DOI:

https://doi.org/10.14483/23448393.21311

Published:

2024-07-17

Issue:

Vol. 29 No. 2 (2024): May-August

Section:

Biomedical Engineering

A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection

Análisis comparativo entre FFT, EMD y EEMD para la detección de epilepsia

Authors

Keywords:

electroencephalogram, Empirical Mode Decomposition, epilepsy, Instantaneous Frequency, Intrinsec Mode Functions, methodology, non-lineal, non-stationary, oscillation modes, seizures (en).

Keywords:

convulsiones, Descomposicion Empírica de Modos, electroencefalograma, epilepsia, Frecuencias Instantáneas, Funciones de Modo Intrínseco, metodología, modos de oscilación, no-estacionaria, no-lineal (es).

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How to Cite

APA

Dorado-Romero, L., Bueno-López, M., and Cifuentes, J. A. (2024). A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection. Ingeniería, 29(2), e21311. https://doi.org/10.14483/23448393.21311

ACM

[1]
Dorado-Romero, L. et al. 2024. A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection. Ingeniería. 29, 2 (Jul. 2024), e21311. DOI:https://doi.org/10.14483/23448393.21311.

ACS

(1)
Dorado-Romero, L.; Bueno-López, M.; Cifuentes, J. A. A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection. Ing. 2024, 29, e21311.

ABNT

DORADO-ROMERO, Leandro; BUENO-LÓPEZ, Maximiliano; CIFUENTES, Jenny Alexandra. A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection. Ingeniería, [S. l.], v. 29, n. 2, p. e21311, 2024. DOI: 10.14483/23448393.21311. Disponível em: https://revistas.udistrital.edu.co/index.php/reving/article/view/21311. Acesso em: 10 jun. 2026.

Chicago

Dorado-Romero, Leandro, Maximiliano Bueno-López, and Jenny Alexandra Cifuentes. 2024. “A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection”. Ingeniería 29 (2):e21311. https://doi.org/10.14483/23448393.21311.

Harvard

Dorado-Romero, L., Bueno-López, M. and Cifuentes, J. A. (2024) “A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection”, Ingeniería, 29(2), p. e21311. doi: 10.14483/23448393.21311.

IEEE

[1]
L. Dorado-Romero, M. Bueno-López, and J. A. Cifuentes, “A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection”, Ing., vol. 29, no. 2, p. e21311, Jul. 2024.

MLA

Dorado-Romero, Leandro, et al. “A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection”. Ingeniería, vol. 29, no. 2, July 2024, p. e21311, doi:10.14483/23448393.21311.

Turabian

Dorado-Romero, Leandro, Maximiliano Bueno-López, and Jenny Alexandra Cifuentes. “A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection”. Ingeniería 29, no. 2 (July 17, 2024): e21311. Accessed June 10, 2026. https://revistas.udistrital.edu.co/index.php/reving/article/view/21311.

Vancouver

1.
Dorado-Romero L, Bueno-López M, Cifuentes JA. A Comparative Analysis between FFT, EMD, and EEMD for Epilepsy Detection. Ing. [Internet]. 2024 Jul. 17 [cited 2026 Jun. 10];29(2):e21311. Available from: https://revistas.udistrital.edu.co/index.php/reving/article/view/21311

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