Integration of digital technologies to improve the efficiency of small and medium-sized agricultural enterprises
Abstract
The purpose of the study was to assess the impact of the introduction of digital technologies on improving the efficiency of small and medium-sized agricultural enterprises in Kazakhstan. To achieve this goal, a set of methods was used, including statistical analysis, a comparative method, and content analysis of respondents' answers through questionnaires. The study results showed that the integration of digital solutions has significantly reduced management and production costs, reducing them by 12%. The introduction of digital technologies has helped to increase crop yields by 15% and improve the efficiency of agricultural production. In addition, digitalisation has reduced the time required to make managerial decisions by 20%, which has increased the efficiency of management processes. The use of ERP/CRM systems, agrotechnological platforms and business process automation positively correlated with increased profitability, with correlation coefficients of 0.45, 0.38 and 0.52, respectively, which is statistically significant (significance levels 0.01, 0.05, and 0.02). The ERP system (r = 0.62, p-value = 0.01) showed a particularly high correlation with energy efficiency, while automation (r = 0.55, p-value = 0.02) and agroanalysis (r = 0.47, p-value = 0.03) also made a significant contribution. Analysis of variance showed a statistically significant difference in profitability between enterprises that implement digital technologies (F-statistics 5.62, p-value 0.01) and those that do not use them (F-statistics 2.34, p-value 0.05). This confirmed the importance of digital transformation for improving business financial results. Thus, digital technologies significantly increase the efficiency and competitiveness of agricultural enterprises, which is confirmed by both quantitative and qualitative findings
Keywords
competitiveness; costs; yield; management processes; agrotechnological platforms; automation
[1] Abiri, R., Rizan, N., Balasundram, S.K., Shahbazi, A.B., & Abdul-Hamid, H. (2023). Application of digital technologies for ensuring agricultural productivity. Heliyon, 9(12), article number e22601. doi: 10.1016/j. heliyon.2023.e22601.
[2] Amarasiri, M., Sano, D., & Suzuki, S. (2019). Understanding human health risks caused by antibiotic resistant bacteria (ARB) and antibiotic resistance genes (ARG) in water environments: Current knowledge and questions to be answered. Critical Reviews in Environmental Science and Technology, 50(19), 2016-2059. doi: 10.1080/10643389.2019.1692611.
[3] American Sociological Association’s Code of Ethic. (1997). Retrieved from https://www.asanet.org/about/ ethics/.
[4] Ammann, J., Umstaetter, C., & El Benni, N. (2022). The adoption of precision agriculture enabling technologies in Swiss outdoor vegetable production: A Delphi study. Precision Agriculture, 23, 1354-1374. doi: 10.1007/ s11119-022-09889-0.
[5] Askaraliev, B., Musabaeva, K., Koshmatov, B., Omurzakov, K., & Dzhakshylykova, Zh. (2024). Development of modern irrigation systems for improving efficiency, reducing water consumption and increasing yields. Machinery & Energetics, 15(3), 47-59. doi: 10.31548/machinery/3.2024.47.
[6] Bibi, F., & Rahman, A. (2023). An overview of climate change impacts on agriculture and their mitigation strategies. Agriculture, 13(8), article number 1508. doi: 10.3390/agriculture13081508.
[7] Bocean, C.G. (2024). A cross-sectional analysis of the relationship between digital technology use and agricultural productivity in EU countries. Agriculture, 14(4), article number 519. doi: 10.3390/agriculture14040519.
[8] Burliai, A., Burliai, O., Revutskaa., Smolii, L., & Klymenko, L. (2021). Organizational and economic risks of ecologization of agriculture. Agricultural and Resource Economics: International Scientific E-Journal, 7(1), 96-114. mdoi: 10.51599/are.2021.07.01.06.
[9] Carolan, M. (2019). Automated agrifood futures: Robotics, labor and the distributive politics of digital agriculture. Journal of Peasant Studies, 47(1), 184-207. doi: 10.1080/03066150.2019.1584189.
[10] Chandra, R., & Collis, S. (2021). Digital agriculture for small-scale producers. Communications of the ACM, 64(12), 75-84. doi: 10.1145/3454008.
[11] Charatsari, C., Michailidis, A., Francescone, M., De Rosa, M., Aidonis, D., Bartoli, L., La Rocca, G., Camanzi, L., & Lioutas, E.D. (2024). Do agricultural knowledge and innovation systems have the dynamic capabilities to guide the digital transition of short food supply chains? Information, 15(1), article number 22. doi: 10.3390/ info15010022.
[12] Finger, R. (2023). Digital innovations for sustainable and resilient agricultural systems. European Review of Agricultural Economics, 50(4), 1277-1309. doi: 10.1093/erae/jbad021.
[13] Gröbli, R., & del Pilar, M. (2022). Digital agriculture, invisible land: Global mergers and smallholders in Latin America. Alternautas, 9(2), 222-244. doi: 10.31273/an.v9i2.1177.
[14] Gulaliyev, M., Abasova, S., Guliyeva, S., Samedova, E., & Orucova, M. (2023). The main problems of building the digital economy of Azerbaijan. WSEAS Transactions on Business and Economics, 20, 1383-1395. doi: 10.37394/23207.2023.20.123.
[15] Hojnik, B.B., & Huđek, I. (2023). Small and medium-sized enterprises in the digital age: Understanding characteristics and essential demands. Information, 14(11), article number 606. doi: 10.3390/info14110606.
[16] Katsikouli, P., Wilde, A.S., Dragoni, N., & Høgh-Jensen, H. (2020). On the benefits and challenges of blockchains for managing food supply chains. Journal of the Science of Food and Agriculture, 101(6), 2175-2181. doi: 10.1002/ jsfa.10883.
