This work is licensed under the Creative Commons Attribution 4.0 International License.
Aronson, E., Wilson, T. D., & Akert, R. M. (2005). Social Psychology – The Heart and the Mind (Psychologia społeczna – serce i umysł). Poznań: Zysk i S-ka.AronsonE.WilsonT. D.AkertR. M.2005PoznańZysk i S-kaSearch in Google Scholar
Adhitya, Y., Prakosa, S. W., Koppen, M., & Leu, J. S. (2020). Feature Extraction for Cocoa Bean Digital Image Classification Prediction for Smart Farming Application. Agronomy, 10(11), 1642.AdhityaY.PrakosaS. W.KoppenM.LeuJ. S.2020Feature Extraction for Cocoa Bean Digital Image Classification Prediction for Smart Farming Application10111642Search in Google Scholar
Ajena, F. (2018). Agriculture 3.0 or (smart) agroecology? Green European Journal, November 20. https://www.greeneuropeanjournal.eu/content/uploads/pdf/agriculture-3-0-or-smart-agroecology.pdfAjenaF.2018Agriculture 3.0 or (smart) agroecology?https://www.greeneuropeanjournal.eu/content/uploads/pdf/agriculture-3-0-or-smart-agroecology.pdfSearch in Google Scholar
Ajzen, I. (1985). From intentions to action: A theory of planned behavior. In J. Kuhl & J. Beckman (Eds.), Action control: From cognitions to behaviors (pp. 11–39). New York: Springer.AjzenI.1985From intentions to action: A theory of planned behaviorInKuhlJ.BeckmanJ.(Eds.),1139New YorkSpringerSearch in Google Scholar
Allen, P., Van Dusen, D., Lundy, J., & Gliessman, S. (1991). Integrating social, environmental, and economic issues in sustainable agriculture. American Journal of Alternative Agriculture, 6(1), 34–39.AllenP.Van DusenD.LundyJ.GliessmanS.1991Integrating social, environmental, and economic issues in sustainable agriculture613439Search in Google Scholar
Argilés, J.M. (2001). Accounting information and the prediction of farm non-viability. Eur. Account. Rev., 10, 73–105. https://doi.org/10.1080/713764592.ArgilésJ.M.2001Accounting information and the prediction of farm non-viability1073105https://doi.org/10.1080/713764592Search in Google Scholar
Ayed, R.B. & Hanana, M. (2021), Artificial Intelligence to Improve the Food and Agriculture Sector, Journal and Food Quality, 2021, 5584754. https://doi.org/10.1155/2021/5584754AyedR.B.HananaM.2021Artificial Intelligence to Improve the Food and Agriculture Sector5584754https://doi.org/10.1155/2021/5584754Search in Google Scholar
Bastan, R., Khorshid-Doust, R., Sisi S. D., & Ahmadvand, A. (2018). Sustainable development of agriculture: a system dynamics model. Kybernetes, 47(1), 142–162. https://doi.org/10.1108/K-01-2017-0003BastanR.Khorshid-DoustR.SisiS. D.AhmadvandA.2018Sustainable development of agriculture: a system dynamics model471142162https://doi.org/10.1108/K-01-2017-0003Search in Google Scholar
Beluhova-Uzunova, R. P., & Dunchev, D. M. (2019). Precision farming – concepts and perspectives. Problems of Agricultural Economics, 3(360), 142–155. https://doi.org/10.30858/zer/112132Beluhova-UzunovaR. P.DunchevD. M.2019Precision farming – concepts and perspectives3360142155https://doi.org/10.30858/zer/112132Search in Google Scholar
Borychowski, M., Stępień, S., Polcyn, J., Tosovic-Stevanovic, A., Calovic, D., Lalic, G., & Zuza, M. (2020). Socio-Economic Determinants of Small Family Farms' Resilience in Selected Central and Eastern European Countries. Sustainability, 12(24), 10362. https://doi.org/10.3390/su122410362BorychowskiM.StępieńS.PolcynJ.Tosovic-StevanovicA.CalovicD.LalicG.ZuzaM.2020Socio-Economic Determinants of Small Family Farms' Resilience in Selected Central and Eastern European Countries122410362https://doi.org/10.3390/su122410362Search in Google Scholar
