ALTERNATIVE TOOLS FOR MODERN AGROECOLOGICAL RESEARCH

Remote Sensing & GIS for Environmental Monitoring

Authors

First and Last Name Academic degree E-mail Affiliation
Viktoriia Skyba Ph.D. viktoriia.skyba [at] tsatu.edu.ua Dmytro Motorny Tavria State Agrotechnological University
Zaporozhye, Ukraine
Natalia Vozniuk Ph.D. n.m.voznyuk [at] nuwm.edu.ua National University of Water and Environmental Engineering
Rivne, Ukraine
Olena Likho Ph.D. o.a.liho [at] nuwm.edu.ua National University of Water and Environmental Engineering
Rivne, Ukraine
Serhii Vozniuk No m1crosoft.rovno [at] ukr.net National University of Water and Environmental Engineering
Rivne, Ukraine
Oleksii Buhaiev No lb61448 [at] gmail.com Dmytro Motorny Tavria State Agrotechnological University
Zaporozhye, Ukraine

I and my co-authors (if any) authorize the use of the Paper in accordance with the Creative Commons CC BY license

First published on this website: 24.08.2024 - 19:50
Abstract 

Most researchers and scientists, including ourselves, encounter difficulties in finding data for building an extensive database, analyzing, and summarizing information during the course of scientific research, which requires significant time investments. Therefore, our goal was to explore the possibilities of applying traditional methods of data collection and processing with interactive GIS mapping, created based on geomatics tools combined with artificial intelligence (AI) as a modern alternative tool for conducting scientific research.

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