Perpustakaan Sekolah Pascasarjana UNJ
Universitas Negeri Jakarta

Artificial Intelligence and Modeling for Water Sustainability: Global Challenges

Image of Artificial Intelligence and Modeling for Water Sustainability: Global Challenges
Artificial intelligence and the use of computational methods to extract information from data are providing adequate tools to monitor and predict water pollutants and water quality issues faster and more accurately. Smart sensors and machine learning models help detect and monitor dispersion and leakage of pollutants before they reach groundwater. With contributions from experts in academia and industries, who give a unified treatment of AI methods and their applications in water science, this book help governments, industries, and homeowners not only address water pollution problems more quickly and efficiently, but also gain better insight into the implementation of more effective remedial measures.

FEATURES

Provides cutting-edge AI applications in water sector.
Highlights the environmental models used by experts in different countries.
Discusses various types of models using AI and its tools for achieving sustainable development in water and groundwater.
Includes case studies and recent research directions for environmental issues in water sector.
Addresses future aspects and innovation in AI field related to watersustainability.
This book will appeal to scientists, researchers, and undergraduate and graduate students majoring in environmental or computer science and industry professionals in water science and engineering, environmental management, and governmental sectors. It showcases artificial intelligence applications in detecting environmental issues, with an emphasis on the mitigation and conservation of water and underground resources.
Availability
2023020749mah577 MAH aPerpustakaan Pascasarjana UNJAvailable
Detail Information
Series Title

-

Call Number

577 MAH s

Publisher

CRC Press : Boca Raton.,

Collation

xvii, 292 hlm. : ilus. ; 24 cm.

Language

English

ISBN/ISSN

978-1-032-19707-4

Classification

577

Detail Information
Content Type

-

Media Type

-

Carrier Type

-

Edition

Cetakan ke- 1

Subject(s)

-

Specific Detail Info

-

Statement of Responsibility
No other version available

Select Language

Advanced Search

License

This software and this template are released Under GNU GPL License Version 3.