Deep Convolutional Neural Networks for Comprehensive Structural Health Monitoring and Damage Detection

Author(s):  
BING ZHA ◽  
YONGSHENG BAI ◽  
ALPER YILMAZ ◽  
HALIL SEZEN
Sensors ◽  
2020 ◽  
Vol 20 (4) ◽  
pp. 1059 ◽  
Author(s):  
Tongwei Liu ◽  
Hao Xu ◽  
Minvydas Ragulskis ◽  
Maosen Cao ◽  
Wiesław Ostachowicz

Vibration-based data-driven structural damage identification methods have gained large popularity because of their independence of high-fidelity models of target systems. However, the effectiveness of existing methods is constrained by critical shortcomings. For example, the measured vibration responses may contain insufficient damage-sensitive features and suffer from high instability under the interference of random excitations. Moreover, the capability of conventional intelligent algorithms in damage feature extraction and noise influence suppression is limited. To address the above issues, a novel damage identification framework was established in this study by integrating massive datasets constructed by structural transmissibility functions (TFs) and a deep learning strategy based on one-dimensional convolutional neural networks (1D CNNs). The effectiveness and efficiency of the TF-1D CNN framework were verified using an American Society of Civil Engineers (ASCE) structural health monitoring benchmark structure, from which dynamic responses were captured, subject to white noise random excitations and a number of different damage scenarios. The damage identification accuracy of the framework was examined and compared with others by using different dataset types and intelligent algorithms. Specifically, compared with time series (TS) and fast Fourier transform (FFT)-based frequency-domain signals, the TF signals exhibited more significant damage-sensitive features and stronger stability under excitation interference. The utilization of 1D CNN, on the other hand, exhibited some unique advantages over other machine learning algorithms (e.g., traditional artificial neural networks (ANNs)), particularly in aspects of computation efficiency, generalization ability, and noise immunity when treating massive, high-dimensional datasets. The developed TF-1D CNN damage identification framework was demonstrated to have practical value in future applications.


Sensors ◽  
2020 ◽  
Vol 20 (12) ◽  
pp. 3429 ◽  
Author(s):  
Bryan Puruncajas ◽  
Yolanda Vidal ◽  
Christian Tutivén

This work deals with structural health monitoring for jacket-type foundations of offshore wind turbines. In particular, a vibration-response-only methodology is proposed based on accelerometer data and deep convolutional neural networks. The main contribution of this article is twofold: (i) a signal-to-image conversion of the accelerometer data into gray scale multichannel images with as many channels as the number of sensors in the condition monitoring system, and (ii) a data augmentation strategy to diminish the test set error of the deep convolutional neural network used to classify the images. The performance of the proposed method is analyzed using real measurements from a steel jacket-type offshore wind turbine laboratory experiment undergoing different damage scenarios. The results, with a classification accuracy over 99%, demonstrate that the stated methodology is promising to be utilized for damage detection and identification in jacket-type support structures.


2021 ◽  
pp. 102480
Author(s):  
Roberto MIORELLI ◽  
Clement FISHER ◽  
Andrii KULAKOVSKYI ◽  
Bastien CHAPUIS ◽  
Olivier MESNIL ◽  
...  

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