Buntak, K., Kovacic, M., Matuvdzija, M. (2021). Application of Artificial Intelligence in The Business. International Journal for Quality Research, 15(2), 403–416. https://doi.org/10.24874/IJQR15.02-03BuntakK.KovacicM.MatuvdzijaM.2021Application of Artificial Intelligence in The Business152403416https://doi.org/10.24874/IJQR15.02-03Search in Google Scholar
Tessler, C., Seaton, C., Sanzovo, M., Mukerjee, R., Bala, V., & Guo, X. (2019). The Potential of Artificial Intelligence to Support Smallholder Farmers and Agricultural Enterprises. Bhadra: Self-Employed Women's Association SEWA.TesslerC.SeatonC.SanzovoM.MukerjeeR.BalaV.GuoX.2019BhadraSelf-Employed Women's Association SEWASearch in Google Scholar
Cook, P., & O'Neil, F. (2020). Artificial Intelligence in Agribusiness is Growing in Emerging Markets. International Finance Corporation, note 82.CookP.O'NeilF.2020Artificial Intelligence in Agribusiness is Growing in Emerging MarketsSearch in Google Scholar
Czyżewski, B., Czyżewski, A., Kryszak, Ł. (2019). The Market Treadmill Against Sustainable Income of European Farmers: How the CAP Has Struggled with Cochrane's Curse. Sustainability, 11(791).CzyżewskiB.CzyżewskiA.KryszakŁ.2019The Market Treadmill Against Sustainable Income of European Farmers: How the CAP Has Struggled with Cochrane's Curse11791Search in Google Scholar
De Clercq, M., Vats, A., & Biel, A. (2018). Agriculture 4.0: the future of farming technology. Decision Processes, 50(2), 179–211.De ClercqM.VatsA.BielA.2018Agriculture 4.0: the future of farming technology502179211Search in Google Scholar
De-Shalit, A. (2003). The Environment Between Theory and Practice. Oxford Scholarship Online. https://doi.org/10.1093/0199240388.001.0001De-ShalitA.2003Oxford Scholarship Online. https://doi.org/10.1093/0199240388.001.0001Search in Google Scholar
Deep Knowledge Group. (2019). AI in Eastern Europe. Artificial Intelligence Industry Landscape Overview 2018.Deep Knowledge Group2019Search in Google Scholar
Denzin, N. K., & Lincoln, Y. S. (2000). Introduction: The discipline and practice of qualitative research. In N.K. Denzin, Y.S. Lincoln (Eds.), Handbook of Qualitative Research (2nd ed.). Thousand Oaks: Sage Publications.DenzinN. K.LincolnY. S.2000Introduction: The discipline and practice of qualitative researchInDenzinN.K.LincolnY.S.(Eds.),2nd edThousand OaksSage PublicationsSearch in Google Scholar
Diamond, J. (1993). The rise and fall of the third chimpanzee. Journal of Social and Evolutionary Systems, 16(3), 357–360.DiamondJ.1993The rise and fall of the third chimpanzee163357360Search in Google Scholar
Eager, J., Whittle, M., Smit, J., Cacciaguerra, G., Lale-Demoz, E., et al. (2020). Opportunities of Artficial Intelligence. Luxembourg: the Policy Department for Economic, Scientific and Quality of Life Policies, European Parliament.EagerJ.WhittleM.SmitJ.CacciaguerraG.Lale-DemozE.2020Luxembourgthe Policy Department for Economic, Scientific and Quality of Life Policies, European ParliamentSearch in Google Scholar
Eli-Chukwu, N., & Ogwugwam, E.C. (2019). Applications of Artificial Intelligence in Agriculture: A Review. Engineering, Technology and Applied Research, 9(4), 4377–4383. https://doi.org/10.48084/etasr.2756Eli-ChukwuN.OgwugwamE.C.2019Applications of Artificial Intelligence in Agriculture: A Review9443774383https://doi.org/10.48084/etasr.2756Search in Google Scholar