[17] Klerkx, L., Jakku, E., & Labarthe, P. (2019). A review of social science on digital agriculture, smart farming and agriculture 4.0: New contributions and a future research agenda. NJAS – Wageningen Journal of Life Sciences, 90-91(1), article number 100315. doi: 10.1016/j.njas.2019.100315.
[18] Kovalyshyn, V., Holovko, A., Yaremak, Z., & Dudiuk, V. (2023). Impact of forestry on ecosystems and the economy: Regional case studies. Ukrainian Journal of Forest and Wood Science, 14(4), 26-39. doi: 10.31548/ forest/4.2023.26.
[19] Kyfyak, V., Vinnychuk, O., Sybyrka, L., & Vodianka, L. (2021). Measuring entrepreneurship determinants: Empirical analysis. Agricultural and Resource Economics, 7(2), 40-58. doi: 10.51599/are.2021.07.02.03.
[20] Lopatynskyi, Y., Shpykuliak, O., Kyfyak, V., Shelenko, D., & Diuk, A. (2023). Socio-economic role and institutional capacity of family farms in the implementation of the sustainable development goals. Ekonomika APK, 30(3), 18-28. doi: 10.32317/2221-1055.202303018.
[21] Madushanki, R.A.A., Halgamuge, M.N., Wirasagoda, H.A.H.S., & Syed, A. (2019). Adoption of the Internet of Things (IoT) in agriculture and smart farming towards urban greening: A review. International Journal of Advanced Computer Science and Applications, 10(4), 10-28. doi: 10.14569/ijacsa.2019.0100402.
[22] Martín, D., & de la Fuente, R. (2022). Global and local agendas: The Milan urban food policy pact and innovative sustainable food policies in Euro-Latin American cities. Land, 11(2), article number 202. doi: 10.3390/ land11020202.
[23] Méndez-Zambrano, P.V., Pérez, L.P.T., Valdez, R.E.U., & Orozco, Á.P.F. (2023). Technological innovations for agricultural production from an environmental perspective: A review. Sustainability, 15(22), article number 16100. doi: 10.3390/su152216100.
[24] Ndhlovu, E., & Dube, K. (2023). Challenges of radical technological transition in the restaurant industry within developing countries. African Journal of Hospitality, Tourism and Leisure, 12(1), 156-170. doi: 10.46222/ ajhtl.19770720.36.
[25] Nugraha, A.T., Prayitno, G., Azizi, F.A., Sari, N., Hidayana, I.I., Auliah, A., & Siankwilimba, E. (2023). Structural Equation Model (SEM) of social capital with landowner intention. Economies, 11(4), article number 127. doi: 10.3390/economies11040127.
[26] Potryvaieva, N., Dubinina, M., Cheban, Yu., Syrtseva, S., & Luhova, O. (2024). Digitalization of control and accounting processes of agricultural enterprises: Risk assessment and management. Ekonomika APK, 31(5), 45-58. doi: 10.32317/ekon.apk/5.2024.45.
[27] Rehman, T.U., Mahmud, M.S., Chang, Y.K., Jin, J., & Shin, J. (2018). Current and future applications of statistical machine learning algorithms for agricultural machine vision systems. Computers and Electronics in Agriculture, 156, 585-605. doi: 10.1016/j.compag.2018.12.006.
[28] Rolandi, S., Brunori, G., Bacco, M., & Scotti, I. (2021). The digitalization of agriculture and rural areas: Towards a taxonomy of the impacts. Sustainability, 13(9), article number 5172. doi: 10.3390/su13095172.
[29] Rose, D.C., Wheeler, R., Winter, M., Lobley, M., & Chivers, C. (2020). Agriculture 4.0: Making it work for people, production, and the planet. Land Use Policy, 100, article number 104933. doi: 10.1016/j.landusepol.2020.104933.
[30] Saiz-Rubio, V., & Rovira-Más, F. (2020). From smart farming towards agriculture 5.0: A review on crop data management. Agronomy, 10(2), article number 207. doi: 10.3390/agronomy10020207.
[31] Saruchera, F., & Mpunzi, S. (2023). Digital capital and food agricultural SMEs: Examining the effects on SME performance, inequalities and government role. Cogent Business & Management, 10(1), article number 219304. doi: 10.1080/23311975.2023.2191304.
[32] Tandon, A., Gupta, A., Goel, P., & Singh, V.K. (2020). Impact of digitisation on entrepreneurial ecosystems: An Indian perspective. International Journal of Business and Globalisation, 25(2), article number 154. doi: 10.1504/ ijbg.2020.107887.
[33] Trenkle, J. (2020). Digital transformation in small and medium-sized enterprises: Strategy, management control, and network involvement. Baden-Baden: Nomos. doi: 10.5771/9783748922131.
[34] Upadhyaya, A., Jeet, P., Sundaram, P.K., Singh, A.K., Saurabh, K., & Deo, M. (2021). Efficacy of drone technology in agriculture: A review. Journal of Agrisearch, 9(3), 189-195. doi: 10.21921/jas.v9i03.11000.
[35] Zadorozhniuk, R. (2023). UAV data collection parameters impact on accuracy of Scots pine stand mensuration. Ukrainian Journal of Forest and Wood Science, 14(1), 39-54. doi: 10.31548/forest/1.2023.39.
[36] Zhang, X., & Fan, D. (2024). Can agricultural digital transformation help farmers increase income? An empirical study based on thousands of farmers in Hubei Province. Environment Development and Sustainability, 26, 1440514431 doi: 10.1007/s10668-023-03200-5.