ENGLISH
La vitrine de diffusion des publications et contributions des chercheurs de l'ÉTS
RECHERCHER

Novel strategy for fault e-diagnosis of wind energy conversion systems using wavelet analysis based on Rt-Lab and Arduino

Téléchargements

Téléchargements par mois depuis la dernière année

Plus de statistiques...

Cheriet, Ahmed, Hazzab, Abdeldjebar, Bekri, Abdelkader, Gouabi, Hicham, Habbab, Mohamed, Rezkallah, Miloud, Chandra, Ambrish et Ibrahim, Hussein. 2023. « Novel strategy for fault e-diagnosis of wind energy conversion systems using wavelet analysis based on Rt-Lab and Arduino ». International Journal of Power Electronics and Drive Systems, vol. 14, nº 2. pp. 1085-1097.
Compte des citations dans Scopus : 1.

[thumbnail of Chandra-A-2023-26316.pdf]
Prévisualisation
PDF
Chandra-A-2023-26316.pdf - Version publiée
Licence d'utilisation : Creative Commons CC BY-SA.

Télécharger (890kB) | Prévisualisation

Résumé

The diagnosis of wind energy conversion systems (WECS) turns out to be necessary because of their relatively high cost of operation and maintenance. Wind turbines are hard-to-access structures, and they are often located in remote areas. Therefore, a remote diagnosis (e-diagnosis) is required. This paper proposes an alternative approach for the e-diagnosis of a WECS based on the discrete wavelet transform (DWT) and frequency analysis of the aero generator stator currents. To validate this approach, real-time hardware in the loop (HIL) is used to simulate in real-time the mathematical model of the induction generator on the OPAL-RT OP5600 platform to generate the stator currents and the rotor speed. The DWT is applied to the current signal, to generate the DWT signal, which has a huge number of points that are not supported for direct transmission by the Arduino Mega RobotDyn because of its limited sample time. The absolute values of the DWT peak points (MDWT) are sent as point’s packages form to the diagnosis station via the ESP8266 integrated Wi-Fi board of the Arduino Mega RobotDyn to monitor the SCIG states and determine the number of broken bars.

Type de document: Article publié dans une revue, révisé par les pairs
Professeur:
Professeur
Chandra, Ambrish
Affiliation: Génie électrique
Date de dépôt: 06 avr. 2023 21:52
Dernière modification: 12 avr. 2023 18:20
URI: https://espace2.etsmtl.ca/id/eprint/26316

Actions (Authentification requise)

Dernière vérification avant le dépôt Dernière vérification avant le dépôt