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Computational Intelligence for Water and Environmental Sciences (Studies in Computational Intelligence Book 1043)
Computational Intelligence for Water and Environmental Sciences (Studies in Computational Intelligence Book 1043)
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Computational Intelligence for Water and Environmental Sciences (Studies in Computational Intelligence Book 1043)

Computational Intelligence for Water and Environmental Sciences (Studies in Computational Intelligence Book 1043)

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Springer

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ISBN-10
ISBN-13
978-9811925184
Publisher
Springer
Price
48.91
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PDF
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0

From the Back Cover

This book provides a comprehensive yet fresh perspective for the cutting-edge CI-oriented approaches in water resources planning and management. The book takes a deep dive into topics like meta-heuristic evolutionary optimization algorithms (e.g., GA, PSA, etc.), data mining techniques (e.g., SVM, ANN, etc.), probabilistic and Bayesian-oriented frameworks, fuzzy logic, AI, deep learning, and expert systems. These approaches provide a practical approach to understand and resolve complicated and intertwined real-world problems that often imposed serious challenges to traditional deterministic precise frameworks. The topic caters to postgraduate students and senior researchers who are interested in computational intelligence approach to issues stemming from water and environmental sciences.

--This text refers to the hardcover edition.

About the Author

Dr. Omid Bozorg-Haddad is a distinguished professor at the University of Tehran, Iran. His teaching and research interests include water resources, energy, and environmental systems analysis, engineering, planning, and management as well as application of simulation techniques and optimization algorithms in water-related systems. He has published more than 40 books and chapters, 300 journal, and 200 conference papers.

--This text refers to the hardcover edition.

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