Lavoisier S.A.S.
14 rue de Provigny
94236 Cachan cedex
FRANCE

Heures d'ouverture 08h30-12h30/13h30-17h30
Tél.: +33 (0)1 47 40 67 00
Fax: +33 (0)1 47 40 67 02


Url canonique : www.lavoisier.fr/livre/economie/ai-edge-and-iot-based-smart-agriculture/descriptif_4464719
Url courte ou permalien : www.lavoisier.fr/livre/notice.asp?ouvrage=4464719

AI, Edge and IoT-based Smart Agriculture Intelligent Data-Centric Systems Series

Langue : Anglais

Coordonnateurs : Abraham Ajith, Dash Sujata, Rodrigues Joel J.P.C., Acharya Biswaranjan, Pani Subhendu Kumar

Couverture de l’ouvrage AI, Edge and IoT-based Smart Agriculture

AI, Edge, and IoT Smart Agriculture integrates applications of IoT, edge computing, and data analytics for sustainable agricultural development and introduces Edge of Thing-based data analytics and IoT for predictability of crop, soil, and plant disease occurrence for improved sustainability and increased profitability. The book also addresses precision irrigation, precision horticulture, greenhouse IoT, livestock monitoring, IoT ecosystem for agriculture, mobile robot for precision agriculture, energy monitoring, storage management, and smart farming. The book provides an overarching focus on sustainable environment and sustainable economic development through smart and e-agriculture.

Providing a medium for the exchange of expertise and inspiration, contributions from both smart agriculture and data mining researchers around the world provide foundational insights. The book provides practical application opportunities for the resolution of real-world problems, including contributions from the data mining, data analytics, Edge of Things, and cloud research communities working in the farming production sector. The book offers broad coverage of the concepts, themes, and instruments of this important and evolving area of IOT-based agriculture, Edge of Things and cloud-based farming, Greenhouse IOT, mobile agriculture, sustainable agriculture, and big data analytics in agriculture toward smart farming.

1. Internet of things (IoT) and data analytics in smart agriculture: Benefits and challenges 2. Edge computing - Foundations and applications 3. IoT-based fuzzy logic-controlled novel and multilingual mobile application for hydroponic farming 4. Functional framework for IoT-based agricultural system5. Functional framework for edge-based agricultural system 6. Precision agriculture: Weather forecasting for future farming 7. Crop management system using IoT 8. Smart irrigation and crop security in agriculture using IoT 9. The Internet of Things in agriculture for sustainable rural development 10. Internet of Things (IoT) in agriculture toward urban greening 11. Smart e-agriculture monitoring systems 12.Smart agriculture using renewable energy and AI-powered IoT 13. Smart irrigation-based behavioral study of Moringa plant for growth monitoring in subtropical desert climatic condition 14. Surveying smart farming for smart cities 15. Farm Automation16. A fog computing-based IoT framework for prediction of crop disease using big data analytics 17. Agribots: A gateway to the next revolution in agriculture 18. SAW: A real-time surveillance system at an agricultural warehouse using IoT 19. The predictive model to maintain pH levels in hydroponic systems 20. A crop-monitoring system using wireless sensor networking 21. Integration of RFID and sensors in agriculture using IOT 22. Prediction of crop yield and pest-disease infestation 23. Machine learning-based remote monitoring and predictive analytics system for crop and lives 24. Exploring performance and predictive analytics of agriculture data25. Climate condition monitoring and automated systems 26. Decision-making system for crop selection based on soil 27. Cyberespionage: Socioeconomic implications on sustainable food security 28. Internet of Things on sustainable aquaculture system 29. IoT-based monitoring system for freshwater fish farming: Analysis and design 30. Transforming IoT in aquaculture: A cloud solution 31. Toward the design of an intelligent system for enhancing salt water shrimp production using fuzzy logic

Dr. Ajith Abraham is a Pro Vice-Chancellor at Bennette University. He is the director of Machine Intelligence Research Labs (MIR Labs), Australia. MIR Labs are a not-for-profit scientific network for innovation and research excellence connecting industry and academia. His research focuses on real world problems in the fields of machine intelligence, cyber-physical systems, Internet of things, network security, sensor networks, Web intelligence, Web services, and data mining. He is the Chair of the IEEE Systems Man and Cybernetics Society Technical Committee on Soft Computing. He is editor-in-chief of Engineering Applications of Artificial Intelligence (EAAI) and serves on the editorial board of several international journals. He received his PhD in Computer Science from Monash University, Melbourne, Australia.


Sujata Dash holds the position of Professor at the Information Technology School of Engineering and Technology, Nagaland University, Dimapur Campus, Nagaland, India, bringing more than three decades of dedicated service in teaching and mentoring students. She has been honoured with the prestigious Titular Fellowship from the Association of Commonwealth Universities, United Kingdom. As a testament to her global contributions, she served as a visiting professor in the Computer Science Department at the University of Manitoba, Canada. With a prolific academic record, she has authored over 200 technical papers published in esteemed international journals, and conference proceedings, and edited book chapters by reputed publishers such as Springer, Elsevier, IEEE, IGI Global USA, and Wiley. Dr. Dash boasts ten patents, two copyrights, numerous textbooks, and edited books to her credit. Actively engaged in professional associations, she is a life member of renowned international bodies like ACM, IRSS, CSI, IMS, OITS, OMS, IACSIT, and IST, and holds a Senior membership in IEEE. Serving as a reviewer and Associate Editor for approximately 15 intern

  • Integrates sustainable agriculture, Greenhouse IOT, precision agriculture, crops monitoring, crops controlling to prediction, livestock monitoring, and farm management
  • Presents data mining techniques for precision agriculture, including weather prediction, plant disease prediction, and decision support for crop and soil selection
  • Promotes the importance and uses in managing the agro ecosystem for food security
  • Emphasizes low energy usage options for low cost and environmental sustainability

Date de parution :

Ouvrage de 574 p.

19x23.4 cm

Disponible chez l'éditeur (délai d'approvisionnement : 14 jours).

193,44 €

Ajouter au panier