Application of Genetic Algorithm for More Efficient Multi-Layer Thickness Optimization in Solar Cells
September 14, 2019 ยท Entered Twilight ยท ๐ Energies
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Repo contents: .gitignore, Evo_alg__P3HT-ICBA.fsp, LICENSE, MoOx optical spacer optimization files, README.md, ZnO optical spacer optimization files, ZnO+MoOx optical spacer optimization files, assets, evaluation, license_cprintf.txt, src
Authors
Premkumar Vincent, Gwenaelle Cunha Sergio, Jaewon Jang, In Man Kang, Jaehoon Park, Hyeok Kim, Minho Lee, Jin-Hyuk Bae
arXiv ID
1909.06447
Category
cs.NE: Neural & Evolutionary
Citations
16
Venue
Energies
Repository
https://github.com/gcunhase/GeneticAlgorithm-SolarCells
โญ 13
Last Checked
1 month ago
Abstract
Thin-film solar cells are predominately designed similar to a stacked structure. Optimizing the layer thicknesses in this stack structure is crucial to extract the best efficiency of the solar cell. The commonplace method used in optimization simulations, such as for optimizing the optical spacer layers' thicknesses, is the parameter sweep. Our simulation study shows that the implementation of a meta-heuristic method like the genetic algorithm results in a significantly faster and accurate search method when compared to the brute-force parameter sweep method in both single and multi-layer optimization. While other sweep methods can also outperform the brute-force method, they do not consistently exhibit $100\%$ accuracy in the optimized results like our genetic algorithm. We have used a well-studied P3HT-based structure to test our algorithm. Our best-case scenario was observed to use $60.84\%$ fewer simulations than the brute-force method.
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