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John Wiley & Sons Machine Learning for Sustainable Energy Solutions Cover Comprehensive insights into integrating modern engineering techniques with machine learning and rene.. Product #: 978-1-394-26740-8 Regular price: $185.98 $185.98 In Stock

Machine Learning for Sustainable Energy Solutions

Said, Zafar / Sharma, Prabhakar (Editor)

Cover

1. Edition December 2025
304 Pages, Hardcover
Wiley & Sons Ltd

ISBN: 978-1-394-26740-8
John Wiley & Sons

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Comprehensive insights into integrating modern engineering techniques with machine learning and renewable energy to create a more sustainable world

Through an interdisciplinary approach, Machine Learning for Sustainable Energy Solutions provides comprehensive insights into integrating modern engineering techniques such as machine learning (ML), artificial intelligence (AI), nanotechnology, digital twins, and the Internet of Things (IoT) with renewable energy. Each chapter is based on modern research and enhanced by experimental or simulated data.

The book offers a thorough review of several energy storage techniques, helping readers fully grasp the larger background in which chemical, thermal, electrical, mechanical, and machine learning technologies may be used to evaluate, categorize, and maximize different storage systems. The book also reviews the confluence of the Internet of Things (IoT) and machine learning for real-time digestive parameter control and monitoring, along with the cooperative importance of mathematical modeling and artificial intelligence in maximizing reactor performance, gas output, and operational stability.

Machine Learning for Sustainable Energy Solutions includes information on:

* Bio-based energy generation from biomass gasification and biohydrogen
* Usage of hybrid approaches, support vector machines, and neural networks to anticipate and maximize bioenergy production from challenging organic feedstocks
* Hydrogen-powered dual-fuel engines, covering response surface methodology (RSM) for multi-attribute optimization
* Scalable, experimentally confirmed ML-based solutions for long-standing problems like sedimentation, pumping losses, and stability of nanofluids
* The growing and important use of nanotechnology in energy systems, particularly in engine emissions management, energy storage, and heat transfer improvements

Machine Learning for Sustainable Energy Solutions is an essential reference for professionals, researchers, educators, and students working in the fields of energy, environmental science, and machine learning. The book also helps decision-makers in various fields by providing them the required knowledge to make informed choices on sustainable practices and policies.

List of Contributors

Preface

Chapter 1 Green energy led sustainable development: Barriers and opportunities

Chapter 2 Machine Learning Driven Valorization of Organic Waste for Sustainable Bio-hydrogen Production

Chapter 3 Application of Neural Networks for Model-Prediction of Combustion and Emissions in Diesel Engines

Chapter 4 Enhanced Energy Storage with Hybrid Nanoparticles and Machine Learning for Energy Sustainability

Chapter 5 Model prediction of biomass gasification using support vector machines

Chapter 6 Role of machine learning techniques in modeling and optimization of biomass gasification parameters in downdraft gasifier

Chapter 7 Response surface methodology-based multi-attribute optimization of a hydrogen powered dual-fuel engines

Chapter 8 Addition of Nanoparticles in Biodiesel-Diesel Blends to Improve Engine Efficiency and Reduce Tailpipe Emission

Chapter 9 Hybrid Nanoparticles to improve solar based energy storage

Chapter 10 Application of artificial intelligence to model-predict the thermo-physical property of hybrid nanofluids

Chapter 11 Optimization of Nanofluids for Heat Exchangers: Dealing with Sedimentation and Pump Losses

Chapter 12 Navigating the Green Combustion Landscape: Optimizing Emissions and Performance in CI Engines Fuelled by Biogas and Nanoparticle-Doped Biodiesel

Chapter 13 A Differentiation Of Energy Storage Methods

Chapter 14 Application of IoT and Machine Learning to Improve Biogas Production Through Anaerobic Digestion

Chapter 15 Optimization of the Biogas Production Process: Role of Mathematical Modeling and Artificial Intelligence

Index
Zafar Said, PhD, is a Mechanical and Aerospace Engineering Associate Professor at UAE University. With over AED six million in research funding, he has led industry-focused projects with SEWA, Tabreed, and Masdar, advancing innovations in nanofluids, solar energy, AI, and low-carbon fuels.

Prabhakar Sharma, PhD, is an assistant professor at Delhi Skill and Entrepreneurship University, Delhi, India. He has 30 years of combined experience in academia and industry.

Z. Said, University of Sharjah, Unites Arab Emirates; P. Sharma, Delhi Skill and Entrepreneurship University, India