Unleashing the Power of Generative AI in Agriculture 4.0 for Smart and Sustainable Farming

Rose DC, Chilvers J. Agriculture 4.0: broadening responsible innovation in an era of smart farming. Frontiers in Sustainable Food Systems. 2018;2:87.

Article  MATH  Google Scholar 

“A comprehensive survey on generative ai for metaverse: enabling immersive experience | cognitive computation,” 9 2024, [Online; Accessed 15 Jan 2025]. [Online]. Available: https://link.springer.com/article/10.1007/s12559-024-10342-9.

“Generative AI in agriculture market size, growth report 2032,” https://www.precedenceresearch.com/generative-ai-in-agriculture-market. Accessed 05 Oct 2023.

“Generative AI in agriculture market size, share and forecast 2032,” https://marketresearch.biz/report/generative-ai-in-agriculture-market/. Accessed on 10 May 2023.

“ChatGPT,” https://chat.openai.com/. Accessed 23 Aug 2023.

Gaddikeri V, Jatav MS, Rajput J. Revolutionizing agriculture: unlocking the potential of ChatGPT in agriculture.

Dall·e 2. https://openai.com/dall-e-2. Accessed 23 Aug 2023.

Midjourney. https://www.midjourney.com/home/?callbackUrl=%2Fapp%2F, (Accessed on 08/23/2023).

Gong J, Yu Q, Li T, Liu H, Zhang J, Fan H, Jin D, Li Y. Scalable digital twin system for mobile networks with generative AI. In: Proceedings of the 21st Annual International Conference on Mobile Systems, Applications and Services; 2023. p. 610–611.

Temsah O, Khan SA, Chaiah Y, Senjab A, Alhasan K, Jamal A, Aljamaan F, Malki KH, Halwani R, Al-Tawfiq JA et al. Overview of early ChatGPT’s presence in medical literature: insights from a hybrid literature review by ChatGPT and human experts Cureus; 2023;15:4.

Chamola V, Sai S, Sai R, Hussain A, Sikdar B. Generative ai for consumer electronics: enhancing user experience with cognitive and semantic computing. IEEE Consum Electron Mag. 2024;1–9.

Lu S, Xiao X. Neuromorphic computing for smart agriculture. Agriculture. 2024;14(11):1977.

Article  MATH  Google Scholar 

The generative AI landscape: top startups, venture capital firms, and more. https://www.cbinsights.com/research/generative-ai-funding-top-startups-investors/#:~:text=2023%20is%20already%20a%20record,(%2410B%20corporate%20minority%20round), (Accessed on 08/28/2023).

Gozalo-Brizuela R, Garrido-Merchan EC. ChatGPT is not all you need. A state of the art review of large generative AI models. 2023. arXiv preprint arXiv:2301.04655.

Meskó B, Topol EJ. The imperative for regulatory oversight of large language models (or generative AI) in healthcare. npj Digit Med. 2023;6(1):120.

Gonog L, Zhou Y, A review: generative adversarial networks. In: 14th IEEE conference on industrial electronics and applications (ICIEA). IEEE. 2019;2019:505–10.

Aydin Ö. Google bard generated literature review: metaverse. J AI. 2023;7(1):1–14.

Article  MathSciNet  Google Scholar 

Sai S, Yashvardhan U, Chamola V, Sikdar B. Generative AI for cyber security: analyzing the potential of ChatGPT, DALL-E, and other models for enhancing the security space, IEEE Access; 2024;12: 53 497–53 516.

Sai S, Sai R, Chamola V. Generative ai for industry 5.0: Analyzing the impact of ChatGPT, DALLE, and other models. IEEE Open J Commun Soc. 2024:1–1.

Sai S, Gaur A, Sai R, Chamola V, Guizani M, Rodrigues JJPC. Generative AI for transformative healthcare: a comprehensive study of emerging models, applications, case studies, and limitations. IEEE Access; 2024;12:31 078–31 106.

George AS, George AH. A review of ChatGPT AI’s impact on several business sectors. Partners Universal International Innovation Journal. 2023;1(1):9–23.

MATH  Google Scholar 

Liu J, Chen K, Lyu W. Embracing artificial intelligence in the labour market: the case of statistics. Humanities and Social Sciences Communications. 2024;11(1):1–14.

