Skip to main navigation menu Skip to main content Skip to site footer

Regular Articles

Early View

Uncovering the Determinants of the Transition to Digital Agriculture: A Survey-Based Tobit Analysis

DOI
https://doi.org/10.3280/ecag2026oa20705
Submitted
luglio 22, 2025
Published
2026-03-12

Abstract

This study examines the state of digital agriculture in the Republic of Armenia, a sector characterized by small farm sizes, extensive production models, and limited financial capacity. Using a stratified sample of 400 farms, the research assesses the extent of digital technology adoption, key obstacles, and the determinants of digital penetration. Descriptive findings reveal low adoption rates across most digital tools, driven by high costs, limited awareness, insufficient digital literacy, and skepticism toward digital practices. To provide a more rigorous empirical assessment, a Tobit regression model was applied. The results show that all included variables significantly influence digital adoption, with farm size exerting the strongest positive effect, underscoring the importance of economies of scale. Education, income, production orientation, production model, and age also significantly shape adoption likelihood. The combined descriptive and econometric evidence indicates that the discussed digital gap is largely rooted in structural limitations, particularly the prevalence of very small farms. The study concludes by recommending targeted policies (land consolidation, financial assistance, and farmer training) to support a more modern, efficient, and digitally integrated agricultural sector.

References

  1. Aker, J. C., & Mbiti, I. M. (2010). Mobile phones and economic development in Africa. Journal of Economic Perspectives, 24(3), 207-232.
  2. Albrecht, J. et al. (2020). Financing digital agriculture: Opportunities and challenges. Agricultural Finance Review, 80(3), 293-309.
  3. Arion, F. H., Harutyunyan, G., Aleksanyan, V., Muradyan, M., Asatryan, H., & Manucharyan, M. (2024). Determining digitalization issues (ICT adoption, digital literacy, and the digital divide) in rural areas using sample surveys: The case of Armenia. Agriculture, 14, 249. Doi: 10.3390/agriculture14020249.
  4. Asatryan, H., Aleksanyan, V., & Manucharyan, M. (2024). Analyzing commercial grape farm efficiency in the Armavir region (Armenia) using a two-stage empirical approach. Statistical Journal of the IAOS, 40(1), 149-160. Doi: 10.3233/SJI-230064.
  5. Asatryan, H., Aleksanyan, V., Azatyan, L., & Manucharyan, M. (2022). Dynamics of the development of viticulture in the Republic of Armenia: An econometric case study. Statistical Journal of the IAOS, 38(4), 1461-1471. Doi: 10.3233/SJI-220948.
  6. Asatryan, H., Azatyan, L., Nalbandyan, H., Poghosyan, M., Adonts, N., & Poghosyan, S. (2025). The impact of migration on food security in Armenia. BIO Web of Conferences, 194, 01003. Doi: 10.1051/bioconf/202519401003.
  7. Binoy, J., Ramappa, K., Yashashwini, M., Moon, Y., Payne, A., Frow, P., Kulikov, I., Semin, A., Skvortsov, E., Ziablitckaia, N., Skvortsova, E., Milovic, B., Mehta, R., Avramenko, O., & Kohlhaas, M. (2023). ERP & CRM systems in farmer producer organizations. International Research Journal of Modernization in Engineering Technology and Science. Doi: 10.56726/irjmets46285.
  8. Bock, B. (2019). Determinants of precision agriculture adoption in arable farming. Field Crops Research, 240, 10-18.
  9. Cheng, C. et al. (2024). How digital skills affect farmers’ agricultural entrepreneurship: Evidence from factor availability. Journal of Innovation & Knowledge, 9(2), 100477. Doi: 10.1016/j.jik.2024.100477.
  10. Choruma, D. J. et al. (2024). Digitalisation in agriculture: A scoping review of technologies, challenges, and opportunities for smallholder farmers in sub-Saharan Africa. Journal of Agriculture and Food Research, 18, 101286. Doi: 10.1016/j.jafr.2024.101286.
  11. Dandois, J. P., & Ellis, E. C. (2010). Remote sensing for large-area vegetation monitoring: A comparison of UAV and satellite imagery. Journal of Remote Sensing, 2(3), 543-554.
  12. Deichmann, U. et al. (2020). Risk perception and the adoption of climate-smart agriculture in Uganda. Environmental Science & Policy, 114, 272-281.
  13. FAO (2021). Digital agriculture: A global framework for action. Food and Agriculture Organization of the United Nations.
  14. Fountas, S. et al. (2020). The economic impact of precision agriculture technologies. Agricultural Systems, 182, 102867.