Elijah, O., Rahman, T. A., Orikumhi, I., Leow, C. Y., & Hindia, M. N. (2018). An Overview of Internet of Things (IoT) and Data Analytics in Agriculture: Benefits and Challenges. IEEE Internet of Things Journal, PP(99), 1–17.ElijahO.RahmanT. A.OrikumhiI.LeowC. Y.HindiaM. N.2018An Overview of Internet of Things (IoT) and Data Analytics in Agriculture: Benefits and ChallengesPP(99)117Search in Google Scholar
European Commission. (2021). Communication from the Commission Europe 2020 A strategy for smart, sustainable and inclusive growth.European Commission2021Search in Google Scholar
European Commission. (2011). What is a Small Farm? EU Agricultural Economics Brief, 2. Brussels: European Commission on Agriculture and Rural Development.European Commission2011BrusselsEuropean Commission on Agriculture and Rural DevelopmentSearch in Google Scholar
Eurostat. (2020). Agriculture, forestry and fishery statistics. Brussels: European Commission.Eurostat2020BrusselsEuropean CommissionSearch in Google Scholar
Fishbein, M., & Ajzen, I. (2010). Predicting and changing behavior: The reasoned action approach. New York: Psychology Press.FishbeinM.AjzenI.2010New YorkPsychology PressSearch in Google Scholar
Foley J. A., De Fries, R., Asner, G. P., Barford, C., Bonan, G., Carpenter, S. R., & Chapiet, F.S. (2005). Global Consequences of Land Use. Science, 309, 5734. https://doi.org/10.1126/science.1111772FoleyJ. A.De FriesR.AsnerG. P.BarfordC.BonanG.CarpenterS. R.ChapietF.S.2005Global Consequences of Land Use3095734https://doi.org/10.1126/science.1111772Search in Google Scholar
Fountas, S., Mylonas, N., Malounas, I., Rodias, E., Santos, C. H., & Pekkeriet, E. (2020). Agricultural Robotics for Field Operations. Sensors, 20(9), 2672. https://doi.org/10.3390/s20092672FountasS.MylonasN.MalounasI.RodiasE.SantosC. H.PekkerietE.2020Agricultural Robotics for Field Operations2092672https://doi.org/10.3390/s20092672Search in Google Scholar
Galaz, V., Centeno, M. A., Callahan, P. W., Causevic, A., Patterson, T., et al. (2021). Artificial intelligence, systemic risks, and sustainability. Technology in Society, 67, 101741.GalazV.CentenoM. A.CallahanP. W.CausevicA.PattersonT.2021Artificial intelligence, systemic risks, and sustainability67101741Search in Google Scholar
Gandge, Y., Sandhy, A, & IEEE (2017). A Study on Various Data Mining Techniques for Crop Yield Prediction. Proceedings of the International Conference on Electrical, Electronics, Communication, Computer, and Optimization Techniques (Iceeccot), 420–423.GandgeY.SandhyAIEEE2017A Study on Various Data Mining Techniques for Crop Yield Prediction420423Search in Google Scholar
Gruchelski, M., & Niemczyk, J. (2016). Małe gospodarstwa rolne w Polsce a paradygmat rozwoju zrównoważonego (Small farms in Poland and the paradigm of sustainable development). Adv. Food Process. Tech., 2, 134–140.GruchelskiM.NiemczykJ.2016Małe gospodarstwa rolne w Polsce a paradygmat rozwoju zrównoważonego (Small farms in Poland and the paradigm of sustainable development)2134140Search in Google Scholar
Guiomar, N., Godinho, S., Pinto-Correia, T., Almeida, M., Bartolini, F., Bezák, P., & Wästfelt, A. (2018). Typology and distribution of small farms in Europe: Towards a better picture. Land Use Policy, 75, 784–798.GuiomarN.GodinhoS.Pinto-CorreiaT.AlmeidaM.BartoliniF.BezákP.WästfeltA.2018Typology and distribution of small farms in Europe: Towards a better picture75784798Search in Google Scholar
