Turkish Journal of Engineering

Turkish Journal of Engineering

PERFORMANCE COMPARISON OF ANFIS, ANN, SVR, CART AND MLR TECHNIQUES FOR GEOMETRY OPTIMIZATION OF CARBON NANOTUBES USING CASTEP

Yazarlar: Mehmet ACI, Çiğdem İnan ACI, Mutlu AVCI

Cilt 2 , Sayı 3 , 2018 , Sayfalar 119 - 124

Konular:Mühendislik

DOI:10.31127/tuje.408976

Anahtar Kelimeler:Geometry Optimization,Cnt,Dft,Artificial Intelligence

Özet: Density Functional Theory (DFT) calculations used in the Carbon Nanotubes (CNT) design take a very long time even in the simulation environment as it is well known in the literature. In this study, the calculation time of DFT for geometry optimization of CNT is reduced from days to minutes using seven artificial intelligence-based and one statistical-based methods and the results are compared. The best results are achieved from ANFIS and ANN-based models and these models can be used instead of CNT simulation software with high accuracy.


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BibTex
KOPYALA
@article{2018, title={PERFORMANCE COMPARISON OF ANFIS, ANN, SVR, CART AND MLR TECHNIQUES FOR GEOMETRY OPTIMIZATION OF CARBON NANOTUBES USING CASTEP}, volume={2}, number={3}, publisher={Turkish Journal of Engineering}, author={Mehmet ACI,Çiğdem İnan ACI,Mutlu AVCI}, year={2018}, pages={119–124} }
APA
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Mehmet ACI,Çiğdem İnan ACI,Mutlu AVCI. (2018). PERFORMANCE COMPARISON OF ANFIS, ANN, SVR, CART AND MLR TECHNIQUES FOR GEOMETRY OPTIMIZATION OF CARBON NANOTUBES USING CASTEP (Vol. 2, pp. 119–124). Vol. 2, pp. 119–124. Turkish Journal of Engineering.
MLA
KOPYALA
Mehmet ACI,Çiğdem İnan ACI,Mutlu AVCI. PERFORMANCE COMPARISON OF ANFIS, ANN, SVR, CART AND MLR TECHNIQUES FOR GEOMETRY OPTIMIZATION OF CARBON NANOTUBES USING CASTEP. no. 3, Turkish Journal of Engineering, 2018, pp. 119–24.