Haochen Liu
(, ), Shuozhi Wang
(, ), Yifan Zhao
(, ), Kailun Deng
(, ), Zhenmao Chen
(, )
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引用次数: 0
摘要
尽管机器学习在热成像检测领域已显示出卓越的适用性,但精确的缺陷重构仍具有挑战性,尤其是对于缺陷样本多样性有限的复杂缺陷剖面。因此,本文提出了一种基于循环一致性生成对抗网络(Cycle-GAN)的自增强缺陷重构技术,该技术可准确表征复杂的缺陷轮廓,并生成可靠的人工热图像用于数据集扩增,从而增强缺陷表征能力。通过使用来自模拟和实验的合成数据集,该网络从有限元建模中学习复杂缺陷的多样性,并从实际实验中获取热成像不确定性模式,从而克服了样本有限的问题。然后,一种具有自我增强能力的迭代策略优化了表征精度和数据生成性能。所设计的损失函数结构具有周期一致性和身份损失,可限制 GAN 的转移变化,从而同时保证增强的数据质量和缺陷重构精度,而自我增强的结果则显著提高了热图像和缺陷轮廓重构的精度。实验结果证明了所提方法的可行性,该方法在缺陷轮廓重建中以最佳损失规范获得了较高的精度,召回得分超过 0.92。此外,还讨论了不同材料和缺陷类型的可扩展性研究,突出了该方法在各种热成像量化和自动检测场景中的能力。
A cyclic self-enhancement technique for complex defect profile reconstruction based on thermographic evaluation
Although machine Learning has demonstrated exceptional applicability in thermographic inspection, precise defect reconstruction is still challenging, especially for complex defect profiles with limited defect sample diversity. Thus, this paper proposes a self-enhancement defect reconstruction technique based on cycle-consistent generative adversarial network (Cycle-GAN) that accurately characterises complex defect profiles and generates reliable artificial thermal images for dataset augmentation, enhancing defect characterisation. By using a synthetic dataset from simulation and experiments, the network overcomes the limited samples problem by learning the diversity of complex defects from finite element modelling and obtaining the thermography uncertainty patterns from practical experiments. Then, an iterative strategy with a self-enhancement capability optimises the characterisation accuracy and data generation performance. The designed loss function structure with cycle consistency and identity loss constrains the GAN’s transfer variation to guarantee augmented data quality and defect reconstruction accuracy simultaneously, while the self-enhancement results significantly improve accuracy in thermal images and defect profile reconstruction. The experimental results demonstrate the feasibility of the proposed method by attaining high accuracy with optimal loss norm for defect profile reconstruction with a Recall score over 0.92. The scalability investigation of different materials and defect types is also discussed, highlighting its capability for diverse thermography quantification and automated inspection scenarios.
期刊介绍:
Acta Mechanica Sinica, sponsored by the Chinese Society of Theoretical and Applied Mechanics, promotes scientific exchanges and collaboration among Chinese scientists in China and abroad. It features high quality, original papers in all aspects of mechanics and mechanical sciences.
Not only does the journal explore the classical subdivisions of theoretical and applied mechanics such as solid and fluid mechanics, it also explores recently emerging areas such as biomechanics and nanomechanics. In addition, the journal investigates analytical, computational, and experimental progresses in all areas of mechanics. Lastly, it encourages research in interdisciplinary subjects, serving as a bridge between mechanics and other branches of engineering and the sciences.
In addition to research papers, Acta Mechanica Sinica publishes reviews, notes, experimental techniques, scientific events, and other special topics of interest.
Related subjects » Classical Continuum Physics - Computational Intelligence and Complexity - Mechanics