Skip to main content

Intelligent Energy Systems using the Barnacles Mating Optimizer and Evolutionary Mating Algorithm

Foundations, Methods, and Applications

  • 1st Edition - November 6, 2025
  • Latest edition
  • Authors: Mohd Herwan Sulaiman, Zuriani Mustaffa
  • Language: English

Intelligent Energy Systems using the Barnacles Mating Optimizer and Evolutionary Mating Algorithm: Foundations, Methods, and Applications reveals the potential of innovative optimi… Read more

World Book Day celebration

Where learning shapes lives

Up to 25% off trusted resources that support research, study, and discovery.

Description

Intelligent Energy Systems using the Barnacles Mating Optimizer and Evolutionary Mating Algorithm: Foundations, Methods, and Applications reveals the potential of innovative optimization algorithms to support sustainability in modern energy systems. This book provides a multidisciplinary foundation for the reader, with Part I breaking down fundamentals including the challenges to be addressed in renewable energy systems and detailed methodologies including swarm-, physics-, and human-based algorithms, before introducing the Barnacles Mating Optimizer and Evolutionary Mating Algorithm themselves. Part II drills deeper into examples, case studies, and applications for energy systems, offering comparative analysis with alternative tools, and providing complimentary MATLAB code using the latest Toolbox. A sandbox for readers to learn, skill-build, and develop in, ‘Intelligent Energy Systems using BMO and EMA’ provides an indispensable guide to these cutting-edge AI tools for new and experienced readers.

Key features

  • Builds step-by-step from foundational principles to complex applications in sustainable energy systems
  • Includes case studies, tools, and complimentary MATLAB code to try out, rework, and apply to new problems
  • Guides readers through these innovative methods, as part of the ground-breaking Advances in Intelligent Energy Systems

Readership

Graduate and upper-level undergraduate students, researchers, and engineers in smart energy systems and renewable energy implementation

Table of contents

Part I: Modern Energy System Challenges: Fundamental Methodologies, Opportunities, and Solutions

1. Challenges of renewable energy systems and the artificial intelligence opportunity

2. Fundamentals of swarm-based algorithms

3. Fundamentals of evolution-based algorithms

4. Fundamentals of physics- and human-based algorithms

5. Fundamentals of the Barnacles Mating Optimizer

6. The Evolutionary Mating Algorithm: principles and applications

7. Deep learning approaches

7.i. Supervised learning with feedforward neural networks (FFNN)

7.ii. Other deep learning families

Part II: Applications for Renewable Energy Systems

8. State of charge (SOC) estimation in electric vehicles using deep learning feedforward neural networks

9. Hybrid of metaheuristic learning with deep learning in battery management of electric vehicles

10. Optimal reactive power dispatch using the Barnacle Mating Optimizer

11. Optimal power flow solutions enhanced by the Evolutionary Mating Algorithm

12. Renewable energy power forecasting, enhanced by hybrid Barnacle Mating Optimizer-Evolutionary Mating Algorithm deep learning

12.i. Solar power

12.ii. Wind power

Product details

  • Edition: 1
  • Latest edition
  • Published: November 6, 2025
  • Language: English

About the authors

MS

Mohd Herwan Sulaiman

Mohamed Herwan Sulaiman currently serves as an Associate Professor in the Faculty of Electrical and Electronics Engineering Technology at the Universiti Malaysia Pahang Al-Sultan Abdullah (UMPSA), Malaysia. His research interests lie in power system optimization and swarm intelligence applications to power system studies. He has authored and co-authored more than 150 technical papers in the international journals and conferences and has been invited as a Journal reviewer for several international impact journals in the field of power systems and soft computing applications and many more.

Affiliations and expertise
Associate Professor, Faculty of Electrical and Electronics Engineering Technology, UMPSA, Malaysia

ZM

Zuriani Mustaffa

Zuriani Mustaffa is a Senior Lecturer in the Faculty of Computing, Universiti Malaysia Pahang Al-Sultan Abdullah (UMPSA), Malaysia. She holds a PhD in Computer Science from the Universiti Utara Malaysia. Her research interests include Computational Intelligence (CI) algorithm and machine learning techniques. Her research area focuses on hybrid algorithms which involves optimization and machine learning techniques with particular attention for time series predictive analysis
Affiliations and expertise
Senior Lecturer, Faculty of Computing, UMPSA, Malaysia

View book on ScienceDirect

Read Intelligent Energy Systems using the Barnacles Mating Optimizer and Evolutionary Mating Algorithm on ScienceDirect