Advancements in wind farm layout optimization: a comprehensive review of artificial intelligence approaches
Dublin Core
Title
Advancements in wind farm layout optimization: a comprehensive review of artificial intelligence approaches
Subject
Artificial-intelligence
Metaheuristic algorithms
Optimal placement
Renewable energy
Review
Wind farm
Wind turbines
Metaheuristic algorithms
Optimal placement
Renewable energy
Review
Wind farm
Wind turbines
Description
This article provides a detailed evaluation of cutting-edge artificial intelligence (AI) approaches and metaheuristic algorithms for optimizing wind turbine location inside wind farms. The growing need for renewable energy sources has fueled an increase in research towards efficient and sustainable wind farm designs. To address this challenge, various AI techniques, including genetic algorithms (GA), particle swarm optimization (PSO), simulated annealing, artificial neural networks (ANNs), convolutional neural networks (CNNs), and reinforcement learning, have been explored in combination with metaheuristic algorithms. The goal is to discover optimal sites for turbine placement based on a variety of parameters such as energy output, cost-effectiveness, environmental impact, and geographical restrictions. The paper examines the advantages and disadvantages of each strategy and highlights current breakthroughs in the area. This assessment adds to continuing efforts to optimize wind farm design and promote the use of clean and sustainable energy sources by offering significant insights into current advances.
Creator
Mariam El Jaadi1, Touria Haidi1, Abdelaziz Belfqih2
Source
Journal homepage: http://telkomnika.uad.ac.id
Contributor
PERI IRAWAN
Format
PDF
Language
ENGLISH
Type
TEXT
Files
Collection
Citation
Mariam El Jaadi1, Touria Haidi1, Abdelaziz Belfqih2, “Advancements in wind farm layout optimization: a comprehensive review of artificial intelligence approaches,” Repository Horizon University Indonesia, accessed January 12, 2026, https://repository.horizon.ac.id/items/show/10101.