  15. Gebbers, R., & Adamchuk, V. I. (2010). Precision agriculture and food security. Science, 327(5967), 828-831. Doi: 10.1126/science.1183899.
  16. Geng, W., Liu, L., Zhao, J., Kang, X., & Wang, W. (2024). Digital technologies adoption and economic benefits in agriculture: A mixed-methods approach. Sustainability, 16, 4431. Doi: 10.3390/su16114431.
  17. Granado-Díaz, R. et al. (2024). Farmers’ attitudes toward digital technologies under agri-environmental policies. Agricultural Systems, 221, 104129. Doi: 10.1016/j.agsy.2024.104129.
  18. Habeeb, M., Baamar, O. A., Arshad, M., & Hashmi, M. J. (2025). Smart inventory and sales management system for perishable farm products using a web-based ERP framework. International Journal of Information Technology and Computer Engineering, 13(2s), 131-138. Doi: 10.62647/ijitce2025v13i2spp131-138.
  19. Harutyunyan, G., Manucharyan, M., Muradyan, M., & Asatryan, H. (2024). Digital literacy of Armenian society: Assessment and determinants. Cogent Social Sciences, 10(1). Doi: 10.1080/23311886.2024.2398652.
  20. Hrustek, L. (2020). Sustainability driven by agriculture through digital transformation. Sustainability, 12, 8596. Doi: 10.3390/su12208596.
  21. Jansson, C., Jansson, A., & Knutsson, R. (2019). The role of precision agriculture in increasing productivity. Agricultural Systems, 175, 85-95. Doi: 10.1016/j.agsy.2019.05.009.
  22. Kamble, S. S., Gunasekaran, A., & Sharma, R. (2019). Industry 4.0 implementation in agriculture: Challenges and opportunities. Technological Forecasting and Social Change, 145, 138-145.
  23. Khachatryan, L., Asatryan, H., Poghosyan, S., Azatyan, L., Kocharyan, T., Matinyan, A., & Manucharyan, M. (2025). Agriculture specialization through the lens of PESTLE analysis. Open Agriculture, 10(1), 20250451. Doi: 10.1515/opag-2025-0451.
  24. Khosrow-Pour, M. (2019). IoT in agriculture: An overview. Journal of Digital Agriculture, 1(1), 25-30.
  25. Klerkx, L. et al. (2019). Social capital and the adoption of precision agriculture. Agricultural Systems, 174, 125-134.
  26. Klerkx, L., & Rose, D. (2020). Empowering farmers through digitalization. Technological Forecasting and Social Change, 161, 120226.
  27. Kumar, A., & Singh, R. (2020). Impact of mobile applications on agricultural productivity in India. Journal of Agriculture and Food Research, 2, 100110.
  28. Li, H., & Zhao, Y. (2021). Artificial intelligence applications in Chinese agriculture. Agricultural Systems, 192, 103196.
  29. Lobo, M. et al. (2020). Extension services and precision agriculture adoption. Agricultural Systems, 182, 102850.
  30. Manucharyan, M. (2021). Food security issues in the economic security system of Armenia. BIO Web of Conferences, 36, 08004. Doi: 10.1051/bioconf/20213608004.
  31. Manucharyan, M. (2025). Climate change impacts on sustainable agriculture: Evidence from Armenia. Unconventional Resources, 6, 100159. Doi: 10.1016/j.uncres.2025.100159.
  32. McBride, W. D., & Key, N. (2018). Farm size and adoption of precision agriculture. Agricultural and Resource Economics Review, 47(2), 232-248.
  33. Pino, G. et al. (2020). Data governance in agriculture. Agricultural Systems, 182, 102850.
  34. Reddy, K. H. et al. (2021). Digital agriculture in developing countries. Computers and Electronics in Agriculture, 183, 106071.
  35. Sadjadi, E. N., & Fernández, R. (2023). Challenges and opportunities of agriculture digitalization in Spain. Agronomy, 13, 259. Doi: 10.3390/agronomy13010259.
  36. Schmidt, J., Schneider, U. A., & Drießler, E. (2018). Precision agriculture and resource management. Computers and Electronics in Agriculture, 150, 22-32.
  37. Silva, J. A., & Costa, A. (2022). Drone technology in Brazilian agriculture. Precision Agriculture, 23(3), 631-645.
  38. van der Wal, T. et al. (2021). Smart farming: The future of agriculture. International Journal of Agricultural Management, 10(1), 1-12.
  39. Ward, J., & Sweeney, E. (2021). Crop type and precision agriculture adoption. Agricultural Systems, 186, 102991.
  40. Wolf, S. A., & Dyer, J. (2018). Adoption of precision agriculture technologies by U.S. farmers. Computers and Electronics in Agriculture, 145, 110-118.
  41. Wolfert, J., Ge, L., Verdouw, C., & Bogaardt, M. J. (2017). Big data in smart farming: A review. Agricultural Systems, 153, 69-80. Doi: 10.1016/j.agsy.2017.01.023.
  42. Zhang, X., Wang, X., & Wu, J. (2017). Big data analytics in agriculture. Computers and Electronics in Agriculture, 143, 74-84.
  43. Zhang, Y., Wang, L., & Yang, C. (2019). Data-driven precision agriculture: A review. Agricultural Systems, 174, 1-10. Doi: 10.1016/j.agsy.2019.03.002.