TY - JOUR
T1 - AI can empower agriculture for global food security
T2 - challenges and prospects in developing nations
AU - Ahmad, Ali
AU - Liew, Anderson Xun-Wang
AU - Venturini, Francesca
AU - Kalogeras, Athanasios
AU - Candiani, Alessandro
AU - Di Benedetto, Giacomo
AU - Ajibola, Segun
AU - Cartujo, Pedro
AU - Romero, Pablo
AU - Lykoudi, Aspasia
AU - Grandis, Michelangelo Mastrorocco de
AU - Xouris, Christos
AU - Lo Bianco, Riccardo
AU - Doddy, Irawan
AU - Elegbede, Isa
AU - Labate, Giuseppe Falvo D'Urso
AU - García del Moral, Luis Fernando
AU - Martos, Vanessa
N1 - Ahmad, A., Liew, A. X. W., Venturini, F., Kalogeras, A., Candiani, A., Di Benedetto, G., Ajibola, S., Cartujo, P., Romero, P., Lykoudi, A., Grandis, M. M. D., Xouris, C., Lo Bianco, R., Doddy, I., Elegbede, I., Labate, G. F. DU., García del Moral, L. F., & Martos, V. (2024). AI can empower agriculture for global food security: challenges and prospects in developing nations. Frontiers in Artificial Intelligence, 7, 1-18. Article 1328530. https://doi.org/10.3389/frai.2024.1328530 --- The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. The present work has been developed as part of the VIRTUOUS project, funded by the European Union’s Horizon 2020 research and innovation program under the Marie Sklodowska-Curie-RISE grant agreement no. 872181 (https://www.virtuoush2020.com/) and as a part of the SUSTAINABLE project, funded by the European Union’s Horizon 2020 research and innovation program under the Marie Sklodowska-Curie-RISE grant agreement no. 101007702 (https://www.projectsustainable.eu) and Project of excellence of the Junta de Andalucía-FEDER. ref. P18-H0-4700.
PY - 2024/4/25
Y1 - 2024/4/25
N2 - Food and nutrition are a steadfast essential to all living organisms. With specific reference to humans, the sufficient and efficient supply of food is a challenge as the world population continues to grow. Artificial Intelligence (AI) could be identified as a plausible technology in this 5th industrial revolution in bringing us closer to achieving zero hunger by 2030—Goal 2 of the United Nations Sustainable Development Goals (UNSDG). This goal cannot be achieved unless the digital divide among developed and underdeveloped countries is addressed. Nevertheless, developing and underdeveloped regions fall behind in economic resources; however, they harbor untapped potential to effectively address the impending demands posed by the soaring world population. Therefore, this study explores the in-depth potential of AI in the agriculture sector for developing and under-developed countries. Similarly, it aims to emphasize the proven efficiency and spin-off applications of AI in the advancement of agriculture. Currently, AI is being utilized in various spheres of agriculture, including but not limited to crop surveillance, irrigation management, disease identification, fertilization practices, task automation, image manipulation, data processing, yield forecasting, supply chain optimization, implementation of decision support system (DSS), weed control, and the enhancement of resource utilization. Whereas AI supports food safety and security by ensuring higher crop yields that are acquired by harnessing the potential of multi-temporal remote sensing (RS) techniques to accurately discern diverse crop phenotypes, monitor land cover dynamics, assess variations in soil organic matter, predict soil moisture levels, conduct plant biomass modeling, and enable comprehensive crop monitoring. The present study identifies various challenges, including financial, infrastructure, experts, data availability, customization, regulatory framework, cultural norms and attitudes, access to market, and interdisciplinary collaboration, in the adoption of AI for developing nations with their subsequent remedies. The identification of challenges and opportunities in the implementation of AI could ignite further research and actions in these regions; thereby supporting sustainable development.
AB - Food and nutrition are a steadfast essential to all living organisms. With specific reference to humans, the sufficient and efficient supply of food is a challenge as the world population continues to grow. Artificial Intelligence (AI) could be identified as a plausible technology in this 5th industrial revolution in bringing us closer to achieving zero hunger by 2030—Goal 2 of the United Nations Sustainable Development Goals (UNSDG). This goal cannot be achieved unless the digital divide among developed and underdeveloped countries is addressed. Nevertheless, developing and underdeveloped regions fall behind in economic resources; however, they harbor untapped potential to effectively address the impending demands posed by the soaring world population. Therefore, this study explores the in-depth potential of AI in the agriculture sector for developing and under-developed countries. Similarly, it aims to emphasize the proven efficiency and spin-off applications of AI in the advancement of agriculture. Currently, AI is being utilized in various spheres of agriculture, including but not limited to crop surveillance, irrigation management, disease identification, fertilization practices, task automation, image manipulation, data processing, yield forecasting, supply chain optimization, implementation of decision support system (DSS), weed control, and the enhancement of resource utilization. Whereas AI supports food safety and security by ensuring higher crop yields that are acquired by harnessing the potential of multi-temporal remote sensing (RS) techniques to accurately discern diverse crop phenotypes, monitor land cover dynamics, assess variations in soil organic matter, predict soil moisture levels, conduct plant biomass modeling, and enable comprehensive crop monitoring. The present study identifies various challenges, including financial, infrastructure, experts, data availability, customization, regulatory framework, cultural norms and attitudes, access to market, and interdisciplinary collaboration, in the adoption of AI for developing nations with their subsequent remedies. The identification of challenges and opportunities in the implementation of AI could ignite further research and actions in these regions; thereby supporting sustainable development.
KW - edge intelligence
KW - agribusiness
KW - Agriculture 5.0
KW - Sustainability
KW - food security
UR - http://www.scopus.com/inward/record.url?scp=85192520665&partnerID=8YFLogxK
UR - https://www.webofscience.com/wos/woscc/full-record/WOS:001216347400001
U2 - 10.3389/frai.2024.1328530
DO - 10.3389/frai.2024.1328530
M3 - Review article
SN - 2624-8212
VL - 7
SP - 1
EP - 18
JO - Frontiers in Artificial Intelligence
JF - Frontiers in Artificial Intelligence
M1 - 1328530
ER -