Article  MATH  Google Scholar 

Li M, Wan Z, Zou T, Shen Z, Li M, Wang C, Xiao X. Artificial intelligence enabled self-powered wireless sensing for smart industry. Chem Eng J. 2024;492: 152417.

Article  MATH  Google Scholar 

Sai S, Mittal U, Chamola V. DMDAT: diffusion model-based data augmentation technique for vision-based accident detection in vehicular networks. IEEE Trans Veh Technol. 2024;1–10.

Farmer.Chat | an AI assistant for farmers by digitalgreen.org & gooey.ai. https://www.help.gooey.ai/farmerchat. Accessed 19 Aug 2023.

Jugalbandi - AI for every Indian. https://www.jugalbandi.ai/. Accessed on 08 Aug 2023.

Jiao W, Wang W, Huang J-t, Wang X, Tu Z. Is ChatGPT a good translator? A preliminary study. 2023. arXiv preprint arXiv:2301.08745.

“Dragon professional speech recognition, v16 | nuance. https://www.nuance.com/dragon/business-solutions/dragon-professional.html. Accessed on 10 Nov 2023.

Wadhwani AI - AI for social impact. https://www.wadhwaniai.org/. Accessed 10 Nov 2023.

Mittal U, Sai S, Chamola V, Sangwan D. A comprehensive review on generative AI for education, IEEE Access; 2024;12:142 733–142 759.

Zhang Q, Wang K, Zhou S. Application and practice of VR virtual education platform in improving the quality and ability of college students, IEEE Access; 2020;8:162 830–162 837.

Li M, Wu F, Wang F, Zou T, Li M, Xiao X. CNN-MLP-based configurable robotic arm for smart agriculture. Agriculture. 2024;14(9):1624.

Article  MATH  Google Scholar 

Chen X, Xie D, Zhang Z, Sharma RP, Chen Q, Liu Q, Fu L. Compatible biomass model with measurement error using airborne lidar data. Remote Sensing. 2023;15(14):3546.

Article  MATH  Google Scholar 

Xie D, Huang H, Feng L, Sharma RP, Chen Q, Liu Q, Fu L. Aboveground biomass prediction of arid shrub-dominated community based on airborne lidar through parametric and nonparametric methods. Remote Sensing. 2023;15(13):3344.

Article  Google Scholar 

Gao J, Shen T, Wang Z, Chen W, Yin K, Li D, Litany O, Gojcic Z, Fidler S. GET3D: a generative model of high quality 3D textured shapes learned from images. Adv In Neu I nform Process Syst. 2022:3531 841–31 854.

Sun G, Liao D, Zhao D, Xu Z, Yu H. Live migration for multiple correlated virtual machines in cloud-based data centers. IEEE Trans Serv Comput. 2015;11(2):279–91.

Article  MATH  Google Scholar 

Ueberschär F. AI for experience: designing with generative adversarial networks to evoke climate fascination. 2021.

Xu Y, Zhang Z, You L, Liu J, Fan Z, Zhou X. SCIGANS: single-cell RNA-seq imputation using generative adversarial networks. Nucleic Acids Res. 2020;48(15):e85–e85.

Article  Google Scholar 

Kerdegari H, Razaak M, Argyriou V, Remagnino P. Smart monitoring of crops using generative adversarial networks. In: Computer Analysis of Images and Patterns: 18th International Conference, CAIP. Salerno, Italy, September 3–5, 2019, Proceedings, Part I 18. Springer; 2019;2019:554–63.

Craiyon - your free AI image generator tool: create AI art!. https://www.craiyon.com/. Accessed 10 Oct 2023.

Dai Q, Cheng X, Qiao Y, Zhang Y . Crop leaf disease image super-resolution and identification with dual attention and topology fusion generative adversarial network. IEEE Access; , 2020;8:55 724–55 735.

Kissanai. https://kissan.ai/. Accessed on 08 July 2023.

Pradhan mantri fasal bima yojana - crop insurance | pmfby - crop insurance. https://pmfby.gov.in/. Accessed 08 July 2023.

Pradhan mantri krishi sinchai yojana - wikipedia. https://en.wikipedia.org/wiki/Pradhan_Mantri_Krishi_Sinchai_Yojana. Accessed 08 July 2023.

krushi A. https://www.amakrushi.in/en/. Accessed 17 Aug 2023.

