Algorithm Management Optimization (Vol. 1)  Artificial Intelligence in Wind Energy: Transforming Green Energy Generation

Editors: Sugandha Singh, Inam Ul Haq, Sachin Ahuja, Akib Mohi Ud Din Khanday, Neha Sharma

Series Title: Algorithm Management Optimization

Algorithm Management Optimization (Vol. 1) Artificial Intelligence in Wind Energy: Transforming Green Energy Generation

Volume 1

ISBN: 979-8-89881-505-9
eISBN: 979-8-89881-504-2 (Online)

Introduction

Algorithm Management Optimisation (Vol. 1) Artificial Intelligence in Wind Energy: Transforming Green Energy Generation explores the integration of Artificial Intelligence (AI) with wind energy systems to address key challenges in renewable energy. It highlights how machine learning and data-driven techniques improve efficiency, reliability, and sustainability in wind power generation through better forecasting, optimisation, and decision-making.

The book begins with the fundamentals of renewable energy and wind systems, followed by AI and machine learning concepts relevant to energy applications. It covers wind resource assessment, forecasting models, turbine performance optimisation, predictive maintenance, and wind farm site selection. Advanced topics include smart grid integration, hybrid renewable systems, explainable AI, and real-time analytics, supported by practical case studies.


Key Features

  • - Detailed discussions on the integration of AI and machine learning in wind energy systems.
  • - Coverage of forecasting, optimisation, and predictive maintenance.
  • - Focuses on smart grids and hybrid renewable energy systems with discussion on their optimisation, forecasting and predictive maintenance.
  • - Real-world case studies and practical applications with discussions on ethical and responsible AI use in energy.

Target Readership :

Researchers, academics, and industry professionals in renewable energy, electrical engineering, and artificial intelligence.

Foreword

As the world accelerates toward a sustainable future, renewable energy has become central to addressing the twin challenges of climate change and energy security. Among these, wind energy stands out as a key contributor to the clean energy mix, converting natural wind resources into electricity without harmful emissions. Yet, the inherent variability and complexity of wind patterns demand advanced solutions to ensure efficiency, reliability, and cost-effectiveness. Artificial Intelligence in Wind Energy: Transforming Green Energy Generation explores the powerful convergence of artificial intelligence (AI) and wind energy—a synergy that is redefining the future of renewable energy systems. Leveraging AI-driven decision-support tools and machine learning algorithms, wind energy operations can now be optimized across the entire value chain: from resource assessment and site selection to turbine performance optimization, predictive maintenance, and seamless grid integration.

This volume offers in-depth discussions, technical insights, and practical case studies that demonstrate how AI enhances predictive analytics, real-time monitoring, and operational efficiency. These advancements deliver tangible benefits, including higher energy yields, reduced downtime, lower maintenance costs, and the accelerated adoption of hybrid renewable systems. The book also addresses the ethical dimensions of algorithmic management, advocating for transparent, responsible, and equitable AI deployment in the energy sector. Designed for researchers, industry professionals, policymakers, and energy enthusiasts, this work provides both a comprehensive overview of current achievements and a forward-looking perspective on emerging trends and challenges. It aims to inspire innovation, foster collaboration, and contribute to the global transition toward smarter, cleaner, and more resilient energy systems.

Pramod Singh Rathore
Department of Computer and Communication Engineering
Manipal University Jaipur
Jaipur, Rajasthan
India