Generative Adversarial Networks for Data Generation in Structural Health Monitoring
Furkan Luleci, F. Necati Catbas, Onur Avci

TL;DR
This paper demonstrates that 1-D Wasserstein GANs with Gradient Penalty can generate realistic damage-related vibration data, enabling effective training of damage diagnostic models even with limited real data in structural health monitoring.
Contribution
It introduces a novel application of 1-D WDCGAN-GP for generating damage datasets in SHM, improving damage diagnostics when data is scarce.
Findings
Generated data closely resembles real damage data.
Damage diagnostic accuracy is maintained with synthetic data.
GAN-generated datasets enhance model training with limited real data.
Abstract
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…
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Taxonomy
MethodsDiffusion-Convolutional Neural Networks
