CycleGAN for Undamaged-to-Damaged Domain Translation for Structural
Health Monitoring and Damage Detection
- URL: http://arxiv.org/abs/2202.07831v1
- Date: Wed, 16 Feb 2022 02:31:38 GMT
- Title: CycleGAN for Undamaged-to-Damaged Domain Translation for Structural
Health Monitoring and Damage Detection
- Authors: Furkan Luleci, F. Necati Catbas, Onur Avci
- Abstract summary: Currently used AI-based data-driven methods for damage diagnostics and prognostics are centered on historical data of the structures.
In this study, a variant of Generative Adversarial Networks (GAN), Cycle-Consistent Wasserstein Deep Convolutional GAN with Gradient Penalty (CycleWDCGAN-GP) model is used.
The outcomes of this study demonstrate that the proposed model can accurately generate the possible future responses of a structure for potential future damaged conditions.
- Score: 0.618778092044887
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The accelerated advancements in the data science field in the last few
decades has benefitted many other fields including Structural Health Monitoring
(SHM). Particularly, the employment of Artificial Intelligence (AI) such as
Machine Learning (ML) and Deep Learning (DL) methods towards vibration-based
damage diagnostics of civil structures have seen a great interest due to their
nature of supreme performance in learning from data. Along with diagnostics,
damage prognostics also hold a vital prominence, such as estimating the
remaining useful life of civil structures. Currently used AI-based data-driven
methods for damage diagnostics and prognostics are centered on historical data
of the structures and require a substantial amount of data to directly form the
prediction models. Although some of these methods are generative-based models,
after learning the distribution of the data, they are used to perform ML or DL
tasks such as classification, regression, clustering, etc. In this study, a
variant of Generative Adversarial Networks (GAN), Cycle-Consistent Wasserstein
Deep Convolutional GAN with Gradient Penalty (CycleWDCGAN-GP) model is used to
answer some of the most important questions in SHM: "How does the dynamic
signature of a structure transition from undamaged to damaged conditions?" and
"What is the nature of such transition?". The outcomes of this study
demonstrate that the proposed model can accurately generate the possible future
responses of a structure for potential future damaged conditions. In other
words, with the proposed methodology, the stakeholders will be able to
understand the damaged condition of structures while the structures are still
in healthy (undamaged) conditions. This tool will enable them to be more
proactive in overseeing the life cycle performance of structures as well as
assist in remaining useful life predictions.
Related papers
- Robustness and Generalization Performance of Deep Learning Models on
Cyber-Physical Systems: A Comparative Study [71.84852429039881]
Investigation focuses on the models' ability to handle a range of perturbations, such as sensor faults and noise.
We test the generalization and transfer learning capabilities of these models by exposing them to out-of-distribution (OOD) samples.
arXiv Detail & Related papers (2023-06-13T12:43:59Z) - Semantic Latent Space Regression of Diffusion Autoencoders for Vertebral
Fracture Grading [72.45699658852304]
This paper proposes a novel approach to train a generative Diffusion Autoencoder model as an unsupervised feature extractor.
We model fracture grading as a continuous regression, which is more reflective of the smooth progression of fractures.
Importantly, the generative nature of our method allows us to visualize different grades of a given vertebra, providing interpretability and insight into the features that contribute to automated grading.
arXiv Detail & Related papers (2023-03-21T17:16:01Z) - Safe AI for health and beyond -- Monitoring to transform a health
service [51.8524501805308]
We will assess the infrastructure required to monitor the outputs of a machine learning algorithm.
We will present two scenarios with examples of monitoring and updates of models.
arXiv Detail & Related papers (2023-03-02T17:27:45Z) - On an Application of Generative Adversarial Networks on Remaining
Lifetime Estimation [0.0]
A generative model is proposed in order to make predictions about the damage evolution of structures.
The model is able to take into account many past states of the damaged structure, to incorporate uncertainties in the modelling process and to generate potential damage evolution outcomes.
The algorithm is tested on a simulated damage evolution example and the results reveal that it is able to provide quite confident predictions about the remaining useful life of structures within a population.
arXiv Detail & Related papers (2022-08-18T06:54:41Z) - Benchmarking Heterogeneous Treatment Effect Models through the Lens of
Interpretability [82.29775890542967]
Estimating personalized effects of treatments is a complex, yet pervasive problem.
Recent developments in the machine learning literature on heterogeneous treatment effect estimation gave rise to many sophisticated, but opaque, tools.
We use post-hoc feature importance methods to identify features that influence the model's predictions.
arXiv Detail & Related papers (2022-06-16T17:59:05Z) - Interpretability in Convolutional Neural Networks for Building Damage
Classification in Satellite Imagery [0.0]
We use a dataset that includes labeled pre- and post-disaster satellite imagery to assess building damage on a per-building basis.
We train multiple convolutional neural networks (CNNs) to assess building damage on a per-building basis.
Our research seeks to computationally contribute to aiding in this ongoing and growing humanitarian crisis, heightened by anthropogenic climate change.
arXiv Detail & Related papers (2022-01-24T16:55:56Z) - Leveraging the structure of dynamical systems for data-driven modeling [111.45324708884813]
We consider the impact of the training set and its structure on the quality of the long-term prediction.
We show how an informed design of the training set, based on invariants of the system and the structure of the underlying attractor, significantly improves the resulting models.
arXiv Detail & Related papers (2021-12-15T20:09:20Z) - Generative Adversarial Networks for Labeled Data Creation for Structural
Damage Detection [0.8250374560598496]
This paper implements structural damage detection on different levels of synthetically enhanced vibration datasets by using 1-D Deep Convolutional Neural Network (1-D DCNN)
The damage detection results show that the 1-D WDCGAN-GP can be successfully utilized to tackle data scarcity in vibration-based damage diagnostics of civil structures.
arXiv Detail & Related papers (2021-12-07T03:55:03Z) - Generative Adversarial Networks for Data Generation in Structural Health
Monitoring [0.8250374560598496]
In AI, Machine Learning (ML) and Deep Learning (DL) algorithms require plenty of datasets to train.
In SHM applications, collecting data from civil structures through sensors is expensive and obtaining useful data (damage associated data) is challenging.
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.
arXiv Detail & Related papers (2021-12-07T03:39:31Z) - Generative Adversarial Networks for Labelled Vibration Data Generation [0.8250374560598496]
This paper introduces Generative Adrial Networks (GAN) that is built on the Deep Conversaal Neural Network (DCNN) and using Wasserstein Distance for generating artificial labelled data.
The developed model 1D W-DCGAN successfully generated vibration data which is very similar to the input.
arXiv Detail & Related papers (2021-12-07T03:37:48Z) - Understanding and Diagnosing Vulnerability under Adversarial Attacks [62.661498155101654]
Deep Neural Networks (DNNs) are known to be vulnerable to adversarial attacks.
We propose a novel interpretability method, InterpretGAN, to generate explanations for features used for classification in latent variables.
We also design the first diagnostic method to quantify the vulnerability contributed by each layer.
arXiv Detail & Related papers (2020-07-17T01:56:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.