Statistical Image Analysis on Liquid-Liquid Mixing Uniformity of Micro-Scale Pipeline with Chaotic Structure
Abstract
:1. Introduction
2. Experiments and Methods
2.1. Fundamentals of Micromixer
2.2. Numerical Simulations
2.3. Proposed Method
3. Results and Discussion
3.1. Mixing Performance of Basic Mixing Unit
3.2. Effect of Diffusion Coefficient on Uniformity Coefficient
3.3. Effect of Initial Velocity on Uniformity Coefficient
4. Conclusions
- (1)
- The contribution of the basic mixing unit of the chaotic Baker pipeline to the whole fluid mixing process is studied by using the non-uniformity coefficient (NUC) method under various conditions (thirty-six cases in this study). The experimental results show that the optimal contribution ratio of the basic mixing unit is about 6:3:1 (calculated in turn along the fluid flow direction), which can provide theoretical guidance for the structural design of the millimeter mixer.
- (2)
- The effects of two parameters (initial velocity and diffusion coefficient) on the quality of the mixing state in the mixing process of liquid-liquid flow are investigated thoroughly, and the uniformity of the fluid concentration field under different experimental conditions is calculated. It is found that the highest mixing uniformity can be achieved when the initial velocity U0 = 0.05 m/s, and the diffusion coefficient D0 = 5 × 10−9 m2/s.
- (3)
- Based on image processing technology, under thirty-six different working conditions, it is analyzed from three dimensions: the contribution of the basic mixing unit of the chaotic Baker pipeline, the diffusion coefficient, and the influence of initial velocity on fluid mixing in the chaotic Baker pipeline. The experimental results show that the non-uniformity coefficient method can evaluate the characteristics of the macro mixing process and provide a method for directly measuring the uniformity of the macro mixing process. The statistical image analysis technique based on uniform design theory is illustrated to be reliable and effective in yielding accurate concentration field information of the simulated chaotic mixer. Meanwhile, it is also found that the quantification of the non-uniformity coefficient method can also amplify the difference.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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D0 (m2/s) | 10−13 | 10−11 | 10−10 | 5 × 10−10 | 10−9 | 5 × 10−9 | |
---|---|---|---|---|---|---|---|
U0 (m/s) | |||||||
0.0001 | C1 | C7 | C13 | C19 | C25 | C31 | |
0.0005 | C2 | C8 | C14 | C20 | C26 | C32 | |
0.001 | C3 | C9 | C15 | C21 | C27 | C33 | |
0.005 | C4 | C10 | C16 | C22 | C28 | C34 | |
0.01 | C5 | C11 | C17 | C23 | C29 | C35 | |
0.05 | C6 | C12 | C18 | C24 | C30 | C36 |
D0 (m2/s) | 10−13 | 10−11 | 10−10 | 5 × 10−10 | 10−9 | 5 × 10−9 | |
---|---|---|---|---|---|---|---|
U0 (m/s) | |||||||
0.0001 | 0.037971 | 0.033478 | 0.017556 | 0.010015 | 0.006837 | 0.000621 | |
0.0005 | 0.03621 | 0.036321 | 0.027941 | 0.017137 | 0.010518 | 0.006425 | |
0.001 | 0.033552 | 0.034063 | 0.029661 | 0.021283 | 0.016404 | 0.007419 | |
0.005 | 0.011038 | 0.009832 | 0.009909 | 0.009972 | 0.010109 | 0.00639 | |
0.01 | 0.004801 | 0.004916 | 0.004928 | 0.004904 | 0.004889 | 0.00457 | |
0.05 | 0.00149 | 0.001486 | 0.001474 | 0.001473 | 0.001472 | 0.001464 |
D0 (m2/s) | 10−13 | 10−11 | 10−10 | 5 × 10−10 | 10−9 | 5 × 10−9 | |
---|---|---|---|---|---|---|---|
U0 (m/s) | |||||||
0.0001 | 0.999242 | 0.881013 | 0.461991 | 0.263553 | 0.179908 | 0.016349 | |
0.0005 | 0.952899 | 0.955803 | 0.735291 | 0.450962 | 0.276799 | 0.16908 | |
0.001 | 0.88296 | 0.896383 | 0.780565 | 0.560092 | 0.431693 | 0.195229 | |
0.005 | 0.290462 | 0.258744 | 0.260774 | 0.262412 | 0.26603 | 0.168155 | |
0.01 | 0.126348 | 0.129364 | 0.129679 | 0.129055 | 0.128658 | 0.120262 | |
0.05 | 0.039211 | 0.039103 | 0.039792 | 0.038756 | 0.038727 | 0.038516 |
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Wang, H.; Yang, K.; Wang, H.; Wu, J.; Xiao, Q. Statistical Image Analysis on Liquid-Liquid Mixing Uniformity of Micro-Scale Pipeline with Chaotic Structure. Energies 2023, 16, 2045. https://doi.org/10.3390/en16042045
Wang H, Yang K, Wang H, Wu J, Xiao Q. Statistical Image Analysis on Liquid-Liquid Mixing Uniformity of Micro-Scale Pipeline with Chaotic Structure. Energies. 2023; 16(4):2045. https://doi.org/10.3390/en16042045
Chicago/Turabian StyleWang, Haotian, Kai Yang, Hua Wang, Jingyuan Wu, and Qingtai Xiao. 2023. "Statistical Image Analysis on Liquid-Liquid Mixing Uniformity of Micro-Scale Pipeline with Chaotic Structure" Energies 16, no. 4: 2045. https://doi.org/10.3390/en16042045
APA StyleWang, H., Yang, K., Wang, H., Wu, J., & Xiao, Q. (2023). Statistical Image Analysis on Liquid-Liquid Mixing Uniformity of Micro-Scale Pipeline with Chaotic Structure. Energies, 16(4), 2045. https://doi.org/10.3390/en16042045