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Full Description
This book provides an understanding of the significant applications of IoT technologies in renewable energy. It explores their integration with various renewable energy sources, including solar, wind, bioenergy, piezoelectric materials, and solutions addressing water shortage challenges, highlighting advancements and practical implementations in each area. A comparative analysis of recent techniques is presented to evaluate the efficiency of IoT‑based renewable energy systems. The book also focuses on the economic feasibility of IoT-enabled renewable energy solutions.
Features:
Addresses multiple renewable energy technologies with IoT-based monitoring and control
Explores solar, wind, and hybrid energy systems, including energy storage and microgrid integration
Investigates renewable energy microgrid systems
Focuses on climate goals and the Sustainable Development Goals (SDGs)
Includes discussions of marine renewable energies and offshore wind turbine generation
This book is aimed at graduate students and researchers in renewable energy engineering, IoT and embedded systems, and electrical engineering.
Contents
1.Intelligence in Renewable Energy Systems: A Comprehensive Review of Smart Optimization, Management, and Integration Approaches 2. AI-assisted Wave Energy Converters: Technology Evolution, Applications & Future Perspectives 3. IoT-driven Smart Port Logistics for Renewable Energy Integration in Maritime Supply Chains 4.Technological Innovations in Solar Energy and Their Impact on Environmental, Social, and Governance Goals 5. Internet of Things in Enabling Waste-to-Energy for Fuel Cell Technology in Industrial Settings 6. Solar Powered Greenhouse Farming 7. IoT-based Monitoring and Maintenance Solution for Solar Street Lighting System and Model Optimization for Enhanced Solar Efficiency in Dust-Prone Environments 8.IoT Innovations for Marine Renewable Energies: Legal, Technical, and Policy Pathways for Decentralized Ocean Energy Systems 9. Supervised Learning-Driven Insights into Charging Behavior of Electric Vehicle Batteries under Changing Thermal Environments



