Operational Mapping of Salinization Areas in Agricultural Fields Using Machine Learning Models Based on Low-Altitude Multispectral Images

Author:

Mukhamediev Ravil12ORCID,Amirgaliyev Yedilkhan2,Kuchin Yan2ORCID,Aubakirov Margulan3ORCID,Terekhov Alexei2,Merembayev Timur2,Yelis Marina12ORCID,Zaitseva Elena4ORCID,Levashenko Vitaly4,Popova Yelena5ORCID,Symagulov Adilkhan12,Tabynbayeva Laila6ORCID

Affiliation:

1. Institute of Automation and Information Technology, Satbayev University (KazNRTU), Satpayev Str., 22A, Almaty 050013, Kazakhstan

2. Institute of Information and Computational Technologies, Pushkin Str., 125, Almaty 050010, Kazakhstan

3. Department of Information Technology, Maharishi International University, Fairfield, IA 52557, USA

4. Faculty of Management Science and Informatics, University of Zilina, Univerzitná 8215/1, 010 26 Žilina, Slovakia

5. Baltic International Academy, Lomonosov Str. 1/4, LV-1019 Riga, Latvia

6. LLP Kazakh Research Institute of Agriculture and Plant Growing, Almaty 040909, Kazakhstan

Abstract

Salinization of cultivated soil is an important negative factor that reduces crop yields. Obtaining accurate and timely data on the salinity of soil horizons allows for planning the agrotechnical measures to reduce this negative impact. The method of soil salinity mapping of the 0–30 cm layer on irrigated arable land with the help of multispectral data received from the UAV is described in this article. The research was carried out in the south of the Almaty region of Kazakhstan. In May 2022, 80 soil samples were taken from the ground survey, and overflight of two adjacent fields was performed. The flight was carried out using a UAV equipped with a multispectral camera. The data preprocessing method is proposed herein, and several machine learning algorithms are compared (XGBoost, LightGBM, random forest, support vector machines, ridge regression, elastic net, etc.). Machine learning methods provided regression reconstruction to predict the electrical conductivity of the 0–30 cm soil layer based on an optimized list of spectral indices. The XGB regressor model showed the best quality results: the coefficient of determination was 0.701, the mean-squared error was 0.508, and the mean absolute error was 0.514. A comparison with the results obtained based on Landsat 8 data using a similar model was performed. Soil salinity mapping using UAVs provides much better spatial detailing than satellite data and has the possibility of an arbitrary selection of the survey time, less dependence on the conditions of cloud cover, and a comparable degree of accuracy of estimates.

Funder

Committee of Science of the Ministry of Science and Higher Education of the Republic of Kazakhstan

Slovak Research and Development Agency

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Aerospace Engineering,Information Systems,Control and Systems Engineering

Reference71 articles.

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4. Toderich, K., Khuzhanazarov, T., Ibrayeva, M., Toreshov, P., Bozaeva, J., Konyushkova, M., and Krenke, A. (2023, May 24). Innovative Approaches and Technologies to Manage Salinization of Marginal Lands in Central Asia 2022. Textbook. Nur-Sultan, FAO (In Russian). Available online: https://www.fao.org/3/cb9685ru/cb9685ru.pdf.

5. (2023, May 02). About 85% of Soils in Kyzylorda Oblast Are Saline. Available online: https://eldala.kz/novosti/kazahstan/5735-v-kyzylordinskoy-oblasti-zasoleny-okolo-85-pochv.

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