Multicase structural damage classification based on semisupervised generative adversarial network

Feng-Liang Zhang, Xiao Li, Chul-Woo Kim, He-Qing Mu
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Abstract

With the rapid development of computer science and the need for structural safety assessment, structural health monitoring (SHM) systems are widely used in structures. SHM systems primarily rely on sensor systems to collect data related to structural safety conditions, which are then analyzed and assessed for performance evaluation. However, structures in real world are often affected by many uncertain factors, making damage detection based on pattern recognition still difficult to apply. In recent years, research on damage recognition based on machine learning has gained considerable attention. One of the research directions is to use machine learning algorithms to extract features from the dynamic response of structures. Aiming at the problem of inaccurate recognition by machine learning in the case of fewer label samples, this paper proposes a structural state classification method based on semisupervised deep learning. The method is verified on the vibration data of a steel truss bridge and a three-story framework structure to realize the classification of structural states under different working conditions. Unlike the general semisupervised learning method, this paper introduces the mean square error (MS) loss function in the loss function of generative adversarial networks (GANs), thereby enhancing the model training effect (mean square error-generative adversarial networks, MS-GAN). The semisupervised learning uses a small amount of supervised information to guide GAN and then sorts and screens unsupervised data through joint probability, which can reduce labeling costs and improve model accuracy. Compared with the general semisupervised GAN, the algorithm proposed in this paper makes full use of some labeled samples to enable the state recognition and classification of semisupervised learning. By properly utilizing labeled data, the accuracy of state recognition is significantly improved. Finally, a range of training tasks are implemented in order to enhance the classification capability of the proposed MS-GAN through the establishment of varying supervised ratios.
基于半监督生成式对抗网络的多案例结构损伤分类
随着计算机科学的快速发展和结构安全评估的需要,结构健康监测(SHM)系统被广泛应用于结构中。结构健康监测系统主要依靠传感器系统来收集与结构安全状况相关的数据,然后对这些数据进行分析和评估,以进行性能评价。然而,现实世界中的结构往往受到许多不确定因素的影响,因此基于模式识别的损伤检测仍然难以应用。近年来,基于机器学习的损伤识别研究受到了广泛关注。其中一个研究方向是利用机器学习算法从结构的动态响应中提取特征。针对机器学习在标签样本较少的情况下识别不准确的问题,本文提出了一种基于半监督深度学习的结构状态分类方法。该方法在钢桁架桥和三层框架结构的振动数据上进行了验证,实现了不同工况下的结构状态分类。与一般的半监督学习方法不同,本文在生成式对抗网络(GANs)的损失函数中引入了均方误差(MS)损失函数,从而增强了模型训练效果(均方误差-生成式对抗网络,MS-GAN)。半监督学习利用少量监督信息引导 GAN,然后通过联合概率对无监督数据进行排序和筛选,可以降低标注成本,提高模型精度。与一般的半监督 GAN 相比,本文提出的算法充分利用了部分标记样本,实现了半监督学习的状态识别和分类。通过适当利用标记数据,状态识别的准确率得到了显著提高。最后,本文还实施了一系列训练任务,以通过建立不同的监督比例来增强所提出的 MS-GAN 的分类能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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