Transforming Agricultural Management for a Sustainable Future : Climate Change and Machine Learning Perspectives (World Sustainability Series) (2024)

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Transforming Agricultural Management for a Sustainable Future : Climate Change and Machine Learning Perspectives (World Sustainability Series) (2024)

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  • 製本 Hardcover:ハードカバー版/ページ数 301 p.
  • 言語 ENG
  • 商品コード 9783031634291

Full Description

"Transforming Agricultural Management for a Sustainable Future: Climate Change and Machine Learning Perspectives" is an essential read for anyone interested in the future of agriculture and the role that technology can play in mitigating the impact of climate change. The book delves into the challenges facing agriculture today, such as climate change, soil degradation, and water scarcity. It then explores how machine learning can be used to overcome these challenges and promote sustainable agricultural practices.

One of the key takeaways from the book is the importance of data-driven decision-making in agriculture. With the help of machine learning algorithms, farmers can analyze vast amounts of data, such as weather patterns, soil quality, and crop yields, to make informed decisions about planting, irrigation, and fertilizer use. By using this data, farmers can optimize their yields while minimizing their impact on the environment.

Another important aspect of the book is its focus on climate change. Agriculture is one of the largest contributors to greenhouse gas emissions, and farmers are already feeling the impact of climate change through droughts, floods, and other extreme weather events. The book provides a comprehensive overview of the ways in which machine learning can be used to reduce the impact of agriculture on the environment, such as by optimizing irrigation and reducing fertilizer use.

The book also explores the role of technology in promoting sustainable agriculture practices. For example, precision agriculture techniques, such as GPS-guided tractors and drones, can help farmers reduce waste and improve crop yields. The book provides examples of how these techniques are already being used in practice, and how they can be further developed to promote sustainability.

Overall, "Transforming Agricultural Management for a Sustainable Future: Climate Change and Machine Learning Perspectives" is an insightful and informative read for anyone interested in the future of agriculture. The book provides a comprehensive overview of the challenges facing agriculture today and the ways in which technology can be used to overcome these challenges and promote sustainable practices. It is a must-read for farmers, policymakers, and anyone interested in the future of our planet.

Contents

Chapter1. Understanding the Challenges of Climate Change for Agricultural Management.- Chapter2. Machine Learning Approaches for Crop Yield Prediction.- Chapter3. Data-Driven Decision Making in Agricultural Resource Allocation.- Chapter4. Remote Sensing and Precision Agriculture: A Sustainable Future.- Chapter5. Managing Water Resources for Sustainable Agricultural Production.- Chapter6. Integrating Agroforestry Practices for Climate Change Mitigation and Adaptation.- Chapter7. Exploring the Role of Blockchain in Sustainable Agricultural Management.- Chapter8. Sustainable Soil Management through Advanced Technologies.- Chapter9. Climate-Smart Agricultural Policies for a Sustainable Future.- Chapter10. Promoting Sustainable Agricultural Practices through Farmer-Driven Innovation.- Chapter11. Climate Change Impacts on Crop Productivity and Food Security: An Overview.- Chapter12. Climate change impacts on water resources and implications for agricultural management.- Chapter13. Advanced technologies for sustainable soil management in a changing climate.- Chapter14. Machine learning approaches for improving water management and irrigation efficiency in agriculture.- Chapter15. Machine learning applications for crop disease and pest monitoring and management.- Chapter16. Climate-resilient agroforestry systems for sustainable land use and livelihoods.

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