Detection of Pneumatic Conveying by Acoustic Emissions
Abstract
:Featured Application
Abstract
1. Introduction
2. Theoretical Model
3. Ensemble Empirical Mode Decomposition
- In the entire data sequence, the number of extreme points and the number of zero-crossings should be equal or differ at most by one;
- The mean value of the envelopes determined by the local maxima and local minima at any given data point should be zero.
- Add white noise to the raw data x(t):
- Decompose the noise-added data X(t) into several IMFs (total number I);
- Repeat steps (1) and (2) several times, each time adding independent random white noise, until the trial number reaches a pre-determined value, m = M, M is the number of trials;
- Calculate the ensemble mean of the M trials for each IMF:
- Finally, decompose the raw data into several IMFs: and a residual component r:
4. Experimental System
4.1. Test Materials and System
4.1.1. Test Materials
4.1.2. System Set-Up
4.1.3. Particle Feeding System
4.1.4. Piping and Air Conveying System
4.2. Data Acquisition System
4.3. Experimental Programs
- The effect of different probe types on AE generation;
- The relationship between particle mass flow rate and the AE signal;
- The relationship between particle size and the AE signal.
5. Results and Discussion
5.1. Effect of Different Signal Acquisition Methods
5.2. Relationship Between Particle Mass Flow Rate/Size and The Ae Signal
6. Conclusions
- Comparison of the RMS values of AE signals illustrates that the acoustic emission signal acquired by a wire mesh is more reliable than the T-type probe.
- After the signals decomposed by the EEMD algorithm, the IMF1 to IMF4 have the potential to represent the raw sample signals to show a relationship between the AE signal and pneumatic conveying parameters.
- By comparing the average relative deviation, it is obvious that the energies of the IMF3 or IMF4 can be used to develop a linear relationship with particle flow rate.
- Instead of the energies of the IMF components, the MSECF of IMF4 have a good performance to distinguish particle size.
Author Contributions
Funding
Conflicts of Interest
References
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Conveying Velocity (m/s) | Particle Mass Flow Rate (g/s) | Particle Loading (%) | Particle Size (μm) |
---|---|---|---|
21 | 6 to 16 with an increment of 2 | 0.006–0.016 | 550/250/180/150 |
Conveying Velocity (m/s) | Particle Mass Flow Rate (g/s) | Particle Loading (%) | Particle Size (μm) |
---|---|---|---|
21 | 18/20 | 0.018/0.02 | 550/250/180/150 |
Particle Mass Flow Rate (g/s) | IMF Number | 550 μm | 250 μm | 180 μm | 150 μm |
---|---|---|---|---|---|
18 | IMF1 | 2.041 | 0.424 | 4.300 | 3.399 |
IMF2 | 2.677 | 0.392 | 5.895 | 4.483 | |
IMF3 | 2.161 | 1.726 | 4.063 | 3.176 | |
IMF4 | 2.704 | 0.387 | 3.839 | 2.256 | |
20 | IMF1 | 0.580 | 5.874 | 3.784 | 4.522 |
IMF2 | 2.474 | 6.552 | 4.852 | 4.405 | |
IMF3 | 3.439 | 3.587 | 1.909 | 3.802 | |
IMF4 | 1.454 | 5.532 | 4.051 | 3.620 |
Sample Number | IMF1 | IMF2 | IMF3 | IMF4 | IMF5 | IMF6 | IMF7 | IMF8 | IMF9 |
---|---|---|---|---|---|---|---|---|---|
1 | 630.921 | 98.471 | 21.726 | 5.857 | 0.725 | 0.305 | 0.186 | 0.079 | 0.050 |
2 | 637.792 | 97.377 | 19.765 | 5.552 | 0.775 | 0.316 | 0.163 | 0.094 | 0.053 |
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An, L.; Liu, W.; Ji, Y.; Shen, G.; Zhang, S. Detection of Pneumatic Conveying by Acoustic Emissions. Appl. Sci. 2019, 9, 501. https://doi.org/10.3390/app9030501
An L, Liu W, Ji Y, Shen G, Zhang S. Detection of Pneumatic Conveying by Acoustic Emissions. Applied Sciences. 2019; 9(3):501. https://doi.org/10.3390/app9030501
Chicago/Turabian StyleAn, Liansuo, Weilong Liu, Yongce Ji, Guoqing Shen, and Shiping Zhang. 2019. "Detection of Pneumatic Conveying by Acoustic Emissions" Applied Sciences 9, no. 3: 501. https://doi.org/10.3390/app9030501
APA StyleAn, L., Liu, W., Ji, Y., Shen, G., & Zhang, S. (2019). Detection of Pneumatic Conveying by Acoustic Emissions. Applied Sciences, 9(3), 501. https://doi.org/10.3390/app9030501