetic algorithms to efficiently design underwater polyurethane acoustic coatings with optimized cylindrical voids for broadband low-frequency sound attenuation.
Contribution
It introduces a novel integrated approach using machine learning and statistical optimization to accelerate the design of acoustic coatings, accounting for viscoelastic effects often neglected in prior studies.
Findings
Deep neural network prediction speed increased by 4500 times.
Optimized void configurations achieved broadband low-frequency attenuation.
Viscoelastic effects significantly influence absorption peak characteristics.
Abstract
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…
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Taxonomy
TopicsAcoustic Wave Phenomena Research · Noise Effects and Management · Underwater Acoustics Research
MethodsFeatures Explanation Method · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
