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Automated selection of agro-technologies and tractor fleet of an agricultural enterprise: software package

https://doi.org/10.26898/0370-8799-2025-4-7

Abstract

Aspects of increasing the productivity and competitiveness of an agricultural enterprise in the field of crop production through information support of production processes using modern digital information technologies are investigated. The purpose of this work is to develop software designed to optimize the management of crop production processes by selecting appropriate agricultural technologies and the effective use of available technical means, taking into account the agroclimatic conditions and production characteristics of a specific farm. The object of the study was the process of selecting technologies and technical means for cultivating grain crops. The research took into account current agricultural technologies used in the Novosibirsk region. The main stages of crop production planning were highlighted, the feasibility of creating web-oriented software was justified, a structural diagram of the software complex for automating the selection of agricultural technologies and technical means was developed. As a result, a web-oriented software package has been implemented consisting of several software components that are combined by a common database and interface, which allows for ease of use and efficiency. This software package automates the process of forming an annual work plan and calculating economic indicators, which greatly simplifies the planning of crop production at all stages. The software package is aimed at application in decision support systems using digital technologies, which opens up new opportunities for increasing productivity and optimizing processes in the field of crop production. The main advantages of the development are improved quality of planning, reduced time spent on data processing and the ability to implement an individual approach to selection technologies depending on the specifics of the production process. 

About the Authors

V. V. Alt
Siberian Federal Scientific Centre of Agro-BioTechnologies of the Russian Academy of Sciences
Russian Federation

Victor V. Alt, Head of the Siberian PhysicoTechnical Institute of Agrarian Problems SFSCA RAS, Academician RAS, Doctor of Science in Engineering



S. P. Isakova
Siberian Federal Scientific Centre of Agro-BioTechnologies of the Russian Academy of Sciences
Russian Federation

Svetlana P. Isakova, Senior Researcher

PO Box 463, Krasnoobsk, Novosibirsk Region, 630501



O. V. Yolkin
Siberian Federal Scientific Centre of Agro-BioTechnologies of the Russian Academy of Sciences
Russian Federation

Oleg V. Yolkin, Lead Researcher, Candidate of Science in Engineering



O. F. Savchenko
Siberian Federal Scientific Centre of Agro-BioTechnologies of the Russian Academy of Sciences
Russian Federation

Oleg F. Savchenko, Lead Researcher, Candidate of Science in Engineering



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Review

For citations:


Alt V.V., Isakova S.P., Yolkin O.V., Savchenko O.F. Automated selection of agro-technologies and tractor fleet of an agricultural enterprise: software package. Siberian Herald of Agricultural Science. 2025;55(4):65-74. (In Russ.) https://doi.org/10.26898/0370-8799-2025-4-7

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ISSN 0370-8799 (Print)
ISSN 2658-462X (Online)