Damage Identification in Structural Health Monitoring: A Brief Review from its Implementation to the Use of Data-Driven Applications
Abstract
:1. Introduction
- the continuous monitoring of the structure since sensors are a part of it;
- the possibility of real-time damage detection;
- the possibility of using sensor or actuator networks;
- robust data analysis that can provide relevant information about the damage;
- an automated inspection process to reduce the number of unnecessary maintenance tasks, thereby improving the economic benefits; and
- operational and environmental evaluation conditions.
2. Description of the SHM Processes
This definition indirectly implies that all SHM applications, including online monitoring, require an adequate sensor network system to evaluate possible changes in the structure that can affect its proper performance. Usually, the sensibility of the SHM system is associated with good interaction between the structure and the sensors. For this reason, it is very important to select appropriate sensors to be installed by considering the material of the structure to inspect, the variables to sense or measure, and the information to obtain for damage identification.“Damage is defined as changes to the material and/or geometric properties of these systems, including changes to the boundary conditions and system connectivity, which adversely affect the system’s performance.”
3. SHM Implementation
3.1. Economic Justification
3.2. Operational and Environmental Conditions
3.3. Damage Definition
3.4. Limitations
4. SHM Implementation Steps
4.1. Sensors and Actuators
4.1.1. Excitation Methods
4.1.2. Types of Sensors
4.1.3. Piezoelectric Sensors
4.1.4. Fiber Optics
4.1.5. Microelectromechanical Systems (MEMS)
4.2. Location and Networking
4.3. Data Acquisition
- the evaluation of the required number of inputs and outputs, that is, the number of digital or analog terminals to connect;
- the number of sensors;
- the need for an actuation system;
- the development of a quantified definition of the damage;
- the need for capturing local measurement or using remote sensing;
- the system-level responses—the information that is expected to be processed or preprocessed in the system;
- the possibility of implementing damage identification in an embedded system;
- the integration of feature extraction and statistical modeling algorithms with the sensing system;
- the consistent and retrievable archival of data for long-term monitoring;
- the transmission of information about the system condition to maintenance personnel or control systems;
- the operation of the sensing system with minimal maintenance over long periods of time in order to minimize the cost of the sensing and data acquisition system;
- the power consumption and source for long-term applications; and
- the evaluation of the operational and environmental conditions.
4.4. Signal Conditioning
- Expansion of the generated solution: In many projects, the increment or adaptability of the created sensor network is required to increase the resolution or to decrease the range of values of a variable. The DAQ system must be able to adapt to these changes.
- Isolation should be considered in case of harmful signals for the processing schemes.
- Bandwidth: The information content of the sampled signal has to be transmitted with the fewest losses possible. This is achieved with the use of adequate sampling and the allocation of a suitable bandwidth.
- Calibration should be performed periodically to avoid failures in the processes of detection, location, or damage characterization.
- Maintenance is a relevant feature in continuous inspection systems since correct maintenance decreases the number of failures.
4.5. Preprocessing Step
4.6. Data Reduction and Feature Extraction
- Principal Component Analysis (PCA);
- Independent Component Analysis (ICA);
- Latent Sparse Domain Transfer (LSDT);
- Linear Discriminant Analysis (LDA);
- Fast Fourier Transform (FFT);
- Discrete Wavelet Transform (DWT) [166]; and
- Local Discriminant Preservation Projection (LDPP).
4.7. Prognosis Faults in SHM
4.8. Development of Statistical Models
4.9. The Decision Level
5. Conclusions
- The works related to the advances and implementation of SHM systems account for the monitoring requirements of healthy structures in diverse areas of applications, such as civil engineering, aeronautics, transport, and power generation. This research field, which is still developing, presents research opportunities related to methods for sensor selection and location, communication systems, analysis of environmental and operational conditions, reduction of false positives and false negatives, and decision methodologies, among others.
- There has been a considerable increase in the use of SHM systems in operating structures. This increase, together with the emergence of regulations for the operation of systems for monitoring structures, reflects the rapid adoption of SHM in industries such as the automotive and aeronautics sectors and intelligent materials development. As a result, a significant growth in investment, leading to the application of all levels of SHM, is expected.
- Although this paper presents the steps of implementing an SHM system, these steps should be used only as a reference: they can be decomposed or complemented according to the implementation and the intended approach. This is currently a focus that is actively researched to improve the reliability of the elements of the implementation.
- Using data that are directly acquired from sensors installed on the structure is a convenient way to evaluate the current state of a structure. This allows for the continuous measurement of data to monitor applications in real time. However, some problems may arise during the implementation of these SHM approaches. Such challenges include the following:
- (a)
- Failures in the sensors are possible and can arise from problems during installation or damages to the sensor when the structure is subjected to hard conditional and operational variations. This problem can be solved by the use of faulty sensor detection, similar to damage detection. In some cases, it is possible to reconstruct the signal to avoid false damage detections during the damage-identification process. Similarly, there are some data-driven algorithms that can compensate for the effects of environmental and operational variations; these are required because, as it was explained, environmental and operational variations can change the baseline and can produce false positive damage identification.
