Characterization of Fatigue Crack Growth Based on Acoustic Emission Multi-Parameter Analysis
Abstract
:1. Introduction
2. Material and Methods
2.1. Fatigue Crack Growth Test
2.2. AE Monitoring Instrument
2.3. Extraction of Multiple AE Parameters
3. Results and Discussion
3.1. Fatigue Crack Growth Behavior
3.2. Characterization of FCG via AE Multi-Parameter Analysis
3.2.1. AE Time Domain Parameters
3.2.2. AE Frequency Domain Parameter
3.2.3. Coefficient of Variance of AE Data
3.3. Quantitative Correlations between Crack Growth Rate and AE Parameters
3.4. Fatigue Fracture Mechanism
4. Conclusions
- (1)
- Based on the combined analyses of AE time domain parameters and crack growth rate, four stages of FCG (i.e., stage A, B, C and D) of 2.25Cr1Mo0.25V steel can be distinguished. The four stages correspond to crack initiation, stable crack growth with low crack growth rate, stable crack growth with high crack growth rate, and unstable crack growth, respectively. The continuous emergence of a large number of AE signals with high count (>100) and high energy (>40 mV·ms) in stages C and D can help to provide early and effective warning signs for accelerated crack growth.
- (2)
- The centroid frequency of AE signals caused by FCG of 2.25Cr1Mo0.25V steel is distributed in a narrow range of 170–220 kHz. The centroid frequency may not be appropriate for assessing the crack growth condition due to low variability, however, the occurrence of such a frequency band can help to identify possible crack growth signals.
- (3)
- Linear correlations are found between crack growth rate and different AE parameters for quantifying crack growth. However, it should be noted that these quantitative correlations are only valid in current laboratory conditions. This is because AE signals are highly influenced by the sensor/source distance, specimen’s geometry and coupling quality [2], and consequently the quantitative relationships between AE and crack growth rate may not be obtained in the industrial environment. Before the practical application of this approach, the above-mentioned factors should be taken into account to reach a reliable quantification of fatigue crack of engineering structures.
- (4)
- The AE multi-parameter analysis is recommended for damage characterization due to its advantage of reducing errors in using individual AE parameters. In this study, based on the multi-parameter analysis, one can conclude the count, energy and kurtosis are superior parameters for both qualitatively and quantitatively characterizing the FCG of 2.25Cr1Mo0.25V steel.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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AE Parameter | Definition |
---|---|
Amplitude/peak amplitude | Largest voltage peak of the signal waveform. It is expressed in a decibel scale where 1 μV at the sensor is defined as 0 dB. |
Count/ring-down count | Number of times where AE signal exceeds the employed threshold |
Energy | Measured area under the rectified signal envelope above the threshold |
Information entropy | Information or Shannon’s entropy of AE waveform. It denotes the disorder or uncertainty of the probability amplitude distribution. |
Rise time | Time interval between the point where the AE signal exceeds the threshold and the point where the peak amplitude occurs |
Duration | Time interval from the point where the AE signal exceeds the threshold to the last point where it crosses the threshold |
Rise angle (RA) | Ratio of rise time to amplitude |
Root mean square (RMS) | Square root of average of squared value of the signal |
Kurtosis | Measure of the “tailedness” of the AE signal |
Crest factor | Ratio of the peak value to the RMS value |
Centroid frequency | Weighted average of the frequency content calculated by performing fast Fourier transform |
AE Parameter | Amplitude | Count | Energy | Entropy | RA | RMS | Kurtosis | Crest Factor |
---|---|---|---|---|---|---|---|---|
Specimen 1 | 0.045 | 2.406 | 1.402 | 0.235 | 1.693 | 0.115 | 1.003 | 0.244 |
Specimen 2 | 0.829 | 1.683 | 1.735 | 1.189 | 2.082 | 1.369 | 1.291 | 1.342 |
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Chai, M.; Lai, C.; Xu, W.; Duan, Q.; Zhang, Z.; Song, Y. Characterization of Fatigue Crack Growth Based on Acoustic Emission Multi-Parameter Analysis. Materials 2022, 15, 6665. https://doi.org/10.3390/ma15196665
Chai M, Lai C, Xu W, Duan Q, Zhang Z, Song Y. Characterization of Fatigue Crack Growth Based on Acoustic Emission Multi-Parameter Analysis. Materials. 2022; 15(19):6665. https://doi.org/10.3390/ma15196665
Chicago/Turabian StyleChai, Mengyu, Chuanjing Lai, Wei Xu, Quan Duan, Zaoxiao Zhang, and Yan Song. 2022. "Characterization of Fatigue Crack Growth Based on Acoustic Emission Multi-Parameter Analysis" Materials 15, no. 19: 6665. https://doi.org/10.3390/ma15196665
APA StyleChai, M., Lai, C., Xu, W., Duan, Q., Zhang, Z., & Song, Y. (2022). Characterization of Fatigue Crack Growth Based on Acoustic Emission Multi-Parameter Analysis. Materials, 15(19), 6665. https://doi.org/10.3390/ma15196665