Design and Validation of a Scalable, Reconfigurable and Low-Cost Structural Health Monitoring System
Abstract
:1. Introduction
2. Monitoring System Design
2.1. Requirements
- Ability to acquire a potentially high number of digital MEMS accelerometers.
- Ability to generate proper input signals to command the excitation devices, for example, an inertial shaker with different patterns: noise, tones, frequency sweeps, etc.
- Possibility of acquiring and integrating information from other sensors (load cells, temperature, humidity, etc.), both analogue and digital.
- Possibility of autonomous operation with recording in a cloud database.
- Low cost, by selecting components that allow to reduce the investment and operational cost in comparison with standard commercial systems.
2.2. System Arquitecture
2.2.1. Sensor Description
2.2.2. Back-End Unit
2.2.3. Processing and Front-End Units
- As a front-end unit, the PC manages all the myRIO platforms connected to the system using a Wi-Fi interface. The PC sends the configuration of the six accelerometer sensors attached to each myRIO device, controls when the acquisition starts and when it stops, and receives the acquired data from the accelerometers for further processing. In addition, the PC shows a user interface that allows changing the system parameters and visualizing the results of the modal analysis of the structure.
- As a processing unit, the PC could execute additional algorithms to perform the modal analysis, evaluate structural changes or generate early warning signals, among others.
- Each myRIO device carries out the synchronous acquisition of the data from the attached ADXL355 sensors and the analog inputs and sends them to the PC.
- One of the myRIO can generate several types of signals in order to be used as excitation signal: a single tone of a fixed frequency, white noise within a limited frequency band or a tone sweep between two frequencies.
- If several myRIO platforms are simultaneously incorporated to the system, a synchronization mechanism must be used to ensure that the data from all the accelerometers is acquired at the same time. One of them must be the master, in order to generate a synchronize signal that is used by the myRIO slaves to start the acquisition synchronously.
- On the other hand, the ARM processor included in the myRIO platform can also be used to implement PU and FE-U at the same time as the BE-U, defining a stand-alone system as shown in Figure 5.
3. System Validation
3.1. Reference System
3.2. Measurement Layout
4. Comparative Results
4.1. Time Signals
4.2. Frequency Response Functions
4.3. Cost
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Characteristic | Prop. System | Ref. System |
---|---|---|
Range | ±2 g, ±4 g, and ±8 g | ±60 g |
Digital sensitivity | 3.9, 7.8 and 15.6 μg/LSB | 11.9 μg/LSB |
Noise density | 25 µg/√Hz | 3 µg/√Hz |
Max. sample frequency | 4 kHz | 200 kHz |
Bits per sample | 20 | 24 |
Max. accelerometer channels | 6 tri-axial | 8 uni-axial |
Element | Reference System | Proposed System | ||||
---|---|---|---|---|---|---|
Model | Cost/Unit | Total | Model | Cost/Unit | Total | |
DAQ | DS-SIRIUS | 6500 | 6500 | myRIO 1900 | 580 | 580 |
6× Accelerometers | KS76C.100 | 350 | 2100 | ADXL355 + Box | 50 | 300 |
Cables | UNF to BNC | 75 | 450 | RJ45 to RJ45 | 8 | 48 |
Total cost | 9050 | 928 |
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Villacorta, J.J.; del-Val, L.; Martínez, R.D.; Balmori, J.-A.; Magdaleno, Á.; López, G.; Izquierdo, A.; Lorenzana, A.; Basterra, L.-A. Design and Validation of a Scalable, Reconfigurable and Low-Cost Structural Health Monitoring System. Sensors 2021, 21, 648. https://doi.org/10.3390/s21020648
Villacorta JJ, del-Val L, Martínez RD, Balmori J-A, Magdaleno Á, López G, Izquierdo A, Lorenzana A, Basterra L-A. Design and Validation of a Scalable, Reconfigurable and Low-Cost Structural Health Monitoring System. Sensors. 2021; 21(2):648. https://doi.org/10.3390/s21020648
Chicago/Turabian StyleVillacorta, Juan J., Lara del-Val, Roberto D. Martínez, José-Antonio Balmori, Álvaro Magdaleno, Gamaliel López, Alberto Izquierdo, Antolín Lorenzana, and Luis-Alfonso Basterra. 2021. "Design and Validation of a Scalable, Reconfigurable and Low-Cost Structural Health Monitoring System" Sensors 21, no. 2: 648. https://doi.org/10.3390/s21020648
APA StyleVillacorta, J. J., del-Val, L., Martínez, R. D., Balmori, J. -A., Magdaleno, Á., López, G., Izquierdo, A., Lorenzana, A., & Basterra, L. -A. (2021). Design and Validation of a Scalable, Reconfigurable and Low-Cost Structural Health Monitoring System. Sensors, 21(2), 648. https://doi.org/10.3390/s21020648