Structural Health Monitoring (SHM) has been continuously benefiting from the advancements in the field of data science. Various types of Artificial Intelligence (AI) methods have been utilized for the assessment and evaluation of civil structures. In AI, Machine Learning (ML) and Deep Learning (DL) algorithms require plenty of datasets to train; particularly, the more data DL models are trained with, the better output it yields. Yet, in SHM applications, collecting data from civil structures through sensors is expensive and obtaining useful data (damage associated data) is challenging. In this paper, 1-D Wasserstein loss Deep Convolutional Generative Adversarial Networks using Gradient Penalty (1-D WDCGAN-GP) is utilized to generate damage associated vibration datasets that are similar to the input. For the purpose of vibration-based damage diagnostics, a 1-D Deep Convolutional Neural Network (1-D DCNN) is built, trained, and tested on both real and generated datasets. The classification results from the 1-D DCNN on both datasets resulted to be very similar to each other. The presented work in this paper shows that for the cases of insufficient data in DL or ML-based damage diagnostics, 1-D WDCGAN-GP can successfully generate data for the model to be trained on. Keywords: 1-D Generative Adversarial Networks (GAN), Deep Convolutional Generative Adversarial Networks (DCGAN), Wasserstein Generative Adversarial Networks with Gradient Penalty (WGAN-GP), 1-D Convolutional Neural Networks (CNN), Structural Health Monitoring (SHM), Structural Damage Diagnostics, Structural Damage Detection
翻译:健康结构监测(SHM)持续受益于数据科学领域的进步,在评估和评价民用结构时使用了各种类型的人工智能(AI)方法。在AI, 机器学习(ML)和深学习(DL)算法需要大量的数据集来培训; 特别是,数据DL模型培训得越多,其产出就越好。 然而,在SHM应用中,通过传感器从民用结构收集数据是昂贵的,获得有用的数据(与损坏相关的数据)是具有挑战性的。在本文中,1D 瓦瑟斯坦丢失了深电动、深电动DGNA(1-D WDCGAN-GGG) 方法用于评估与输入相似的与振动有关的振动相关的数据集。为了以震动为基础的模型诊断,1D 深电动神经网络(1-D DCNNN) 的建立、培训和测试在真实和生成的数据集上都具有挑战性。两个数据集的1DNCNNNC的分类结果都非常相似,使用“GDGD-D-D” 高级变压网络,在文件中显示数据分析案例,1GG-G-G-G-G-G-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D- D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-D-