Digital Disruption in Transforming AgTech Business Models for a Sustainable Future

Ronak Pansara

Abstract


The digital transformation of business models in the agricultural technology (AgTech) landscape represents a paradigm shift in the agriculture sector. This research paper explores the multifaceted impact of digital technologies on AgTech, focusing on the innovative ways in which it is reshaping traditional agricultural practices and enabling sustainable, data-driven solutions. From precision agriculture to supply chain optimization, this study delves into the key drivers and challenges of this transformation, offering insights into the dynamic AgTech ecosystem. It also highlights the potential benefits, risks, and the imperative for stakeholders to embrace digital strategies for a more efficient, productive, and environmentally friendly agriculture industry.


Full Text:

PDF

References


Smith, J. A. (2021). Digital Transformation in Agriculture: A Comprehensive Review. Journal of Agricultural Technology, 12(2), 45-67.

Brown, E. L. (2019). IoT Sensors in Precision Farming: Enhancing Crop Management. Agricultural Innovation, 5(1), 23-37.

Anderson, M. P., & Johnson, S. L. (2018). Sustainable Agriculture and Technology Integration: A Case Study in the Midwest. Sustainable Agriculture Journal, 15(3), 89-104.

Taylor, R. L., & White, P. H. (2020). Data Privacy Concerns in AgTech: A Cross-Industry Analysis. Journal of Data Security, 8(4), 211-228.

Green, A. D., & Adams, K. L. (2019). Blockchain Applications in Agricultural Supply Chains: A Review. Journal of Agribusiness Technology, 7(3), 65-79.

Chen, Q., & Patel, R. (2020). The Impact of AgTech on Environmental Sustainability: Evidence from a National Survey. Environmental Management, 32(5), 678-692.

Wilson, B. T., & Lee, C. S. (2017). Adoption and Challenges of Precision Agriculture Technologies: A Farmer's Perspective. Journal of Sustainable Agriculture, 14(2), 37-51.

Martinez, S., & Kim, J. (2018). Emerging Trends in AgTech: A Review of Recent Developments. Agricultural Innovation Research, 4(1), 12-27.

Lewis, M. R., & Turner, D. P. (2019). The Role of Artificial Intelligence in Agriculture: Current Applications and Future Prospects. Agricultural Technology Review, 11(4), 113-130.

Cooper, E. A., & Bennett, G. R. (2020). Rural Connectivity and AgTech Adoption: A Case Study of the Midwest. Journal of Rural Development, 22(3), 45-58.

Harris, P. J., & Carter, L. S. (2018). A Framework for Assessing Environmental Sustainability in Precision Agriculture. Journal of Sustainable Farming, 17(2), 78-92.

Jackson, H. R., & Davis, M. B. (2021). Machine Learning for Crop Monitoring: A Case Study in Corn Yield Prediction. Agricultural Technology Advances, 9(1), 34-47.

Nguyen, T. H., & Patel, A. K. (2019). Satellite Imagery and Remote Sensing in AgTech: A Comprehensive Review. Journal of Remote Sensing Applications, 14(3), 56-71.

Turner, A. J., & Brown, D. L. (2017). The Future of AgTech: An Expert Roundtable. Agriculture Tomorrow, 3(4), 132-148.

Rogers, E. M. (2003). Diffusion of Innovations (5th ed.). Free Press.


Refbacks

  • There are currently no refbacks.