Guth, M., Smędzik-Ambroży, K. Czyżewski, B., & Stępień, S. (2020). The Economic Sustainability of Farms under Common Agricultural Policy in the European Union Countries. Agriculture, 10(2), 34. https://doi.org/10.3390/agriculture10020034GuthM.Smędzik-AmbrożyK.CzyżewskiB.StępieńS.2020The Economic Sustainability of Farms under Common Agricultural Policy in the European Union Countries10234https://doi.org/10.3390/agriculture10020034Search in Google Scholar
Gwagwa, A., Kazim, E., Kachidza, P., Hilliard, A., Siminyu, K., Smith, M., & Shawe-Taylor, J., (2021). Road map for research on responsible artificial intelligence for development (AI4D) in African countries: The case study of agriculture. Patterns, 2(12), 100381. https://doi.org/10.1016/j.patter.2021.100381GwagwaA.KazimE.KachidzaP.HilliardA.SiminyuK.SmithM.Shawe-TaylorJ,2021Road map for research on responsible artificial intelligence for development (AI4D) in African countries: The case study of agriculture212100381https://doi.org/10.1016/j.patter.2021.100381Search in Google Scholar
Hennessy, T., Läpple, D., & Moran, B. (2016) The digital divide in farming: A problem of access or engagement? Appl. Econ. Persp. Policy, 38, 474–491. https://doi.org/10.1093/aepp/ppw015HennessyT.LäppleD.MoranB.2016The digital divide in farming: A problem of access or engagement?38474491https://doi.org/10.1093/aepp/ppw015Search in Google Scholar
Javaid, M., Haleem, A., Khan, I. H., & Suman, R. (2022). Understanding the potential applications of Artificial Intelligence in Agriculture Sector. Advanced Agrochem. https://doi.org/10.1016/j.aac.2022.10.001JavaidM.HaleemA.KhanI. H.SumanR.2022Understanding the potential applications of Artificial Intelligence in Agriculture Sectorhttps://doi.org/10.1016/j.aac.2022.10.001Search in Google Scholar
Konecki, K. (2000). Studia z metodologii badań jakościowych. Teoria ugruntowana (Studies in qualitative research methodology. Grounded theory). Warsaw: PWN.KoneckiK.2000WarsawPWNSearch in Google Scholar
Lee, J., Nazki, H., Baek, J., Hong, Y., & Lee, M. (2020). Artificial Intelligence Approach for Tomato Detection and Mass Estimation in Precision Agriculture. Sustainability, 12(21), 9138.LeeJ.NazkiH.BaekJ.HongY.LeeM.2020Artificial Intelligence Approach for Tomato Detection and Mass Estimation in Precision Agriculture12219138Search in Google Scholar
Lowder, S. K., Skoet, J., & Raney, T. (2016). The number, size, and distribution of farms, smallholder farms, and family farms worldwide. World Dev., 87, 16–29. https://doi.org/10.1016/j.worlddev.2015.10.041LowderS. K.SkoetJ.RaneyT.2016The number, size, and distribution of farms, smallholder farms, and family farms worldwide871629https://doi.org/10.1016/j.worlddev.2015.10.041Search in Google Scholar
Mahajan, S., Das, A., & Sardana, H. K. (2015). Image acquisition techniques for assessment of legume quality. Trends in Food Science & Technology, 42(2), 116–133. https://doi.org/10.1016/j.tifs.2015.01.001MahajanS.DasA.SardanaH. K.2015Image acquisition techniques for assessment of legume quality422116133https://doi.org/10.1016/j.tifs.2015.01.001Search in Google Scholar
