Measures of Entropy to Characterize Fatigue Damage in Metallic Materials
Abstract
:1. Introduction
2. Fatigue Damage Evaluation Using Three Entropy Measures
3. Experimental Setup and Fatigue Damage Entropy Analyses
3.1. Specimen Preparation: Design, Evaluation, Manufacturing, and Surface Processing
3.2. Cyclic Loading Process
3.3. Measurement Setup
3.3.1. Stress and Strain
3.3.2. Acoustic Emission
3.3.3. Surface Temperature
3.3.4. Crack Length Measurement
3.4. Data Analysis: Calculating Entropies
4. Results and Discussion
4.1. Classical Thermodynamic Entropy (CTE)
4.1.1. Entropy Calculation Process
4.1.2. Results and Evaluation of Classical Thermodynamic Entropy
4.2. Jeffreys Divergence: The Entropy of Strain Energy Distributions
4.2.1. Analysis and Results: Distribution of Forward/Reverse Work and JD Calculation
4.2.2. Evaluation: Correlation to the Classical Thermodynamic Entropy
4.3. AE Information Entropy
4.3.1. Analysis of Information Entropy (IE)
4.3.2. Evaluation of AE Entropy and Correlation with Fatigue Damage
4.4. Summary and Comparison
5. Conclusions
- In classical thermodynamics, the entropic endurance showed a slight correlation with the cyclic stress amplitude. This entropy was shown to be an appropriate index of damage.
- Application of Jeffreys divergence in macro-scale was empirically explored and computed from the forward/reverse work distributions, which showed an excellent correlation to the normalized damage. The quantitative conversion factor (namely the pseudo-Boltzmann constant, ) also showed consistency between the classical thermodynamic entropic damage and Jeffreys divergence-based entropic damage.
- Fatigue damage assessment using information (Shannon) entropy of the acoustic emission waveform data, compared well with the classical thermodynamic entropy. Similarly, using statistical tests, it was shown that the AE-based informational entropy of damage was more consistent than the two conventional AE features (i.e., count and absolute energy) used in the fatigue damage assessment.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Mechanical Properties | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
[MPa] | [MPa] | Elongation [%] | Hardness [RB *] | ||||||||
613.8 | 325.65 | 54.06 | 85.00 | ||||||||
Chemical Composition [w%] | |||||||||||
C | Cr | Cu | Mn | Mo | N | Ni | P | S | Si | ||
0.0243 | 18.06 | 0.3655 | 1.772 | 0.2940 | 0.0713 | 8.081 | 0.0300 | 0.0010 | 0.1930 |
Max. Load [kN] | Test Specimen IDs | ||
---|---|---|---|
Stress ratio | 0.1 | 16 | 8VA43–8VA 52 |
Frequency | 5 Hz | 18 | 8VA33–8VA 42 |
# of cycle per block | 1000 | 20 | 8VA23–8VA 32 |
Loading duration | 200 s | 22 | 8VA13–8VA 22 |
24 | 8VA03–8VA 12 |
RNA [23] | Metal Fatigue Test | |
---|---|---|
Purpose | Finding Helmholtz free energy | Assessing the amount of damage |
Source of fluctuation | Thermal energy Fluctuation in atomic distance | Plastic strain energy Multi-scale defects (e.g., point defect, dislocation, volumetric defect, inclusions, grain structure variability) |
Test control | Controlled in displacement Thermal equilibrium at both end of displacement points | Controlled tensile load Thermal equilibrium not controlled |
Test repetition | Hundreds of times. A specimen was repeated with unfolding/folding process without regarding the damage | 10 fatigue tests repeated with a fixed loading condition, and strain energy data grouped in the corresponding damage |
Correlating constant (JD to CTE) | Boltzmann constant () | Pseudo-Boltzmann constant estimated from tests (range of the mean values) |
Failure Defined at | a:IE b: Absolute Energy | a:IE b: Count | ||
---|---|---|---|---|
ch1 | ch2 | ch1 | ch2 | |
Initiation | ||||
250 μm | ||||
500 μm | ||||
1000 μm | ||||
Transition | ||||
Fracture |
Classical Thermodynamic Entropy (CTE) | Jeffreys Divergence (JD) | AE Information Entropy (IE) | |
---|---|---|---|
Analysis of source data | Plastic strain energy Surface temperature | Plastic strain energy | AE waveform |
Calculation method | Bilinear irreversible thermodynamic entropy Equation (2) | Fluctuation theorem and relative entropy Equations (7)–(9) | Information theory Equation (3) |
Evaluation | Consistent entropic endurance Used as the reference damage | Correlation to normalized measured damage Pseudo-Boltzmann constant () | Correlation to normalized measured damage |
Effect | Endurance verified Linear relation to stress amplitude | Endurance verified Consistent | Better than AE count and absolute energy. Useful for early life in pre-crack initiation |
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Yun, H.; Modarres, M. Measures of Entropy to Characterize Fatigue Damage in Metallic Materials. Entropy 2019, 21, 804. https://doi.org/10.3390/e21080804
Yun H, Modarres M. Measures of Entropy to Characterize Fatigue Damage in Metallic Materials. Entropy. 2019; 21(8):804. https://doi.org/10.3390/e21080804
Chicago/Turabian StyleYun, Huisung, and Mohammad Modarres. 2019. "Measures of Entropy to Characterize Fatigue Damage in Metallic Materials" Entropy 21, no. 8: 804. https://doi.org/10.3390/e21080804
APA StyleYun, H., & Modarres, M. (2019). Measures of Entropy to Characterize Fatigue Damage in Metallic Materials. Entropy, 21(8), 804. https://doi.org/10.3390/e21080804