Sustainable Farming Through Machine Learning
Enhancing Productivity and Efficiency
Herausgeber: Satpathy, Suneeta; Balakrishnan, Arun; Yang, Ming; Kumar Paikaray, Bijay
Sustainable Farming Through Machine Learning
Enhancing Productivity and Efficiency
Herausgeber: Satpathy, Suneeta; Balakrishnan, Arun; Yang, Ming; Kumar Paikaray, Bijay
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
Explores the transformative potential of ML technologies in agriculture. It delves into specific applications, such as crop monitoring, disease detection, and livestock management, demonstrating how AI/ML can optimize resource management and improve overall productivity in farming practices.
Andere Kunden interessierten sich auch für
- Machine Learning and Deep Learning for Smart Agriculture and Applications219,99 €
- Innovation in Agricultural Robotics for Precision Agriculture147,99 €
- Artificial Intelligence for Biology and Agriculture121,99 €
- S. Panigrahi / K.C. Ting (eds.)Artificial Intelligence for Biology and Agriculture125,99 €
- Machine Learning and Deep Learning for Smart Agriculture and Applications283,99 €
- Innovation in Agricultural Robotics for Precision Agriculture147,99 €
- K. R. KrishnaAerial Robotics in Agriculture216,99 €
-
-
-
Explores the transformative potential of ML technologies in agriculture. It delves into specific applications, such as crop monitoring, disease detection, and livestock management, demonstrating how AI/ML can optimize resource management and improve overall productivity in farming practices.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: CRC Press
- Seitenzahl: 282
- Erscheinungstermin: 25. November 2024
- Englisch
- Abmessung: 234mm x 156mm x 18mm
- Gewicht: 599g
- ISBN-13: 9781032777498
- ISBN-10: 1032777494
- Artikelnr.: 71234896
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: CRC Press
- Seitenzahl: 282
- Erscheinungstermin: 25. November 2024
- Englisch
- Abmessung: 234mm x 156mm x 18mm
- Gewicht: 599g
- ISBN-13: 9781032777498
- ISBN-10: 1032777494
- Artikelnr.: 71234896
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
Suneeta Satpathy, PhD, is an Associate Professor in the Center for AI & ML, Siksha 'O' Anusandhan (Deemed to be) University, Odisha, India. Her research interests include computer forensics, cyber security, data fusion, data mining, big data analysis, decision mining, and machine learning. She has published papers in many international journals and conferences in repute. She has two Indian patents to her credit and is a member of IEEE, CSI, ISTE, OITS, and IE. Bijay Kumar Paikaray, PhD, is an Associate Professor at the Center for Data Science, Siksha 'O' Anusandhan (Deemed to be) University, Odisha. His interests include high- performance computing, information security, machine learning, and IoT. Ming Yang has a PhD in Computer Science from Wright State University, Dayton, Ohio, US, 2006. Currently he is a Professor in the College of Computing and Software Engineering Kennesaw State University, GA, USA. His research interests include multimedia communication, digital image/ video processing, computer vision, and machine learning. Arunkumar Balakrishnan, PhD, holds the position of Assistant Professor Senior Grade in the Computer Science and Engineering department at VIT- AP University. He obtained his PhD in Information Science and Engineering from Anna University, Chennai. He possesses 12 years of academic expertise and an additional 6 years of concurrent research experience in the domains of Cryptography, Medical Image Security, Blockchain, and NFT. His research interests encompass Cryptography, Network Security, Medical Image Encryption, Blockchain, lightweight cryptography methods, and NFT.
1. Exploring AI and ML Strategies for Crop Health Monitoring and
Management. 2. Enhancing Crop Productivity by Suitable Crop Prediction
Using Cutting-Edge Technologies. 3. Crop Yield Prediction Using Machine
Learning Random Forest Algorithm. 4. A multi-objective based genetic
approach for increasing crop yield on sustainable farming. 5. Drones For
Crop Monitoring And Analysis. 6. Decision Support System For Sustainable
Farming. 7. Empowering Agriculture: Harnessing the Potential of AI-Driven
Virtual Tutors for Farmer Education and Investment Strategies. 8. Enhancing
Agricultural Ecosystem Surveillance through Autonomous Sensor Networks. 9.
Crop Disease Detection Using Image Analysis. 10. Automated Detection of
Plant Diseases Utilizing Convolutional Neural Networks. 11. Apple Leaves
Diseases Detection Using Deep Learning. 12.Optimizing Agricultural Yield:
Comprehensive Approaches for Recommendation System in Precision
Agriculture. 13. Advancements in Precision Agriculture: A Machine
Learning-based Approach for Crop Management Optimization. 14. Precision
Agriculture with Remote Sensing: Integrating Deep Learning for Crop
Monitoring. 15. Farmers Guide: Data-Driven Crop Recommendations for
Precision and Sustainable Agriculture Using IoT and ML. 16. Application of
Machine Learning in the Analysis and Prediction of Animal Disease. 17.
Transforming Indian Agriculture: A Machine Learning Approach for Informed
Decision-Making and Sustainable Crop Recommendations. 18. Automated
Detection of Water Quality for Smart Systems using Various Sampling
Techniques - An Agricultural Perspective. 19. Scope of Artificial
Intelligence (A.I.) in "Agriculture Sector and its applicability in Farm
Mechanization in Odisha. 20. Ethical Considerations and Social
Implications.