Mehrabi, Z., McDowell, M. J., & Ricciardi, V. et al. (2021). The global divide in data-driven farming. Nat Sustain, 4, 154–160. https://doi.org/10.1038/s41893-020-00631-0MehrabiZ.McDowellM. J.RicciardiV.2021The global divide in data-driven farming4154160https://doi.org/10.1038/s41893-020-00631-0Search in Google Scholar
Mhlanga, D. (2021). Artificial Intelligence in the Industry 4.0, and Its Impact on Poverty, Innovation, Infrastructure Development, and the Sustainable Development Goals: Lessons from Emerging Economies? Sustainability, 13(5788), 1–16.MhlangaD.2021Artificial Intelligence in the Industry 4.0, and Its Impact on Poverty, Innovation, Infrastructure Development, and the Sustainable Development Goals: Lessons from Emerging Economies?135788116Search in Google Scholar
Miles, M. B. (1979). Qualitative Data as Attractive Nuisance: the Problem of Analysis. Administrative Science Quarterly, 24, 590–601.MilesM. B.1979Qualitative Data as Attractive Nuisance: the Problem of Analysis24590601Search in Google Scholar
Moskvin, G. A. (1998). Artificial intelligence measuring, automatic control and expert systems in agriculture. IFAC Proceedings Volumes, 31(5), 163–167.MoskvinG. A.1998Artificial intelligence measuring, automatic control and expert systems in agriculture315163167Search in Google Scholar
Nilsson, N. J. (1998). Artificial intelligence: a new synthesis. Burlington. Massachusetts: Morgan Kaufmann Publishers, Inc.NilssonN. J.1998MassachusettsMorgan Kaufmann Publishers, Inc.Search in Google Scholar
Panpatte D. G. (2018). Artificial Intelligence in Agriculture: An Emerging Era of Research, Anand: Agricultural University.PanpatteD. G.2018Anand:Agricultural UniversitySearch in Google Scholar
Palen, R., Stewart, C., & D'Amore, A. (2018). Land prices vary considerably between and within Member States. Brussels: Eurostat Press Office.PalenR.StewartC.D'AmoreA.2018BrusselsEurostat Press OfficeSearch in Google Scholar
Pasikowski, S. (2015). Czy wielkość jest niezbędna? O rozmiarze próby w badaniach jakościowych (Is The Size is Necessary? About The Sample Size in Qualitative Research). Educational Studies Review, 21(2), 195–211. http://dx.doi.org/10.12775/PBE.2015.055PasikowskiS.2015Czy wielkość jest niezbędna? O rozmiarze próby w badaniach jakościowych (Is The Size is Necessary? About The Sample Size in Qualitative Research)212195211http://dx.doi.org/10.12775/PBE.2015.055Search in Google Scholar
Patel, G. S., Rai, A., Das, N. N., & Singh, R. P. (2021). In Smart Agriculture: Emerging Pedagogies of Deep Learning, Machine Learning and Internet of Things. Boca Raton (FL): CRC Press.PatelG. S.RaiA.DasN. N.SinghR. P.2021Boca Raton (FL)CRC PressSearch in Google Scholar
Patricio, D. I. & Rieder, R. (2018). Computer vision and artificial intelligence in precision agriculture for grain crops: A systematic review. Computers and Electronics in Agriculture, 153, 69–81.PatricioD. I.RiederR.2018Computer vision and artificial intelligence in precision agriculture for grain crops: A systematic review1536981Search in Google Scholar
Pinstrup-Andersen, P., & Hazell, P. B. (1985). The impact of the Green Revolution and prospects for the future. Food Reviews International, 1(1), 1–25.Pinstrup-AndersenP.HazellP. B.1985The impact of the Green Revolution and prospects for the future11125Search in Google Scholar
Ren, G. Q., Lin, T., Ying, Y. B., Chowdhary, G., & Ting, K. C. (2020). Agricultural robotics research applicable to poultry production: A review. Computers and Electronics in Agriculture, 169, 14.RenG. Q.LinT.YingY. B.ChowdharyG.TingK. C.2020Agricultural robotics research applicable to poultry production: A review16914Search in Google Scholar
