METHODS AND TECHNOLOGIES OF AUTOMATION AND DATA STRUCTURING IN AGRICULTURE

Abstract

This research aimed to enhance agricultural efficiency through the integration of cutting-edge technologies for crop yield prediction and resource optimization. The agricultural sector faces a pressing challenge in the quest for efficient and cost-effective data collection and processing methods to enhance decision-making and overall productivity. The current reliance on manual data collection and analysis proves to be time-consuming and susceptible to errors, potentially resulting in inaccurate outcomes. The study employed IoT sensors for real-time monitoring of soil, climate, and plant conditions, coupled with machine learning algorithms for data analysis and precise crop yield predictions. Additionally, GPS technology was utilized for field mapping, and autonomous systems, including unmanned tractors and drones, were implemented for automated farm operations. The results demonstrated a significant increase in crop yield accompanied by a notable reduction in resource usage. Accurate predictions of optimal intervals for irrigation, fertilizer application, and harvest were achieved through machine learning models. This allowed farmers to streamline processes, minimize water and fertilizer usage, and ultimately enhance overall agricultural productivity. The study concludes by emphasizing the pivotal role of integrating modern technologies into agriculture for achieving sustainability, efficiency, and increased output.

The article is not prepared yet for the html view. Check back soon.

Copyright information

About this article

Publication Date

01 October 2024

eBook ISBN

-

Publisher

European Publisher

Volume

-

Print ISBN (optional)

-

Edition Number

-

Pages

1-1

Subjects

Cite this article as:

Pakhaev, K., Aygumov, T., & Amirova, E. (2024). METHODS AND TECHNOLOGIES OF AUTOMATION AND DATA STRUCTURING IN AGRICULTURE. In M. R. Nakhaev, A. S. Salamova, A. Wojdilo, V. Ricardo, & V. Micale (Eds.), Proofreading - Upcoming Volume: Modern Trends in Governance and Sustainable Development of Socio-economic Systems: From Regional Development to Global Economic Growth, vol -. European Proceedings of Multidisciplinary Sciences (pp. 0-0). European Publisher. https://doi.org/10.15405/epms.2024.09.76