A Study on the Evaluation of Effective Properties of Randomly Distributed Gas Diffusion Layer (GDL) Tissues with Different Compression Ratios
Abstract
:1. Introduction
2. Fourier Series-Based Homogenization Method Materials
3. Modeling and Analysis Method
3.1. Generating a Fiber Network for Verification of the Proposed Homogenization Technique
3.2. Generating Fiber Network of Unit-Cell for Different Compression Ratios
3.3. Boundary Conditions in the Finite Element Model
4. Results and Discussion
4.1. Verification Results for Fourier Series-Based Homogenization Theory
4.2. Evaluation of Equivalent Properties of GDL for Different Compression Ratios
5. Conclusions
- A user run-script was developed using a homogenization technique based on the Fourier series to compute effective mechanical properties of GDLs with various compress ratios;
- Among the several homogenization theories, the homogenization theory with the Fourier series method is suitable to predict the effective mechanical properties of GDLs;
- The change of fiber volume fraction according to the compression ratio has a great effect on the longitudinal elastic moduli but relatively little effect on the shear elastic moduli;
- The fiber volume fraction increases sharply at the compression ratios of more than 30%, and then the effective mechanical properties and the stress/force behaviors rapidly change.
Author Contributions
Funding
Conflicts of Interest
References
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Orientation Tensor | 1 | 2 | 3 |
---|---|---|---|
1 | 0.61 | - | - |
2 | - | 0.36 | - |
3 | - | - | 0.03 |
Orientation Tensor | 1 | 2 | 3 | |
---|---|---|---|---|
Original GDL model | 1 | 0.464 | - | - |
2 | - | 0.464 | - | |
3 | - | - | 0.072 | |
10% compressed GDL model | 1 | 0.464 | - | - |
2 | - | 0.467 | - | |
3 | - | - | 0.069 | |
20% compressed GDL model | 1 | 0.461 | - | - |
2 | - | 0.471 | - | |
3 | - | - | 0.068 | |
30% compressed GDL model | 1 | 0.459 | - | - |
2 | - | 0.461 | - | |
3 | - | - | 0.080 | |
40% compressed GDL model | 1 | 0.454 | - | - |
2 | - | 0.454 | - | |
3 | - | - | 0.092 | |
50% compressed GDL model | 1 | 0.448 | - | - |
2 | - | 0.451 | - | |
3 | - | - | 0.101 |
Original | 10% | 20% | 30% | 40% | 50% | |
---|---|---|---|---|---|---|
Porosity | 70.16 | 70.05 (∇0.11) | 65.85 (∇4.2) | 61.43 (∇4.42) | 55.59 (∇5.84) | 47.74 (∇7.85) |
Fiber volume fraction | 17.89 | 19.79 (∆1.9) | 22.06 (∆2.27) | 24.94 (∆2.88) | 29.14 (∆4.2) | 35.04 (∆5.9) |
Resin volume fraction | 11.95 | 10.16 (∇1.79) | 12.09 (∆0.17) | 13.63 (∆1.68) | 15.26 (∆3.31) | 17.22 (∆5.27) |
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Lee, H.; Choi, C.-W.; Kang, K.-W.; Jin, J.-W. A Study on the Evaluation of Effective Properties of Randomly Distributed Gas Diffusion Layer (GDL) Tissues with Different Compression Ratios. Appl. Sci. 2020, 10, 7407. https://doi.org/10.3390/app10217407
Lee H, Choi C-W, Kang K-W, Jin J-W. A Study on the Evaluation of Effective Properties of Randomly Distributed Gas Diffusion Layer (GDL) Tissues with Different Compression Ratios. Applied Sciences. 2020; 10(21):7407. https://doi.org/10.3390/app10217407
Chicago/Turabian StyleLee, Haksung, Chan-Woong Choi, Ki-Weon Kang, and Ji-Won Jin. 2020. "A Study on the Evaluation of Effective Properties of Randomly Distributed Gas Diffusion Layer (GDL) Tissues with Different Compression Ratios" Applied Sciences 10, no. 21: 7407. https://doi.org/10.3390/app10217407
APA StyleLee, H., Choi, C. -W., Kang, K. -W., & Jin, J. -W. (2020). A Study on the Evaluation of Effective Properties of Randomly Distributed Gas Diffusion Layer (GDL) Tissues with Different Compression Ratios. Applied Sciences, 10(21), 7407. https://doi.org/10.3390/app10217407