Renda, A., Reynolds, N., Laurer, M., & Cohen, G. (2019). Digitising Agrifood: Pathways and Challenges. Brussels: CEPS&BCFN.RendaA.ReynoldsN.LaurerM.CohenG.2019BrusselsCEPS&BCFNSearch in Google Scholar
Rose, D. C., Wheeler, R., Winter, M., Lobley, M., & Chivers, C.-A. (2021). Agriculture 4.0: Making it work for people, production, and the planet. Land Use Policy, 100, 104933. https://doi.org/10.1016/j.landusepol.2020.104933RoseD. C.WheelerR.WinterM.LobleyM.ChiversC.-A.2021Agriculture 4.0: Making it work for people, production, and the planet100104933https://doi.org/10.1016/j.landusepol.2020.104933Search in Google Scholar
Russel, S. & Norvig, P. (2010). Artificial Intelligence. A Modern Approach. London: Pearson Education.RusselS.NorvigP.2010LondonPearson EducationSearch in Google Scholar
Ryan, M. (2022). The social and ethical impacts of artificial intelligence in agriculture: mapping the agricultural AI literature. AI & Society, 5169.RyanM.2022The social and ethical impacts of artificial intelligence in agriculture: mapping the agricultural AI literature5169Search in Google Scholar
Samoili, S., López Cobo, M., Gómez, E., De Prato, G., Martínez-Plumed, F., & Delipetrev, B. (2020). AI Watch. Defining Artificial Intelligence. Towards an operational definition and taxonomy of artificial intelligence. Luxembourg: Publications Office of the European Union.SamoiliS.López CoboM.GómezE.De PratoG.Martínez-PlumedF.DelipetrevB.2020LuxembourgPublications Office of the European UnionSearch in Google Scholar
Siqueira, T. T., Gallian, D., Nguyen, G., & Bánkuti, F.I. (2021). Organizational Forms and Agri-Environmental Practices: The Case of Brazilian Dairy Farms. Sustainability, 13, 3762.SiqueiraT. T.GallianD.NguyenG.BánkutiF.I.2021Organizational Forms and Agri-Environmental Practices: The Case of Brazilian Dairy Farms133762Search in Google Scholar
Skvortsov, E. A. (2020). Prospects of Applying Artificial Intelligence Technologies in the Regional Agriculture. Ekonomika Regiona-Economy of Region, 16, 563–576. http://doi.org/10.17059/2020-2-17SkvortsovE. A.2020Prospects of Applying Artificial Intelligence Technologies in the Regional Agriculture16563576http://doi.org/10.17059/2020-2-17Search in Google Scholar
Smędzik-Ambroży, K., Matuszczak, A., Kata, R., & Kułyk, P. (2021). The Relationship of Agricultural and Non-Agricultural Income and Its Variability in Regard to Farms in the European Union Countries. Agriculture, 11(3), 196.Smędzik-AmbrożyK.MatuszczakA.KataR.KułykP.2021The Relationship of Agricultural and Non-Agricultural Income and Its Variability in Regard to Farms in the European Union Countries113196Search in Google Scholar
Smędzik-Ambroży, K. (2018). Zasoby a zrównoważony rozwój rolnictwa (Resources and sustainable agricultural development). Warsaw: PWN.Smędzik-AmbrożyK.2018WarsawPWNSearch in Google Scholar
Smith, M. J. (2020). Getting value from artificial intelligence in agriculture. Animal Production Science, 60, 46–54. https://doi.org/10.1071/AN18522SmithM. J.2020Getting value from artificial intelligence in agriculture604654https://doi.org/10.1071/AN18522Search in Google Scholar