Management. 2. Enhancing Crop Productivity by Suitable Crop Prediction
Using Cutting-Edge Technologies. 3. Crop Yield Prediction Using Machine
Learning Random Forest Algorithm. 4. A multi-objective based genetic
approach for increasing crop yield on sustainable farming. 5. Drones For
Crop Monitoring And Analysis. 6. Decision Support System For Sustainable
Farming. 7. Empowering Agriculture: Harnessing the Potential of AI-Driven
Virtual Tutors for Farmer Education and Investment Strategies. 8. Enhancing
Agricultural Ecosystem Surveillance through Autonomous Sensor Networks. 9.
Crop Disease Detection Using Image Analysis. 10. Automated Detection of
Plant Diseases Utilizing Convolutional Neural Networks. 11. Apple Leaves
Diseases Detection Using Deep Learning. 12.Optimizing Agricultural Yield:
Comprehensive Approaches for Recommendation System in Precision
Agriculture. 13. Advancements in Precision Agriculture: A Machine
Learning-based Approach for Crop Management Optimization. 14. Precision
Agriculture with Remote Sensing: Integrating Deep Learning for Crop
Monitoring. 15. Farmers Guide: Data-Driven Crop Recommendations for
Precision and Sustainable Agriculture Using IoT and ML. 16. Application of
Machine Learning in the Analysis and Prediction of Animal Disease. 17.
Transforming Indian Agriculture: A Machine Learning Approach for Informed
Decision-Making and Sustainable Crop Recommendations. 18. Automated
Detection of Water Quality for Smart Systems using Various Sampling
Techniques - An Agricultural Perspective. 19. Scope of Artificial
Intelligence (A.I.) in "Agriculture Sector and its applicability in Farm
Mechanization in Odisha. 20. Ethical Considerations and Social
Implications.
1. Exploring AI and ML Strategies for Crop Health Monitoring and
Management. 2. Enhancing Crop Productivity by Suitable Crop Prediction
Using Cutting-Edge Technologies. 3. Crop Yield Prediction Using Machine
Learning Random Forest Algorithm. 4. A multi-objective based genetic
approach for increasing crop yield on sustainable farming. 5. Drones For
Crop Monitoring And Analysis. 6. Decision Support System For Sustainable
Farming. 7. Empowering Agriculture: Harnessing the Potential of AI-Driven
Virtual Tutors for Farmer Education and Investment Strategies. 8. Enhancing
Agricultural Ecosystem Surveillance through Autonomous Sensor Networks. 9.
Crop Disease Detection Using Image Analysis. 10. Automated Detection of
Plant Diseases Utilizing Convolutional Neural Networks. 11. Apple Leaves
Diseases Detection Using Deep Learning. 12.Optimizing Agricultural Yield:
Comprehensive Approaches for Recommendation System in Precision
Agriculture. 13. Advancements in Precision Agriculture: A Machine
Learning-based Approach for Crop Management Optimization. 14. Precision
Agriculture with Remote Sensing: Integrating Deep Learning for Crop
Monitoring. 15. Farmers Guide: Data-Driven Crop Recommendations for
Precision and Sustainable Agriculture Using IoT and ML. 16. Application of
Machine Learning in the Analysis and Prediction of Animal Disease. 17.
Transforming Indian Agriculture: A Machine Learning Approach for Informed
Decision-Making and Sustainable Crop Recommendations. 18. Automated
Detection of Water Quality for Smart Systems using Various Sampling
Techniques - An Agricultural Perspective. 19. Scope of Artificial
Intelligence (A.I.) in "Agriculture Sector and its applicability in Farm
Mechanization in Odisha. 20. Ethical Considerations and Social
Implications.
Management. 2. Enhancing Crop Productivity by Suitable Crop Prediction
Using Cutting-Edge Technologies. 3. Crop Yield Prediction Using Machine
Learning Random Forest Algorithm. 4. A multi-objective based genetic
approach for increasing crop yield on sustainable farming. 5. Drones For
Crop Monitoring And Analysis. 6. Decision Support System For Sustainable
Farming. 7. Empowering Agriculture: Harnessing the Potential of AI-Driven
Virtual Tutors for Farmer Education and Investment Strategies. 8. Enhancing
Agricultural Ecosystem Surveillance through Autonomous Sensor Networks. 9.
Crop Disease Detection Using Image Analysis. 10. Automated Detection of
Plant Diseases Utilizing Convolutional Neural Networks. 11. Apple Leaves
Diseases Detection Using Deep Learning. 12.Optimizing Agricultural Yield:
Comprehensive Approaches for Recommendation System in Precision
Agriculture. 13. Advancements in Precision Agriculture: A Machine
Learning-based Approach for Crop Management Optimization. 14. Precision
Agriculture with Remote Sensing: Integrating Deep Learning for Crop
Monitoring. 15. Farmers Guide: Data-Driven Crop Recommendations for
Precision and Sustainable Agriculture Using IoT and ML. 16. Application of
Machine Learning in the Analysis and Prediction of Animal Disease. 17.
Transforming Indian Agriculture: A Machine Learning Approach for Informed
Decision-Making and Sustainable Crop Recommendations. 18. Automated
Detection of Water Quality for Smart Systems using Various Sampling
Techniques - An Agricultural Perspective. 19. Scope of Artificial
Intelligence (A.I.) in "Agriculture Sector and its applicability in Farm
Mechanization in Odisha. 20. Ethical Considerations and Social
Implications.