KnE Life Sciences

ISSN: 2413-0877

The latest conference proceedings on life sciences, medicine and pharmacology.

Selection of Adaptive Agricultural Technologies in Digital Agriculture

Published date: Nov 25 2019

Journal Title: KnE Life Sciences

Issue title: International Scientific and Practical Conference “AgroSMART – Smart Solutions for Agriculture”

Pages: 51--61

DOI: 10.18502/kls.v4i14.5580

Authors:
Abstract:

As follows from the analysis of the collected experimental material of long-term field trials of the Kursk Federal Agricultural Research Centre and generalization of the activities results of leading domestic research and educational institutions, as well as the practical results of many agricultural enterprises of the eastern part of Europe, we have identified the most effective conditions for the use of basic agricultural methods in wheat cultivation technologies as well as spring and winter barley, seed peas, buckwheat, grain maize, oats, millet and winter rye cultivation technologies of different levels of intensity which contribute to the rational use of available resources of agricultural producers based on the prevailing soil and climatic conditions. The technologies made it possible to prepare scientific-methodological approaches and a mathematical model to solve the problems of selecting an adaptive technology of crops cultivation. A normative-reference database for different types of crops cultivation technologies has also been made, including a list of zoned recognized varieties and hybrids of crops under study, necessary technology methods taking into account conditions of their effective use. Currently, an algorithm and the corresponding software are being developed to choose the most expedient technology of crop cultivation for specific soil and climatic conditions depending on a set of defining factors. There has been created software (in the form of a complex of programs for stationary computers and mobile electronic devices with the Android operating system. A specialized website has been developed. It provides a scientifically well-grounded selection of crops varieties and hybrids for the eastern part of Europa on the basis of user-specified conditions.

References:

[1] Cherkasov, G.N. (2018). Adaptive landscape specific agriculture: theory and practice. Kursk, All-Russian Research Institute of Agriculture and Soil Protection from Erosion.

[2] Pykhtin, I.G., Nitchenko, N.B., Plotnikov V.A. et al. (2016). Theoretical bases of effective application of modern resource-saving technologies of crops cultivation. Zemledelie (Agriculture), vol. 6, pp. 16–19.

[3] Yakushev, V.V., Yakushev, V.P. (2018). Prospects of “smart agriculture” in Russia. Bulletin of the Russian Academy of Sciences, vol. 88, no. 9, pp. 773–784.

[4] Stepnykh, N.V., Zargaryan, A.M., Zhukova, O.A. (2017). Computer programme to design technologies for growing crops. Agrarian Bulletin of Ural, vol. 3(157), pp. 54–58.

[5] Kalichkin, V.K., Zadkov, A.P. (2019). Selection and adaptation of agricultural technologies. Siberian Bulletin of Agricultural Science, vol. 49, no 1, pp. 68–79.

[6] Isakova, S.P., Lapchenko, E.A. (2016). Web-complex based on the mathematical model of forming the optimal machine and tractor fleet. Siberian Bulletin of Agricultural Science, vol. 5(252), pp. 76–82.

[7] Anderson, R., Keshwani, D., Guru A. et al. (2018). An integrated modeling framework for crop and biofuel systems using the DSSAT and GREET models. Environmental modeling & Software, vol. 108, pp. 40–50.

[8] Lopez-Requelme, J., Pavon-Pulido, N., Navarro-Hellin, H. (2017). A software architecture based on FIWARE cloud for precision agriculture. Agricultural water management, vol. 183, pp. 123–135.

[9] Whelan, B., Taylor, J. (2013). Software for precision agriculture. Precision agriculture for grain production systems, pp. 71–81.

[10] Gostev, A.V., Pykhtin, A.I. (2018). Normative-reference database structure for agricultural manufacturers support system and rational choice of cost-effective adaptive technologies for grain crops cultivation, in International Multidisciplinary Scientific GeoConference Surveying Geology and Mining Ecology Management, SGEM, vol. 18(3.2). Albena, Bulgaria, pp. 329–334.

[11] (2016). State register of selection inventions approved for use, vol. 1 “Plant varieties”. Moscow: FGBNU “Rosinformagrotekh”.

[12] Yakushev, V.V. (2010). Intelligent control systems for resource-saving precision agriculture technologies. Environmental systems and devices, vol. 7, pp. 26–33.

[13] Ovchinnikova, A.S. (2012). Register of production technologies of grain, leguminous, cereal and oilseeds crops in the Volgograd Region. Volgograd: FGBOU VPO Volgogradskij GAU.

[14] Zinchenko, S.I. (2016). Register of crops cultivation technologies for the conditions of the Vladimir region. Suzdal: FGBNU “Vladimirskij NIISKH”.

[15] Pykhtin, I.G., Gostev, A.V., Pykhtin, A.I. (2017). Software decision support in the cultivation of crops. Journal of Engineering and Applied Sciences, vol. 12(20), pp. 5338–5342.

Download
HTML
Cite
Share
statistics

1347 Abstract Views

266 PDF Downloads