Sulewski, P., Wąs, A., Kobus, P., Pogodzińska, K., Szymańska, M., & Sosulski, T. (2020). Farmers' Attitudes towards Risk—An Empirical Study from Poland. Agronomy, 10, 1555.SulewskiP.WąsA.KobusP.PogodzińskaK.SzymańskaM.SosulskiT.2020Farmers' Attitudes towards Risk—An Empirical Study from Poland101555Search in Google Scholar
Tanghe, T. (2021). Boosting the use of Artificial Intelligence in Europe's micro, small and medium-sized Enterprises. Brussel: The European Economic and Social Committee.TangheT.2021BrusselThe European Economic and Social CommitteeSearch in Google Scholar
Theuvsen, L. (2013). Risks and Risk Management in Agriculture. Georg August University of Goettingen, Department of Agricultural Economics and Rural Development, Goettingen, Germany.TheuvsenL.2013Georg August University of Goettingen, Department of Agricultural Economics and Rural DevelopmentGoettingen, GermanySearch in Google Scholar
Tzachor, A., Devare, M., King, B., Avin, S., & ÓhÉigeartaigh, S. (2022). Responsible artificial intelligence in agriculture requires systemic understanding of risks and externalities. Nat Mach Intell 4, 104–109.TzachorA.DevareM.KingB.AvinS.ÓhÉigeartaighS.2022Responsible artificial intelligence in agriculture requires systemic understanding of risks and externalities4104109Search in Google Scholar
Van Maanen, J. (1988). Qualitative Studies of Organizations. London: SAGE Publications.Van MaanenJ.1988LondonSAGE PublicationsSearch in Google Scholar
Vohra, A., Pandey, N., & Khatri, S. K. 2019. Decision Making Support System for Prediction of Prices in Agricultural Commodity. Proceedings of the 2019 Amity International Conference on Artificial Intelligence (Aicai), 345–348.VohraA.PandeyN.KhatriS. K.2019Decision Making Support System for Prediction of Prices in Agricultural Commodity345348Search in Google Scholar
Wolfert, S., Ge, L., Verdouw, C., & Bogaardt, M. J. (2017). Big data in smart farming–a review. Agric. Syst., 153, 69–80. https://doi.org/10.1016/j.agsy.2017.01.023WolfertS.GeL.VerdouwC.BogaardtM. J.2017Big data in smart farming–a review1536980https://doi.org/10.1016/j.agsy.2017.01.023Search in Google Scholar
Yu, J., Wei, Q. F., & Luo, C. S. (2017). Discussion on the development trend of agricultural science and Technology Advisory Service Based on Artificial Intelligence. Proceedings of 3rd International Symposium on Social Science (Isss 2017), 61, 504–506.YuJ.WeiQ. F.LuoC. S.2017Discussion on the development trend of agricultural science and Technology Advisory Service Based on Artificial Intelligence61504506Search in Google Scholar
Zha, J. (2020). Artificial Intelligence in Agriculture. Journal of Physics: Conference Series, 1693(012058), 1–6. https://doi.org/10.1088/1742-6596/1693/1/012058ZhaJ.2020Artificial Intelligence in Agriculture169301205816https://doi.org/10.1088/1742-6596/1693/1/012058Search in Google Scholar
Zhai, Z. Y., Martinez, J. F., Beltran, V., & Martinez, N. L. (2020). Decision support systems for agriculture 4.0: Survey and challenges. Computers and Electronics in Agriculture, 170, 16.ZhaiZ. Y.MartinezJ. F.BeltranV.MartinezN. L.2020Decision support systems for agriculture 4.0: Survey and challenges17016Search in Google Scholar
Zhang, Y., Balochian, S., Agarwal, P., Bhatnagar, V., & Housheya, O. J. (2014). Artificial Intelligence and Its Applications. Mathematical Problems in Engineering, 2016, 1–10. https://doi.org/10.1155/2016/3871575ZhangY.BalochianS.AgarwalP.BhatnagarV.HousheyaO. J.2014Artificial Intelligence and Its Applications2016110https://doi.org/10.1155/2016/3871575Search in Google Scholar