The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Predicting Weather Conditions for Improving Crop Productivity Using Machine Learning Approaches
|
|
Author(s): Vicky Anand (Southern Federal University, Russia), Vishnu D. Rajput (Southern Federal University, Russia), Tatiana Minkina (Southern Federal University, Russia), Saglara Mandzhieva (Southern Federal University, Russia), Aastha Sharma (Jamia Millia Islamia, India), Sunil Kumar (Directorate of Census Operations, Punjab, India)and Elizaveta Konstantinova (Southern Federal University, Russia)
Copyright: 2024
Pages: 29
Source title:
Nanotechnology Applications and Innovations for Improved Soil Health
Source Author(s)/Editor(s): Vishnu D. Rajput (Southern Federal University, Russia)
DOI: 10.4018/979-8-3693-1471-5.ch008
Purchase
|
Abstract
Agricultural systems are becoming increasingly prone to a range of non-climatic and climatic stressors. Constituently, there is food insecurity and economic distress throughout the world. To address these challenges, machine learning (ML) techniques have gained attention in the field of agriculture. Monitoring weather information is crucial for resource management and prioritizing the areas where efforts could be made to strengthen agricultural production. The objective of this chapter is to explore the effectiveness of ML for future simulation of agro-climatological variables. The chapter investigates the methodologies, limitations, and potentialities of ML related with employing ML for weather prediction in the context of sustainable agriculture. Chapter it is stressed on the potential benefits of these predictive models for enhancing crop management methods, resource allocation, and overall agricultural productivity. The use of ML in weather forecasting offers the prospect of helping sustainable and resilient agricultural practices, ultimately contributing to global food security.
Related Content
|
J. Lavanya, Aishwarya Ramesh, Asmita Nandi, D. Srirangasayee.
© 2026.
20 pages.
|
|
Basavaiah Chandu, Venkata Sai Sriram Mosali, K. K. C. Satish Babu, Syed Akhil.
© 2026.
38 pages.
|
|
Y avasn Maruthi, T. Srinivas.
© 2026.
22 pages.
|
|
Aditya Shrivastav, Sunil Sankathala, Susanta Das.
© 2026.
32 pages.
|
|
Sumana Dutta, Sayanti Kar, Gaurav Pant, Souvik Paul, Riya Mukherjee, Arjun Sarkar, Ayantika Banerjee.
© 2026.
22 pages.
|
|
Chaitanya Surya Chandra Nadimpalli, Murali Monangi, Kalyani Teku, V. Subrahmanyam Surya.
© 2026.
44 pages.
|
|
Chaitanya Surya Chandra Nadimpalli, Murali Monangi, Kalyani Teku, V. Subrahmanyam Surya.
© 2026.
24 pages.
|
|
|