Founder and publisher – Russian Scientific Research Institute of Land Improvement Problems
Land Reclamation and Hydraulic Engineering Melioraciâ i gidrotehnika
ISSN 2712-9357
RUS / ENG

METHODOLOGICAL MANAGEMENT TOOLS OF IRRIGATION WITH ARTIFICIAL INTELLIGENCE

Annotation

Purpose: to develop the concept of irrigation management systems using integrated artificial intelligence technologies. 

Materials and methods. The working hypothesis of the research was the assumption of the priority of the cluster application of artificial intelligence technologies in solving urgent problems of irrigation management. At the same time, the basis of the information-computing unit of the irrigation control system should be deterministic algorithms using proven solutions. 

Results. Within the framework of the proposed concept, a neural network can be used as the basis for solving a problem, or it can only be used to adapt the parameters of the models used. The impact points of traditional, deterministic - analytical irrigation management systems and artificial intelligence technologies are determined by the need to adapt parameters, fine-tune the coefficients of the methodological tools used. At the same time, the scope of application of artificial intelligence in solving problems of irrigation management is quite wide. Artificial intelligence technologies can be used to solve the problems of irrigation planning and operational management, image recognition in satellite monitoring of soil moisture, interpolation of soil moisture data by area, forecasting the soil moisture profile. An algorithm using artificial intelligence technologies to improve the reliability of forecasting the total water consumption of irrigated crops in the regional and landscape aspect is developed by research. The proposed algorithm allows the system to self-learn and refine the regional values of bioclimatic coefficients, with respect to cumulative influence of local factors. Conclusions: a concept has been developed and new scientific approaches have been proposed to effectively solve the problem of adapting the parameters of methodological irrigation management tools at the level of an irrigated field, and even taking into account intra-field variability.

doi: 10.31774/2712-9357-2023-13-2-1-18

Keywords

irrigation management, artificial intelligence, areas of application, integration methods, neural network

For quoting

Lytov M. N. Methodological management tools of irrigation with artificial intelligence. Land Reclamation and Hydraulic Engineering. 2023;13(2):1–18. (In Russ.). https://doi.org/10.31774/2712-9357-2023-13-2-1-18.

Authors

M. N. Lytov – Leading Researcher, Acting Director of the Branch, Candidate of Agricultural Sciences, Associate Professor, Volgograd branch of A. N. Kostyakov All-Russian Research Institute for Hydraulic Engineering and Land Reclamation, Volgograd, Russian Federation, LytovMN@yandex.ru

Bibliography

1. Bliznevsky A.Yu., Bliznevskaya V.S., Klochkov V.P., Shvetsov M.Yu., Osina T.I., 2022. Nekotorye prikladnye aspekty ispol'zovaniya iskusstvennogo intellekta [Some applied aspects of using artificial intelligence]. Zhurnal Ministerstva narodnogo prosveshcheniya [Journal of the Ministry of National Education], no. 9(2), pp. 53-62, DOI: 10.13187/zhmnp.2022.9.53. (In Russian).

2. Efanov V.A., 2022. Tsifrovaya transformatsiya sistemy upravleniya biznes-protsessami khozyaystvuyushchego sub"ekta [Digital transformation of the business process management system of a business subject]. Ekonomika ustoychivogo razvitiya [Economics of Sustainable Development], no. 2(50), pp. 76-81, DOI: 10.37124/20799136_2022_2_50_76. (In Russian). 

3. Zvyagin L.S., 2022. Voprosy primeneniya iskusstvennogo intellekta i izmereniy v sovremennom agrosektore [Questions of the use of artificial intelligence and measurements in the modern agricultural sector]. Myagkie izmereniya i vychisleniya [Soft Measurements and Computing], vol. 50, no. 1, pp. 63-76, DOI: 10.36871/2618-9976.2022.01.007. (In Russian). 

4. Ge L., Hang R., Liu Y., Liu Q., 2018. Comparing the performance of neural network and deep convolutional neural network in estimating soil moisture from satellite observations. Remote Sensing, vol. 10, 1327, https:doi.org/10.3390/rs10091327.

5. Soares F.C., Robaina A.D., Peiter M.X., Russi J.L., Vivan G.A., 2014. Artificial neural networks to estimate soil water retention. Ciencia Rural, vol. 44, no. 2, pp. 293-300, https:doi.org/10.1590/S0103-84782014000200016.

6. Badika E.M., Marchenkov Z.V., 2021. Vliyanie parametrov na pereobuchenie neyronnykh setey [Influence of parameters on retraining of neural networks]. Aktual'nye nauchnye issledovaniya v sovremennom mire [Actual Scientific Research in the Modern World], no. 11-12(79), pp. 46-52. (In Russian).

7. Pyrnova O.A., Zaripova R.S., 2020. Metody i problemy pereobucheniya mnogosloynoy neyronnoy seti [Methods and problems of retraining a multilayer neural network]. Informatsionnye tekhnologii v stroitel'nykh, sotsial'nykh i ekonomicheskikh sistemakh [Information Technologies in Construction, Social and Economic Systems], no. 2(20), pp. 101-102. (In Russian).

8. Isakov R.V., 2020.Tekhnologiya analiza sinapsov neyronnoy seti dlya issledovaniya vkhodnykh priznakov [Technology of analysis of neural network synapses for the study of input features]. Neyrokomp'yutery: razrabotka, primenenie [Neurocomputers: Development, Application], vol. 22, no. 3, pp. 45-55, DOI: 10.18127/j19998554-202003-05. (In Russian).

9. Lemetyuinen Yu.A., 2020. Osnovnye problemy primeneniya neyronnykh setey dlya modelirovaniya biotekhnologicheskikh protsessov [The main problems of using neural networks for modeling biotechnological processes]. Aktual'nye nauchnye issledovaniya v sovremennom mire [Actual Scientific Research in the Modern World], no. 12-2(68), pp. 68-72. (In Russian).

10. Soloviev D.A., Kamyshova G.N., Kolganov D.A., Terekhova N.N., 2021. Model' intellektual'noy sistemy upravleniya orositel'nym kompleksom [Model of an intelligent control system for an irrigation complex]. Agrarnyy nauchnyy zhurnal [Agrarian Scientific Journal], no. 2, pp. 103-108, https:doi.org/10.28983/asj.y2021i2pp103-108. (In Russian).

11. Izmakova O.A., 2005. Randomizirovannye algoritmy samoobucheniya dlya neyronnykh setey [Randomized self-learning algorithms for neural networks]. Differentsial'nye uravneniya i protsessy upravleniya [Differential Equations and Control Processes], no. 2, pp. 122-144. (In Russian).

12. Klokov I.A., Sukhoterin V.A., Klaintsev D.A., Vilezhaninov D.A., 2023. Raznovidnosti arkhitektur neyronnykh setey [Varieties of neural network architectures]. Simvol nauki [Symbol of Science], no. 1-2, pp. 21-22. (In Russian).

13. Lytov M.N., 2022. [Goal functions of climatic risks compensation of cultivation of agricultural crops in the complex use of hydrotechnical reclamation]. Melioratsiya i gidrotekhnika, vol. 12, no. 4, pp. 67-85, available: http:www.rosniipm-sm.ru/article?n=1313 [accessed 15.02.2023], DOI: 10.31774/2712-9357-2022-12-4-67-85. (In Russian).

14. Borodychev V.V., Lytov M.N., 2021. Irrigation management information system model with integrated elements of artificial intelligence. IOP Conference Series: Earth and Environmental Science, vol. 786, 012019, DOI: 10.1088/1755-1315/786/1/012019.

Download