Catalogue des ouvrages Université de Laghouat

| Titre : |
SIMULATION AND CONCEPTION OF MIMO BIOSENSOR FOR DAMAGE LUNGS RUNG CLASSIFICATION. |
| Type de document : |
document multimédia |
| Auteurs : |
Rania Derar, Auteur ; Fatima Djerfaf, Directeur de thèse |
| Editeur : |
Laghouat : Université Amar Telidji - Département de génie électrique |
| Année de publication : |
2024 |
| Importance : |
85p. |
| Accompagnement : |
1 CD ROM Optique Némérique |
| Note générale : |
Instrumentation |
| Langues : |
Anglais (eng) |
| Mots-clés : |
Biosensors MIMO device Metamaterials Neural networks COVID-19 Lungs. |
| Résumé : |
In the aftermath of the COVID-19 pandemic, many individuals have suffered from severe health repercussions, including both short and long-term lung damage. While X-rays have traditionally been employed for detecting lung issues, the need for faster and more efficient diagnostic methods is evident. In response to this need, this study introduces a novel split ring resonator (SRR) as Multiple-Input Multiple-Output (MIMO) biosensor. It is designed for the millimeter range, to swiftly and safely detect pneumonia associated to the COVID-19. Operating within the 5G frequency bands (36 GHz to 38 GHz) and leveraging metamaterial technology, this biosensor offers a compact solution for identifying lung abnormalities. By analyzing the water percentage in the lungs, the MIMO biosensor distinguishes the lung damage’s levels. Through extensive neural network classification and MIMO biosensor’s S parameters, a robust model for accurately classifying lung damage is developed. The proposed MIMO biosensor device demonstrates precise detection of affected lung level. |
| note de thèses : |
Memoire de Master en Electronique |
SIMULATION AND CONCEPTION OF MIMO BIOSENSOR FOR DAMAGE LUNGS RUNG CLASSIFICATION. [document multimédia] / Rania Derar, Auteur ; Fatima Djerfaf, Directeur de thèse . - Laghouat : Université Amar Telidji - Département de génie électrique, 2024 . - 85p. + 1 CD ROM Optique Némérique. Instrumentation Langues : Anglais ( eng)
| Mots-clés : |
Biosensors MIMO device Metamaterials Neural networks COVID-19 Lungs. |
| Résumé : |
In the aftermath of the COVID-19 pandemic, many individuals have suffered from severe health repercussions, including both short and long-term lung damage. While X-rays have traditionally been employed for detecting lung issues, the need for faster and more efficient diagnostic methods is evident. In response to this need, this study introduces a novel split ring resonator (SRR) as Multiple-Input Multiple-Output (MIMO) biosensor. It is designed for the millimeter range, to swiftly and safely detect pneumonia associated to the COVID-19. Operating within the 5G frequency bands (36 GHz to 38 GHz) and leveraging metamaterial technology, this biosensor offers a compact solution for identifying lung abnormalities. By analyzing the water percentage in the lungs, the MIMO biosensor distinguishes the lung damage’s levels. Through extensive neural network classification and MIMO biosensor’s S parameters, a robust model for accurately classifying lung damage is developed. The proposed MIMO biosensor device demonstrates precise detection of affected lung level. |
| note de thèses : |
Memoire de Master en Electronique |
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| the 09-198 | the 09-198 | CD | BIBLIOTHEQUE DE FACULTE DE TECHNOLOGIE | théses (tec) | Disponible |