Odisha launches ama krushiai bot for farmers | india news - times of india. https://timesofindia.indiatimes.com/india/odisha-launches-ama-krushiai-bot-for-farmers/articleshow/98048844.cms?from=mdr. Accessed 17 Aug 2023.

Sun C, Huang L, Qiu X. Utilizing bert for aspect-based sentiment analysis via constructing auxiliary sentence. 2019. arXiv preprint arXiv:1903.09588.

Yin L, Wang L, Cai Z, Lu S, Wang R, AlSanad A, AlQahtani SA, Chen X, Yin Z, Li X et al. Dpal-bert: A faster and lighter question answering model. CMES-Comput Model Eng Sci. 2024;141:1.

Home // strategic communications & public affairs // uci. https://communications.uci.edu/. Accessed on 17 Aug 2023.

Ai4bharat. https://ai4bharat.iitm.ac.in/. Accessed 08 Aug 2023.

Azure openai service – advanced language models | microsoft azure. https://azure.microsoft.com/en-us/products/ai-services/openai-service. Accessed 08 Aug 2023.

marginal farmers’ don’t get benefits out of govt schemes: Study- the new indian express. https://www.newindianexpress.com/nation/2023/apr/21/marginal-farmers-dont-get-benefits-out-of-govt-schemes-study-2568111.html. Accessed on 08 Aug 2023.

Biswas S. Importance of chat gpt in agriculture: According to chat gpt. Available at SSRN 4405391. 2023.

Jain M, Kumar P, Bhansali I, Liao QV, Truong K, Patel S. Farmchat: a conversational agent to answer farmer queries. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies. 2018;2(4):1–22.

Article  Google Scholar 

Akkem Y, Biswas SK, Varanasi A. A comprehensive review of synthetic data generation in smart farming by using variational autoencoder and generative adversarial network. Eng Appl Artif Intell. 2024;131: 107881.

Article  Google Scholar 

Rong Y, Xu Z, Liu J, Liu H, Ding J, Liu X, Luo W, Zhang C, Gao J. Du-bus: a realtime bus waiting time estimation system based on multi-source data. IEEE Trans Intell Trans Syst. 2022;23(12):24 524–24 539.

Shafik W. Barriers to implementing computational intelligence-based agriculture system. In: Computational Intelligence in Internet of Agricultural Things. Springer; 2024. p. 193–219.

Samrose S, Leveraging generative ai for sustainable farm management techniques correspond to optimization and agricultural efficiency prediction. 2024.

Chang SI, Prichard M, Guo X, Wang L. Overcoming ai model training barriers towards autonomous controlled environment agriculture systems. 2024.

Chimbga B. Exploring the ethical and societal concerns of generative ai in internet of things (iot) environments. In: Southern African Conference for Artificial Intelligence Research. Springer; 2023. p. 44–56.

Li C, He A, Liu G, Wen Y, Chronopoulos AT, Giannakos A, Rfl-apia: a comprehensive framework for mitigating poisoning attacks and promoting model aggregation in iiot federated learning. IEEE Trans Ind Inform. 2024.

Shukla RP, Taneja S. Ethical considerations and data privacy in artificial intelligence. In: Integrating Generative AI in Education to Achieve Sustainable Development Goals. IGI Global; 2024. p. 86–97.

Andreoni M, Lunardi WT, Lawton G, Thakkar S. Enhancing autonomous system security and resilience with generative ai: A comprehensive survey. IEEE Access; 2024.

Aderibigbe AO, Ohenhen PE, Nwaobia NK, Gidiagba JO, Ani EC. Artificial intelligence in developing countries: bridging the gap between potential and implementation. Computer Science & IT Research Journal. 2023;4(3):185–99.

Article  Google Scholar 

Rane N. Roles and challenges of chatgpt and similar generative artificial intelligence for achieving the sustainable development goals (sdgs). Available at SSRN 4603244, 2023.

Wang E, Yang Y, Wu J, Liu W, Wang X. An efficient prediction-based user recruitment for mobile crowdsensing. IEEE Trans Mob Comput. 2017;17(1):16–28.

Article  MATH  Google Scholar 

Krupitzer C. Generative artificial intelligence in the agri-food value chain-overview, potential, and research challenges. Frontiers in Food Science and Technology. 2024;4:1473357.

