An explainable artificial intelligence‐based approach for reliable damage detection in polymer composite structures using deep learning

IF 4.8 2区 材料科学 Q2 MATERIALS SCIENCE, COMPOSITES
Muhammad Muzammil Azad, Heung Soo Kim
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Abstract

Artificial intelligence (AI) techniques are increasingly used for structural health monitoring (SHM) of polymer composite structures. However, to be confident in the trustworthiness of AI models, the models must be reliable, interpretable, and explainable. The use of explainable artificial intelligence (XAI) is critical to ensure that the AI model is transparent in the decision‐making process and that the predictions it provides can be trusted and understood by users. However, existing SHM methods for polymer composite structures lack explainability and transparency, and therefore reliable damage detection. Therefore, an interpretable deep learning model based on an explainable vision transformer (X‐ViT) is proposed for the SHM of composites, leading to improved repair planning, maintenance, and performance. The proposed approach has been validated on carbon fiber reinforced polymers (CFRP) composites with multiple health states. The X‐ViT model exhibited better damage detection performance compared to existing popular methods. Moreover, the X‐ViT approach effectively highlighted the area of interest related to the prediction of each health condition in composites through the patch attention aggregation process, emphasizing their influence on the decision‐making process. Consequently, integrating the ViT‐based explainable deep‐learning model into the SHM of polymer composites provided improved diagnostics along with increased transparency and reliability.Highlights Autonomous damage detection of polymer composites using vision transformer based deep learning model. Explainable artificial intelligence by highlighting region of interest using patch attention. Comparison with the existing state of the art structural health monitoring methods.

Abstract Image

基于人工智能的可解释方法,利用深度学习对聚合物复合材料结构进行可靠的损伤检测
人工智能(AI)技术越来越多地用于聚合物复合结构的结构健康监测(SHM)。然而,要对人工智能模型的可信度充满信心,模型必须是可靠、可解释和可解释的。可解释人工智能(XAI)的使用对于确保人工智能模型在决策过程中的透明性以及其提供的预测结果可以被用户信任和理解至关重要。然而,现有的聚合物复合结构 SHM 方法缺乏可解释性和透明度,因此无法进行可靠的损伤检测。因此,我们提出了一种基于可解释视觉变换器(X-ViT)的可解释深度学习模型,用于复合材料的 SHM,从而改进维修规划、维护和性能。所提出的方法已在具有多种健康状态的碳纤维增强聚合物(CFRP)复合材料上进行了验证。与现有的流行方法相比,X-ViT 模型具有更好的损伤检测性能。此外,X-ViT 方法通过斑块关注聚集过程,有效地突出了与复合材料中每种健康状况预测相关的关注区域,强调了它们对决策过程的影响。因此,将基于 ViT 的可解释深度学习模型集成到聚合物复合材料的 SHM 中,不仅提高了诊断效率,还增加了透明度和可靠性。利用补丁关注突出感兴趣区域,实现可解释的人工智能。与现有的先进结构健康监测方法进行比较。
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来源期刊
Polymer Composites
Polymer Composites 工程技术-材料科学:复合
CiteScore
7.50
自引率
32.70%
发文量
673
审稿时长
3.1 months
期刊介绍: Polymer Composites is the engineering and scientific journal serving the fields of reinforced plastics and polymer composites including research, production, processing, and applications. PC brings you the details of developments in this rapidly expanding area of technology long before they are commercial realities.
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