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Simulation and Machine Learning Models for Energy Policy Design

  • 1st Edition - October 14, 2025
  • Latest edition
  • Editor: Festus Adedoyin
  • Language: English

Simulation and Machine Learning Models for Energy Policy Design explores how policy design can reduce emissions in support of climate action by emphasizing the integration of cut… Read more

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Description

Simulation and Machine Learning Models for Energy Policy Design explores how policy design can reduce emissions in support of climate action by emphasizing the integration of cutting-edge simulation and machine learning techniques and bridging the gap between theoretical frameworks and practical implementation, therefore offering a hands-on guide for policymakers and professionals seeking innovative solutions. This book not only explores machine learning but also incorporates simulation techniques, providing a more comprehensive guide that extends beyond efficiency to encompass the entire policy design process.

It not only addresses renewable (and other forms of) energy integration challenges but also leverages advanced technologies for optimized decision-making. With its holistic approach and insights on practical implementation, this book is a welcome reference for those who work on the design of energy policies.

Key features

  • Addresses energy policy’s role in climate change that are inline with the growing demand for renewable energy sources and the increasing complexity of energy systems
  • Discusses the application of technology as applied to policy design
  • Contributes to the ongoing dialogue on shaping a future where energy policies are dynamic, data-driven, and adept at fostering a sustainable energy ecosystem

Readership

Energy policymakers, researchers, and industry professionals

Table of contents

1. Introduction: Rethinking Energy Policy in the Digital Age

2. Ethical and Regulatory Dimensions of Energy Policy Models

3. Learning from Experience: Case Studies and Best Practices

4. Foundations of Simulation and Machine Learning Techniques

5. Data-Driven Decision Making: Harnessing Energy Data for Policy

6. Simulating Energy Systems: Case Studies and Applications

7. Machine Learning Algorithms for Policy Optimization

8. Renewable Energy Integration: Challenges and Solutions

9. Efficiency Policies and Beyond: Leveraging Machine Learning

10. Adaptive Policies in Dynamic Markets: A Machine Learning Approach

11. Anticipating the Future: Trends and Emerging Technologies

12. Conclusion: Shaping the Future of Energy Policy

Product details

  • Edition: 1
  • Latest edition
  • Published: October 28, 2025
  • Language: English

About the editor

FA

Festus Adedoyin

Festus is a Fellow of the Higher Education Academy, a Senior Lecturer and Programme Leader for BSc Business Computing with Analytics, Data Science and Artificial Intelligence at the Department of Computing and Informatics, Bournemouth University, U.K. His current research interest is in applying Artificial Intelligence, Machine and Deep Learning, and Econometrics tools to research stories in Energy and Tourism Economics and Finance and Digital Health. Festus has contributed to several thematic areas in the UN's Sustainable Development Goals and is open to international research collaborations.

Affiliations and expertise
Fellow of the Higher Education Academy, Senior Lecturer and Programme Leader for BSc Business Computing with Analytics, Data Science and Artificial Intelligence, Department of Computing and Informatics, Bournemouth University, UK

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