Analysis of Acoustic Emission Signals Processed with Wavelet Transform for Structural Damage Detection in Concrete Beams
Abstract
:1. Introduction
- (1)
- The AE wave originated from the inspected element.
- (2)
- This technique detects movements in real-time (dynamic processes) and not geometric discontinuities without movement previously existing in the material.
- (3)
- It can detect damage with unknown discontinuities located in inaccessible areas that other methods cannot.
- (4)
- It is a non-directional technique in the sense that the energy from the AE source is released in all directions; that is, a sensor placed anywhere near the source can detect the resulting AE. This ability is another significant difference from other NDT methods, which use a priori knowledge of the probable location and orientation of the discontinuity.
- (a)
- (b)
- (c)
- (d)
- (e)
- (f)
2. Methodology for Damage Detection
- Instrument the concrete element with AE sensors and acquire the corresponding hits generated using the most convenient AE configuration during a bending test in the form of waveform signals.
- Perform a mother wavelet (MW) and scale range (SR) analysis to define parameters for the specific element under study. This analysis must be carried out by obtaining the maximum WE for all the AE hits generated during the initial test by using different MWs and SRs until the best combination of both parameters is found in order to distinguish the different stages of the structural condition of the element with an acceptable computing time. It should be noted that the maximum WE for each AE hit must be calculated by considering the complete image of the corresponding CWT diagrams; that is, the total duration of each hit must be taken into account, and then the corresponding maximum value of WE is considered. The detailed explanation for obtaining the maximum WE for each AE hit is provided in the Section 2.1, and specifically, it refers to the application of Equation (10).
- Define the WE magnitude values and conditions for which an AE hit must represent the different stages of the structural condition of the element: healthy condition, micro-cracks appearance, the manifestation of a principal crack, propagation of the principal crack, and final rupture. Repeatability of results tendency must be ensured.
- Once the element’s behavior is known under this kind of test, and all the configurations, parameters, values, and stages have been defined, the WE value of any hit during a bending test or during real operation under similar scenarios will determine its structural condition.
- Determine the precise stage of the structural condition of the tested element according to: healthy condition, micro-cracks appearance, the manifestation of a principal crack, propagation of the principal crack, and final rupture.
2.1. Wavelet Energy
3. Laboratory Tests
4. Results Analysis and Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Test/ Specimen | Proposed Method Based on AE-WT | Conventional Method Based on UPVT | |||
---|---|---|---|---|---|
Capable of Detecting the Manifestation of Principal Crack | Time Instant of the Manifestation of the Principal Crack | Capable of Detecting the Manifestation of Principal Crack | Time Instant of a Significant Change in the UPVT Value | Damage Stage Detected | |
UPT-2 | Yes | 218.80 s | No | 245.00 s | Propagation of principal crack |
UPT-4 | Yes | 211.19 s | No | 220.00 s | Final rupture |
UPT-7 | Yes | 187.04 s | No | 195.00 s | Final rupture |
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Machorro-Lopez, J.M.; Hernandez-Figueroa, J.A.; Carrion-Viramontes, F.J.; Amezquita-Sanchez, J.P.; Valtierra-Rodriguez, M.; Crespo-Sanchez, S.E.; Yanez-Borjas, J.J.; Quintana-Rodriguez, J.A.; Martinez-Trujano, L.A. Analysis of Acoustic Emission Signals Processed with Wavelet Transform for Structural Damage Detection in Concrete Beams. Mathematics 2023, 11, 719. https://doi.org/10.3390/math11030719
Machorro-Lopez JM, Hernandez-Figueroa JA, Carrion-Viramontes FJ, Amezquita-Sanchez JP, Valtierra-Rodriguez M, Crespo-Sanchez SE, Yanez-Borjas JJ, Quintana-Rodriguez JA, Martinez-Trujano LA. Analysis of Acoustic Emission Signals Processed with Wavelet Transform for Structural Damage Detection in Concrete Beams. Mathematics. 2023; 11(3):719. https://doi.org/10.3390/math11030719
Chicago/Turabian StyleMachorro-Lopez, Jose M., Jorge A. Hernandez-Figueroa, Francisco J. Carrion-Viramontes, Juan P. Amezquita-Sanchez, Martin Valtierra-Rodriguez, Saul E. Crespo-Sanchez, Jesus J. Yanez-Borjas, Juan A. Quintana-Rodriguez, and Luis A. Martinez-Trujano. 2023. "Analysis of Acoustic Emission Signals Processed with Wavelet Transform for Structural Damage Detection in Concrete Beams" Mathematics 11, no. 3: 719. https://doi.org/10.3390/math11030719
APA StyleMachorro-Lopez, J. M., Hernandez-Figueroa, J. A., Carrion-Viramontes, F. J., Amezquita-Sanchez, J. P., Valtierra-Rodriguez, M., Crespo-Sanchez, S. E., Yanez-Borjas, J. J., Quintana-Rodriguez, J. A., & Martinez-Trujano, L. A. (2023). Analysis of Acoustic Emission Signals Processed with Wavelet Transform for Structural Damage Detection in Concrete Beams. Mathematics, 11(3), 719. https://doi.org/10.3390/math11030719