早期预测青铜病发展与氯映射:集成计算机视觉和多模态表征方法

IF 7.4 1区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Yadi Zhao , Wei Liu , Bingqin Wang , Kunlong Chen , Xuequn Cheng , Xiaogang Li
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引用次数: 0

摘要

为了推进青铜文物的非破坏性评估,本研究提出了一种整合腐蚀图像和MA-XRF氯分布图的多模态数据的方法,用于表征青铜疾病引起的腐蚀产物。通过干湿循环实验模拟腐蚀过程,系统获取不同时间点的腐蚀图像。通过宏观x射线荧光(MA-XRF)成像获得氯元素分布图,从中提取高氯区域的面积比例,进行数据挖掘、建模和实验验证。结果表明,从腐蚀图像中提取的20个物理特征与高氯面积分数表现出显著的Spearman相关性(ρ > 0.4,高达0.6),验证了从视觉特征推断青铜疾病进展的可行性。在这些视觉特征上训练机器学习模型来预测富氯化物区域分数,R²为0.83,证明了直接从图像预测青铜病演变的强大能力。一个基于聚类的分类模型,整合了多模态物理特征,将腐蚀产物分为四类,阐明了青铜疾病发展早期锈层转变的时空动态。这种方法可以初步评估青铜病的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early-stage forecasting of bronze disease development with chlorine mapping: Integrating computer vision and multimodal characterization methodologies
To advance non-destructive evaluation of bronze artifacts, this work presents an approach integrating multimodal data from corrosion images and MA-XRF chlorine distribution maps for characterizing corrosion products induced by bronze disease. Dry-wet cyclic experiments were conducted to simulate corrosion processes, from which corrosion images at different time points were systematically acquired. Chlorine elemental distribution maps were obtained via macro X-ray fluorescence (MA-XRF) imaging, from which the area proportion of high-chlorine regions was extracted for data mining, modeling, and experimental validation. Results show that 20 physical features extracted from corrosion images exhibit significant Spearman correlations (ρ > 0.4, up to 0.6) with high-chlorine area fractions, validating the feasibility of inferring bronze disease progression from visual characteristics. Machine learning models, trained on these visual features to predict chloride-rich area fractions, achieved an R² of 0.83, demonstrating robust capability for forecasting bronze disease evolution directly from images. A clustering-based classification model, integrating multi-modal physical features, categorizes corrosion products into four distinct classes, elucidating the spatiotemporal dynamics of rust layer transitions in the early stages of bronze disease development. This approach enables a preliminary assessment of the progression of bronze disease.
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来源期刊
Corrosion Science
Corrosion Science 工程技术-材料科学:综合
CiteScore
13.60
自引率
18.10%
发文量
763
审稿时长
46 days
期刊介绍: Corrosion occurrence and its practical control encompass a vast array of scientific knowledge. Corrosion Science endeavors to serve as the conduit for the exchange of ideas, developments, and research across all facets of this field, encompassing both metallic and non-metallic corrosion. The scope of this international journal is broad and inclusive. Published papers span from highly theoretical inquiries to essentially practical applications, covering diverse areas such as high-temperature oxidation, passivity, anodic oxidation, biochemical corrosion, stress corrosion cracking, and corrosion control mechanisms and methodologies. This journal publishes original papers and critical reviews across the spectrum of pure and applied corrosion, material degradation, and surface science and engineering. It serves as a crucial link connecting metallurgists, materials scientists, and researchers investigating corrosion and degradation phenomena. Join us in advancing knowledge and understanding in the vital field of corrosion science.
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