EPISTEMOLOGICAL PROVISIONS IN THE AGROINDUSTRIAL COMPLEX

Received 30.09.2024
Revised 03.12.2024
Published 29.12.2024

Abstract

Currently, about 50% of agricultural farms, to one degree or another, use elements of information digital technologies in agricultural production. The paper presents a epistemological approach to the application of digitalization by agricultural producers, taking into account the natural-climatic, commodity-production and social factors of a particular economy. The main provisions of the use of digital technologies in agricultural production are formulated, which determine the approaches to the systematic use of modern digital technologies. As a result of research, they proposed a paradigm of information support for technological processes of agricultural production, a communication scheme for agricultural production facilities reflecting their dialectical commonality

Keywords

agricultural factors paradigm digital information multidimensional space volume of information labor productivity
Suggested citation
Alt, V., & Isakova, S. (2024). EPISTEMOLOGICAL PROVISIONS IN THE AGROINDUSTRIAL COMPLEX. Bulletin of the Kyrgyz National Agrarian University, 22(6), 372-377.

References

  1. Goncharov, V.D., Koteev, S.V., & Rau, V.V. (2016). Problems of Russia's food security. Problems of Forecasting, 2(155), 99-107.
  2. Ganieva, I.A. (2019). Prerequisites for creating an information-resource digital platform for the intelligent management of farming and land use systems for the agro-industrial complex of Russia. Achievements of Science and Technology in the Agro-Industrial Complex, 33(12), 110-116.
  3. Alt, V.V., Bobrova, T.N., Kolpakova, L.A., et al. (2017). Methodological provisions for the information support of machine agro-technologies for spring wheat production at the agricultural enterprise level. Novosibirsk.
  4. Feynman, R. (2006). The meaning of it all: Thoughts of a citizen-scientist. Moscow.
  5. Dos Santos, U.J.L., Pessin, G., da Costa, C.A., & da Rosa Righi, R. (2019). AgriPrediction: A proactive internet of things model to anticipate problems and improve production in agricultural crops. Computers and Electronics in Agriculture, 161, 202-213. doi: 10.1016/j.compag.2018.10.010.
  6. Jones, J.W., et al. (2017). Toward a new generation of agricultural system data, models, and knowledge products: State of agricultural systems science. Agricultural Systems, 155, 269–288. doi: 10.1016/j.agsy.2016.09.021.
  7. Alt, V.V., Savchenko, O.F., Gurova, T.A., et al. (2005). Creation and use of computer information systems in agriculture. Novosibirsk.
  8. Gubarev, V.V. (2005). Algorithms for spectral analysis of random signals. Novosibirsk: NSTU.
  9. Alt, V.V., Isakova, S.P., & Lapchenko, E.A. (2015). Network decision support system for crop production management. In Environmentally friendly agriculture and forestry for future generations: Proceedings of International scientific XXXVI CIOSTA&CIGR SECTION V conference (p. 614). St. Petersburg.
  10. Donchenko, A.S., Kalichkin, V.K., & Denisov, A.S. (Eds.). (2016). Interregional scheme for the placement and specialization of agricultural production in the subjects of the Russian Federation of the Siberian Federal District: Recommendations. Novosibirsk.