An Explainable Deep Learning Model Based on Multi-scale Microstructure Information for Establishing Composition–Microstructure–Property Relationship of Aluminum Alloys

IF 2.4 3区 材料科学 Q3 ENGINEERING, MANUFACTURING Integrating Materials and Manufacturing Innovation Pub Date : 2024-08-12 DOI:10.1007/s40192-024-00374-2
Jiale Ma, Wenchao Zhang, Zhiqiang Han, Qingyan Xu, Haidong Zhao
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Abstract

Establishing a quantitative composition–microstructure–property relationship is crucial in material design and process optimization. With the advent of big data technology, deep learning models, as a machine learning method that can automatically extract information from images, have been widely used in microstructure image identification and property prediction. However, most deep learning models only use single-scale images for property prediction, ignoring the multi-scale microstructure information of materials. In this study, an explainable deep learning model was developed based on a multi-modal and multi-scale dataset for predicting the tensile properties of aluminum alloys. Three different kinds of aluminum alloys, each incorporating various trace elements, were prepared to evaluate the adaptation of the model. The predicted results demonstrate that the integration of multi-scale microstructure information significantly improves the model’s prediction ability. Furthermore, the intrinsic mechanisms of the deep learning model were elucidated through the application of a visualization technique, greatly improving the explicability of the model. In addition, the effect of data redundancy on model performance was analyzed. The proposed deep learning model breaks the traditional deep learning strategy with the single-scale image as input and effectively establishes the composition–microstructure–property relationship.

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基于多尺度微观结构信息的可解释深度学习模型,用于建立铝合金的成分-微观结构-性能关系
建立定量的成分-微观结构-性能关系对于材料设计和工艺优化至关重要。随着大数据技术的发展,深度学习模型作为一种能自动从图像中提取信息的机器学习方法,已被广泛应用于微观结构图像识别和性能预测。然而,大多数深度学习模型仅使用单尺度图像进行性能预测,忽略了材料的多尺度微观结构信息。本研究基于多模态和多尺度数据集开发了一种可解释的深度学习模型,用于预测铝合金的拉伸性能。为了评估模型的适应性,研究人员制备了三种不同类型的铝合金,每种合金都含有不同的微量元素。预测结果表明,整合多尺度微观结构信息可显著提高模型的预测能力。此外,通过应用可视化技术阐明了深度学习模型的内在机制,大大提高了模型的可解释性。此外,还分析了数据冗余对模型性能的影响。所提出的深度学习模型打破了以单比例图像为输入的传统深度学习策略,有效地建立了成分-微结构-属性关系。
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来源期刊
Integrating Materials and Manufacturing Innovation
Integrating Materials and Manufacturing Innovation Engineering-Industrial and Manufacturing Engineering
CiteScore
5.30
自引率
9.10%
发文量
42
审稿时长
39 days
期刊介绍: The journal will publish: Research that supports building a model-based definition of materials and processes that is compatible with model-based engineering design processes and multidisciplinary design optimization; Descriptions of novel experimental or computational tools or data analysis techniques, and their application, that are to be used for ICME; Best practices in verification and validation of computational tools, sensitivity analysis, uncertainty quantification, and data management, as well as standards and protocols for software integration and exchange of data; In-depth descriptions of data, databases, and database tools; Detailed case studies on efforts, and their impact, that integrate experiment and computation to solve an enduring engineering problem in materials and manufacturing.
期刊最新文献
New Paradigms in Model Based Materials Definitions for Titanium Alloys in Aerospace Applications An Explainable Deep Learning Model Based on Multi-scale Microstructure Information for Establishing Composition–Microstructure–Property Relationship of Aluminum Alloys Comparison of Full-Field Crystal Plasticity Simulations to Synchrotron Experiments: Detailed Investigation of Mispredictions 3D Reconstruction of a High-Energy Diffraction Microscopy Sample Using Multi-modal Serial Sectioning with High-Precision EBSD and Surface Profilometry L-PBF High-Throughput Data Pipeline Approach for Multi-modal Integration
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