Back to Search Start Over

AI-Controlled Wind Turbine Systems: Integrating IoT and Machine Learning for Smart Grids

Authors :
A Madeswaran
Bisht Deepa
Yuvaraj S.
Udayapal Reedy M.
Al-Attabi Kassem
Dhablia Anishkumar
Source :
E3S Web of Conferences, Vol 540, p 03008 (2024)
Publication Year :
2024
Publisher :
EDP Sciences, 2024.

Abstract

Advances in renewable energy technologies are pivotal in addressing the challenges posed by the depletion of traditional energy sources and their associated environmental impacts. Among these, wind energy stands out as a promising avenue, with wind turbine farms proliferating globally. However, the unpredictable nature of wind and intricate interplay between turbines necessitate innovative solutions for efficient operation and maintenance. This paper reviews advancements in intelligent control systems, notably those proposed by Smart Wind technologies. These systems leverage a network of sensors and IoT devices to gather real-time data, such as wind speed, temperature, and humidity, to optimize turbine performance. A significant focus is on turbines employing doubly-fed induction generators, which offer benefits like adjustable speed and consistent frequency operation. Their integration into smart grids introduces challenges concerning power system dynamics’ security and reliability. This review delves into the dynamics, characteristics, and potential instabilities of such integrations, emphasizing the uncertainties in wind and nonlinear load predictions. A noteworthy finding is the rising prominence of artificial intelligence, particularly machine and deep learning, in predictive diagnostics. These methodologies offer costeffective, accurate, and efficient solutions, holding potential for enhancing power system stability and accuracy in the smart grid context.

Subjects

Subjects :
Environmental sciences
GE1-350

Details

Language :
English, French
ISSN :
22671242
Volume :
540
Database :
Directory of Open Access Journals
Journal :
E3S Web of Conferences
Publication Type :
Academic Journal
Accession number :
edsdoj.06bd72f401241e7b5c6358823aa9ca6
Document Type :
article
Full Text :
https://doi.org/10.1051/e3sconf/202454003008