Gou Boyuan, Chen Yan, Xu Songhua, Sun Jun, Lookman Turab, Salje Ekhard K H, Ding Xiangdong
State Key Laboratory for Mechanical Behavior of Materials, Xi'an Jiaotong University, Xi'an, China.
School of Mathematics and Statistics, Xi'an Jiaotong University, Xi'an, China.
Nat Commun. 2025 Jul 25;16(1):6877. doi: 10.1038/s41467-025-61707-z.
Timely detection of deformation mechanisms in metallic structural materials is essential for early-warning alerts on potential damages and fractures. Acoustic emission (AE) technologies are commonly used for this purpose due to their non-destructive nature. However, traditional methods often struggle with distinguishing AE signals associated with multiple co-existing deformation mechanisms. To address this challenge, we propose a knowledge-driven unsupervised learning approach. The novel method leverages a family of gradient-driven supervised base learners and integrates them with a knowledge-infused aggregate loss function, effectively transforming the approach into an unsupervised learning framework. Compared to existing methods, our approach excels in identifying co-existing deformation mechanisms associated with AE signals. Experiments on porous 316L stainless steel during tensile process show that the avalanche statistics of the identified dislocation and crack AE signals align closely with classical statistical methods and fracture theory. By integrating with the avalanche theory, our proposed approach can continuously monitor material deformation mechanisms in real-time and provide dynamic early failure warnings. Additionally, the framework demonstrates strong transferability in recognizing multiple co-existing deformation mechanisms in new materials, leveraging its unsupervised learning capability.
及时检测金属结构材料中的变形机制对于潜在损伤和断裂的早期预警至关重要。声发射(AE)技术因其无损特性而常用于此目的。然而,传统方法往往难以区分与多种共存变形机制相关的AE信号。为应对这一挑战,我们提出了一种知识驱动的无监督学习方法。该新方法利用了一系列梯度驱动的有监督基础学习器,并将它们与注入知识的聚合损失函数相结合,有效地将该方法转变为一个无监督学习框架。与现有方法相比,我们的方法在识别与AE信号相关的共存变形机制方面表现出色。对多孔316L不锈钢拉伸过程的实验表明,所识别的位错和裂纹AE信号的雪崩统计与经典统计方法和断裂理论密切吻合。通过与雪崩理论相结合,我们提出的方法可以实时连续监测材料变形机制并提供动态早期失效预警。此外,该框架利用其无监督学习能力,在识别新材料中多种共存变形机制方面表现出很强的可迁移性。