Integrating uncertainty into deep learning models for enhanced prediction of nanocomposite materials’ mechanical properties

Yuheng Wang, Guang Lin, Shengfeng Yang
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Abstract

In this paper, we present a novel deep-learning framework that incorporates quantified uncertainty for predicting the mechanical properties of nanocomposite materials, specifically taking into account their morphology and composition. Due to the intricate microstructures of nanocomposites and their dynamic changes under diverse conditions, traditional methods, such as molecular dynamics simulations, often impose significant computational burdens. Our machine learning models, trained on comprehensive material datasets, provide a lower computational cost alternative, facilitating rapid exploration of design spaces and more reliable predictions. We employ both convolutional neural networks and feedforward neural networks for our predictions, training separate models for yield strength and ultimate tensile strength. Furthermore, we integrate uncertainty quantification into our models, thereby providing confidence intervals for our predictions and making them more reliable. This study paves the way for advancements in predicting the properties of nanocomposite materials and could potentially be expanded to cover a broad spectrum of materials in the future.
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将不确定性纳入深度学习模型,增强纳米复合材料的力学性能预测
在本文中,我们介绍了一种新型深度学习框架,该框架结合量化的不确定性来预测纳米复合材料的机械性能,特别是考虑到其形态和组成。由于纳米复合材料错综复杂的微观结构及其在不同条件下的动态变化,分子动力学模拟等传统方法往往会带来巨大的计算负担。我们在综合材料数据集上训练的机器学习模型提供了一种计算成本更低的替代方法,有助于快速探索设计空间和进行更可靠的预测。我们采用卷积神经网络和前馈神经网络进行预测,分别训练屈服强度和极限抗拉强度模型。此外,我们还将不确定性量化整合到模型中,从而为我们的预测提供置信区间,使其更加可靠。这项研究为纳米复合材料性能预测的进步铺平了道路,并有可能在未来扩展到广泛的材料领域。
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