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Full Description
Harnessing Machine Learning for Environmental Restoration and Surveillance is an extensive and comprehensive book, showcasing the applications of machine learning and artificial intelligence in environmental monitoring of the quality of air, soil and water, prediction of environmental risks, optimisation and prediction of remediation processes and enhancement of resource management.
The book offers readers an opportunity to understand how contemporary smart technology (machine learning and artificial intelligence) can be used to safeguard and improve our environment as well as to solve environmental problems and provide sustainable solutions. It offers insight and an opportunity to evaluate theoretical concepts and real-world case studies, thereby boosting innovation and collaboration. The authors give modest explanations of how artificial intelligence and machine learning can monitor pollution, forecast environmental hazards, and support the optimisation process for the effective removal of environmental contaminants. Real-world examples where these advanced smart technology tools have been successfully utilised are also presented in this book.
The content and coverage of this academic text are ideal for undergraduate and postgraduate students, researchers, professionals in environmental science, data science, and engineering, as well as individuals interested in the environment and technology.
Contents
1. Introduction to Environmental Challenges and Technological Solutions 2. Machine Learning Fundamentals for Environmental Monitoring and Remediation 3. Machine Learning-Driven Environmental Monitoring Systems in Air, Water, and Soil 4. Machine Learning in Pollution Detection and Control in Air, Water, and Soil 5. Machine Learning Predictive Modeling in Environmental Forecasting 6. Future Directions and Innovation on Emerging Machine Learning Technologies in Environmental Science