Article  Google Scholar 

Mitrović S, Andreoletti D, Ayoub O, Chatgpt or human? detect and explain. explaining decisions of machine learning model for detecting short chatgpt-generated text. 2023. arXiv preprint arXiv:2301.13852.

Guo B, Zhang X, Wang Z, Jiang M, Nie J, Ding Y, Yue J, Wu Y. How close is chatgpt to human experts? comparison corpus, evaluation, and detection. 2023. arXiv preprint arXiv:2301.07597.

Liu J, Zhou Y, Li Y, Li Y, Hong S, Li Q, Liu X, Lu M, Wang X. Exploring the integration of digital twin and generative ai in agriculture. In: 2023 15th International Conference on Intelligent Human-Machine Systems and Cybernetics (IHMSC). IEEE; 2023, p. 223–228.

Sun G, Zhu G, Liao D, Yu H, Du X, Guizani M. Cost-efficient service function chain orchestration for low-latency applications in nfv networks. IEEE Syst J. 2018;13(4):3877–88.

Article  Google Scholar 

Ray PP. Generative ai and its impact on sugarcane industry: An insight into modern agricultural practices. Sugar Tech. 2024;26(2):325–32.

Article  MATH  Google Scholar 

Dhal SB, Kar D, Transforming agricultural productivity with ai-driven forecasting: Innovations in food security and supply chain optimization,” MDPI Forecasting; 2024;6:INL/JOU-24-81560-Rev000.

Araújo SO, Peres RS, Ramalho JC, Lidon F, Barata J. Machine learning applications in agriculture: current trends, challenges, and future perspectives. Agronomy. 2023;13(12):2976.

Article  Google Scholar 

Tai C-Y, Wang W-J, Huang Y-M. Using time-series generative adversarial networks to synthesize sensing data for pest incidence forecasting on sustainable agriculture. Sustainability. 2023;15(10):7834.

Article  MATH  Google Scholar 

Chakraborty S, Tomsett R, Raghavendra R, Harborne D, Alzantot M, Cerutti F, Srivastava M, Preece A, Julier S, Rao RM. Interpretability of deep learning models: A survey of results. In: et al. IEEE smartworld, ubiquitous intelligence & computing, advanced & trusted computed, scalable computing & communications, cloud & big data computing, Internet of people and smart city innovation (smartworld/SCALCOM/UIC/ATC/CBDcom/IOP/SCI). IEEE; 2017;2017:1–6.

Adadi A, Berrada M. Peeking inside the black-box: a survey on explainable artificial intelligence (xai). IEEE access; 2018;6:52 138–52 160.

Rane N, Choudhary S, Rane J. Contribution of chatgpt and similar generative artificial intelligence for enhanced climate change mitigation strategies. Available at SSRN 4681720, 2024.

Richards D, Worden D, Song XP, Lavorel S. Harnessing generative artificial intelligence to support nature-based solutions. People and Nature. 2024;6(2):882–93.

Article  Google Scholar 

Jiang Y, Wang S, Valls V, Ko BJ, Lee W-H, Leung KK, Tassiulas L. Model pruning enables efficient federated learning on edge devices. IEEE Trans Neural Netw Learn Syst. 2022;34(12):10 374–10 386.

Gray RM, Neuhoff DL. Quantization. IEEE Trans Inf Theory. 1998;44(6):2325–83.

Article  MATH  Google Scholar 

Pan SJ, Yang Q. A survey on transfer learning. IEEE Trans Knowl Data Eng. 2009;22(10):1345–59.

Article  MATH  Google Scholar 

Xu G, Kong D-l, Zhang K, Xu S, Cao Y, Mao Y, Duan J, Kang J, Chen X-B. A model value transfer incentive mechanism for federated learning with smart contracts in aiot. IEEE Internet Things J. 2024.

Cao K, Liu Y, Meng G, Sun Q. An overview on edge computing research. IEEE access; 2020;8:85 714–85 728.

Chen J, Song Y, Li D, Lin X, Zhou S, Xu W, Specular removal of industrial metal objects without changing lighting configuration. IEEE Trans Ind Inform. 2023.

Gemtou M, Kakkavou K, Anastasiou E, Fountas S, Pedersen SM, Isakhanyan G, Erekalo KT, Pazos-Vidal S. Farmers’ transition to climate-smart agriculture: A systematic review of the decision-making factors affecting adoption. Sustainability. 2024;16(7):2828.

Article 

Comments (0)

No login
gif