- (b)
- Poor use of preprocessing techniques often leads to poor results of the damage-identification process. This problem can be partially solved by the design of robust methodologies.
- (c)
- Some problems are related to storing data and processing the information coming from large structures instrumented with a large number of sensors. In some cases, such problems can be easily solved through a distributed analysis.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
AANN | Auto-associative neural networks |
ADC | Analog-to-digital converters |
AE | Acoustic emission |
AIS | Artificial immune systems |
ANN | Analysis of artificial neural networks |
BF-SHM | Baseline-free SHM |
BHM | Bridge Health Monitoring |
BU | Bayesian updating |
DAQ | Data acquisition |
DSS | Decision support systems |
DWT | Discrete wavelet transform |
EMI | Electromechanical impedance |
EMIS | Electromechanical impedance spectroscopy |
EUT | Expected utility theory |
FA | Factor analysis |
FBG | Fiber Bragg grating |
FDD | Frequency domain decomposition |
FEA | Finite element analysis |
FOS | Fiber optics sensors |
GUW | Guided ultrasonic wave |
HC | Hierarchical clustering |
h-NLPLCA | Hierarchical nonlinear principal component analysis |
ICA | Independent component analysis |
IoT | Internet of Things |
kNN | k-nearest neighbor |
LDV | Laser Doppler vibrometer |
LVDT | Linear variable differential transducer |
MAR | Measured amplitude ratio |
MEMS | Microelectromechanical systems |
ML | Machine learning |
NBI | National Bridge Inventory |
NDE | Nondestructive evaluation |
NEMS | Nanoelectromechanical system |
NLPCA | Nonlinear principal component analysis |
OMA | Operational modal analysis |
PCA | Principal component analysis |
PDI | Probability damage imaging |
PT | Prospect theory |
PVDF | Polyvinylidene difluoride |
P(VDF-TrFE) | Poly(vinylidene-co-trifluoroethylene) |
PZT | Piezoelectric transducer |
RF | Radio frequency |
RMSD | Root-mean-square deviation |
ROC | Receiver operating characteristic |
SFEM | Smoothed finite element method |
SHM | Structural health monitoring |
SOM | Self-organizing maps |
SVD | Singular value decomposition |
UWC | Unsupervised waveform clustering |
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Sensor Type | Technology | Variable to Measure | Advantages | Disadvantages | Relevant Features |
---|---|---|---|---|---|
Piezoelectric | PZT | Acceleration | Low cost | Thermal sensitivity | Used in EMI applications |
PVDF | Deformation [106] | Low price | Aging | Wide range of frequencies [142] | |
P(VDF-TrFE) | Corrosion [107,108] | Integration possibilities | Shape adaptation [109] | ||
Displacement | Reduced phase | ||||
Vibration | changes [112] | ||||
Fiber optics | FBG | Deformation [122] | High precision | High price | |
FOS | Acceleration [119] | Fragility | |||
Rotation | Electromagnetic interference immunity [117] | ||||
Pressure | |||||
Vibrations | Integration possibilities | ||||
Shifting | |||||
Microelectromechanical systems (MEMS) | MEMS | Deformation | Low cost [124] | High-frequency response [136] | |
NEMS [138] | Acceleration [127,132] | Small size [126] | Fragility | ||
Gyrometer | |||||
Displacement [134] | Wireless connection [127] | ||||
Deformation [135] | Different kinds of sensors and variables [131] | ||||
Shifting |
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Tibaduiza Burgos, D.A.; Gomez Vargas, R.C.; Pedraza, C.; Agis, D.; Pozo, F. Damage Identification in Structural Health Monitoring: A Brief Review from its Implementation to the Use of Data-Driven Applications. Sensors 2020, 20, 733. https://doi.org/10.3390/s20030733
Tibaduiza Burgos DA, Gomez Vargas RC, Pedraza C, Agis D, Pozo F. Damage Identification in Structural Health Monitoring: A Brief Review from its Implementation to the Use of Data-Driven Applications. Sensors. 2020; 20(3):733. https://doi.org/10.3390/s20030733
Chicago/Turabian StyleTibaduiza Burgos, Diego A., Ricardo C. Gomez Vargas, Cesar Pedraza, David Agis, and Francesc Pozo. 2020. "Damage Identification in Structural Health Monitoring: A Brief Review from its Implementation to the Use of Data-Driven Applications" Sensors 20, no. 3: 733. https://doi.org/10.3390/s20030733
APA StyleTibaduiza Burgos, D. A., Gomez Vargas, R. C., Pedraza, C., Agis, D., & Pozo, F. (2020). Damage Identification in Structural Health Monitoring: A Brief Review from its Implementation to the Use of Data-Driven Applications. Sensors, 20(3), 733. https://doi.org/10.3390/s20030733