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Artificial Intelligence of Things for Weather Forecasting and Climatic Behavioral Analysis [Pehme köide]

Edited by , Edited by , Edited by , Edited by , Edited by
  • Formaat: Paperback / softback, 277 pages, kõrgus x laius: 279x216 mm, kaal: 287 g
  • Ilmumisaeg: 10-Jun-2022
  • Kirjastus: Engineering Science Reference
  • ISBN-10: 1668439824
  • ISBN-13: 9781668439821
Teised raamatud teemal:
  • Formaat: Paperback / softback, 277 pages, kõrgus x laius: 279x216 mm, kaal: 287 g
  • Ilmumisaeg: 10-Jun-2022
  • Kirjastus: Engineering Science Reference
  • ISBN-10: 1668439824
  • ISBN-13: 9781668439821
Teised raamatud teemal:
Weather forecasting and climate behavioral analysis have traditionally been done using complicated physics models and accompanying atmospheric variables. However, the traditional approaches lack common tools, which can lead to incomplete information about the weather and climate conditions, in turn affecting the prediction accuracy rate. To address these problems, the advanced technological aspects through the spectrum of artificial intelligence of things (AIoT) models serve as a budding solution. Further study on artificial intelligence of things and how it can be utilized to improve weather forecasting and climatic behavioral analysis is crucial to appropriately employ the technology.

Artificial Intelligence of Things for Weather Forecasting and Climatic Behavioral Analysis discusses practical applications of artificial intelligence of things for interpretation of weather patterns and how weather information can be used to make critical decisions about harvesting, aviation, etc. This book also considers artificial intelligence of things issues such as managing natural disasters that impact the lives of millions. Covering topics such as deep learning, remote sensing, and meteorological applications, this reference work is ideal for data scientists, industry professionals, researchers, academicians, scholars, practitioners, instructors, and students.
Preface xvi
Section 1
Chapter 1 Introduction to Meteorology and Weather Forecasting
1(15)
Ketaki Anandkumar Pattani
Sunil Gautam
Chapter 2 Role of Meteorological Satellites and Radar in Weather Forecasting
16(16)
Divyang Dave
Rajeev Kumar Gupta
Santosh Kumar Bharti
Ved Prakash Singh
Chapter 3 Enhancement of Meteorological Observational Systems Using the Internet of Things
32(11)
Ramesh Chandra Goswami
Sunil Gautam
Chapter 4 Satellite Remote Sensing and Climate Behavioral Analysis
43(10)
Mink Virparia
Rajeev Kumar Gupta
Ved Prakash Singh
Chapter 5 Tools and Techniques to Implement AIoT in Meteorological Applications
53(22)
Jayashree M. Kudari
M. N. Nachappa
Bhavana Gowda
S. Adlin Jebakumari
Smita Girish
B. S. Sushma
Section 2
Chapter 6 Advancements in Weather Forecasting With Deep Learning
75(12)
Nidhi Tejas Jani
Rajeev Kumar Gupta
Santosh Kumar Bharti
Arti Jain
Chapter 7 Multivariate Time Series Forecasting of Rainfall Using Machine Learning
87(20)
Shilpa Hudnurkar
Vidur Sood
Vedansh Mishra
Manobhav Mehta
Akash Upadhyay
Shilpa Gite
Chapter 8 Deep Learning Solutions for Analysis of Synthetic Aperture Radar Imageries
107(23)
Nimrabanu Memon
Samir B. Patel
Dhruvesh P. Patel
Chapter 9 Harnessing Artificial Intelligence for Drought Management
130(14)
Ved Prakash Singh
Shirish Khedikar
Jimson Mathew
Tanvi Garg
Chapter 10 Soil-Water Management With AI-Enabled Irrigation Methods
144(20)
Ved Prakash Singh
Shirish Khedikar
Jimson Mathew
Lucky Kulshrestha
Chapter 11 Flood Assessment Using Hydrodynamic HEC-RAS Modelling
164(13)
Vaishali I. Rana
Azazkhan I. Pathan
Dhruvesh P. Patel
Prasit G. Agnihotri
Samir B. Patel
Chapter 12 Water Quality Time-Series Modeling and Forecasting Techniques
177(25)
Rashmiranjan Nayak
Mogarala Tejoyadav
Prajnyajit Mohanty
Umesh Chandra Pati
Section 3
Chapter 13 Intelligent Agrometeorological Advisory System
202(15)
Shirish Khedikar
Ved Prakash Singh
Jimson Mathew
Vaibhavi Bandi
Chapter 14 A Robust Method for Classification and Localization of Satellite Cyclonic Images Over the Bay of Bengal and the Arabian Sea Using Deep Learning
217(17)
Manikyala Rao Tankala
Samuel Stella
Prayek Sandepogu
Kondaveeti Nanda Gopal
Ramesh Babu Mamillapalli
Devarakonda Rambabu
Chapter 15 Review of Weather-Affected Urban Air Pollution Forecast Models
234(13)
Ankit Didwania
Vibha Patel
Compilation of References 247(21)
About the Contributors 268(9)
Index 277
John Wang is a professor in the Department of Information & Operations Management at Montclair State University, USA. Having received a scholarship award, he came to the USA and completed his PhD in operations research from Temple University. Due to his extraordinary contributions beyond a tenured full professor, Dr. Wang has been honored with a special range adjustment in 2006. He has published over 100 refereed papers and seven books. He has also developed several computer software programs based on his research findings. He is the Editor-in-Chief of International Journal of Applied Management Science, International Journal of Operations Research and Information Systems, and International Journal of Information Systems and Supply Chain Management. He is the Editor of Data Warehousing and Mining: Concepts, Methodologies, Tools, and Applications (six-volume) and the Editor of the Encyclopedia of Data Warehousing and Mining, 1st (two-volume) and 2nd (four-volume). His long-term research goal is on the synergy of operations research, data mining and cybernetics.