1 Affiliation : Department of Mathematics, Arts and Sciences Faculty, Bitlis Eren University, Bitlis, Turkey
Email : firstname.lastname@example.org
2 Affiliation : Department of Mathematics, Science Faculty, Istanbul University, Istanbul, Turkey
Email : email@example.com
3 Affiliation : Laboratory of Information Processing, Faculty of Science Ben M’Sik, University Hassan II, Casablanca, Morocco,
Email : firstname.lastname@example.org
4 Affiliation : Plant and Animal Production Department, Hizan Vocational School, Bitlis Eren University, Bitlis, Turke
Email : email@example.com
This study presents a smart agriculture mechanism model equipped with neutrosophy theory for the first time. The model is created by meticulously bringing together the fields of decision making, IoT and cloud computing. We have demonstrated that smart agriculture can be used in integration with neutrosophic, integrated with IoT. This integration is a model created by making much more detailed calculations by taking into account and using the uncertainty situations in neutrosophic numbers and logic, by automating both the geometric analysis of the soil and surface control and the numerical data of the environment for smart agriculture.
Smart Agriculture , Internet of Things , Cloud Computing , Neutrosophic Logic , Neutrosophic Geometry
 Ashton, K., “That ‘internet of things’ thing”, RFiD Journal, 22(7), pp. 97-114, 2009.
 Shi DL., “Intelligent Information Collection and Management for Crop Growing Environment Based on Internet of Things Model”, 4th International Conference on Social Sciences and Society (ICSSS 2015), Pt 4, Paris, France, pp. 14-18, 2015.
 Boyes, H., Hallaq, B., Cunningham, J., Watson, T. ” The industrial internet of things (IIoT): An analysis framework”. Computers in industry, 101, pp. 1-12, 2018.
 Madakam, S., Ramaswamy, R., “Tripathi S., Internet of Things (IoT): A Literature Review”, Journal of Computer and Communications, 3, pp. 164-173, 2015.
 Steinberg, M. D., Tkalcec, B., Steinberg, I. M., “Towards a passive contactless sensor for monitoring resistivity in porous materials”, Sensors and Actuators B-Chemical, 234, pp. 294-299. DOI:10.1016/j.snb.2016.04.169, 2016.
 Zarco-Tejada, P., Hubbard, N., Loudjani, P., “Precision Agriculture: An Opportunity for EU Farmers Potential Support with the CAP 2014-2020”, Joint Research Centre (JRC) of the European Commission, 2014.
 Shingarwade, N.D., Suryavanshi, S.C.: Performance evaluation of cloud based farm automation. In 2017 International Conference on Computing, Communication, Control and Automation (ICCUBEA), pp. 1–6, 2017.
 Zhao, J.C., Zhang, J.F., Feng, Y. And Guo, J.X. ”The Study and Application of the lOT Technology in Agriculture”, 3 th. IEEE International Conference, 2, pp.462-65, 2010.
 Duan, Y. “Design of Intelligent Agriculture Management Information System Based on IOT”, IEEE,4th. International Conference on Intelligent Computation Technology and Automation,1, pp. 1045-1049, 2011.
 Ying, Q. & Hao, C.”The Design of smart cloud computing system”, International Conference on Computational and Information Sciences, pp. 185-188, 2011.
 Qirui, Y. “Kaas-based intelligent service model in agricultural expert system”, 2nd International conference on consumer electronics, communications and networks, pp. 2678-2680, 2012.
 Hori, M., Kawashima, E. & Yamazaki, T. ”Application of cloud computing to Agriculture and prospect to other fields”, Fijitsu Science Technology Journal, 46(4), pp. 446-454, 2011.
 Krishnan, R. S., Julie, E. G., Robinson, Y. H., Raja, S., Kumar, R., & Thong, P. H. ” Fuzzy Logic based Smart Irrigation System using Internet of Things”. Journal of Cleaner Production, 252, 119902, 2020.
 Yolanda, D., Hindersah, H., Hadiatna, F., & Triawan, M. A. (2016, October). Implementation of realtime fuzzy logic control for NFT-based hydroponic system on Internet of Things environment. In 2016 6th International Conference on System Engineering and Technology (ICSET) (pp. 153-159). IEEE.
 Lin, J., Shen, Z., Zhang, A., & Chai, Y. ” Blockchain and IoT based food traceability for smart agriculture”. In Proceedings of the 3rd International Conference on Crowd Science and Engineering, pp. 1-6, 2018.
 Izzuddin, T. A., Johari, M. A., Rashid, M. Z. A., & Jali, M. H. (2018). Smart irrigation using fuzzy logic method. ARPN Journal of Engineering and Applied Sciences, 13(2), 1819-6608.
 Munir, M. S., Bajwa, I. S., & Cheema, S. M. ” An intelligent and secure smart watering system using fuzzy logic and blockchain”. Computers & Electrical Engineering, 77, pp. 109-119, 2019.
 Smarandache, F. Neutrosophy/Neutrosophic probability, set, and logic. American Research Press: Santa Fe, NM, USA, 1998.
 Zadeh, L. A.” Fuzzy sets”. Information and control, 8(3), pp. 338-353, 1965.
 Atanassov, K. T. ” Intuitionistic fuzzy sets”. In Intuitionistic fuzzy sets Physica, Heidelberg. pp. 1-137, 1999.
 H.Wang, F. Smarandache, Y.Q. Zhang, R. Sunderraman ” Single valued neutrosophic sets”. Multispace Multistructure , 4, pp. 410–413, 2010.
  Tas¸, F. & Topal, S. Bezier curve modeling for neutrosophic data problem. Neutrosophic Sets and Systems, Vol 16, pp. 3-5, 2017.
 S. Topal & F. Tas¸, Bezier surface modeling for neutrosophic data problems, Neutrosophic Sets and Systems, 19, pp.19-23, 2018.
 C¸ ınar, A., & Arslan A. ”Bulanık Mantık Tabanlı Yuzey Modelleme ve ¨ Uc¸ Boyutta Nesne Kaynas¸tırma ¨Is¸lemine Uygualamsı”. Gazi Universitesi M ¨ uhendislik-Mimarlık Fak ¨ ultesi Dergisi, 17(4), 2005. ¨
 Chakraborty, A., Mondal, S., & Broumi, S. ” De-neutrosophication technique of pentagonal neutrosophic number and application in minimal spanning tree”. Neutrosophic Sets and Systems, 29(1), 1, 2019.
 Chakraborty, A., MondalL, S., Mahata, A., & Alam, S. ” Different linear and non-linear form of trapezoidal neutrosophic numbers, de-neutrosophication techniques and its application in time-cost optimization technique, sequencing problem”. RAIRO-Operations Research, 2019. https://doi.org/10.1051/ro/2019090
 Rashno, E., Minaei-Bidgoli, B., & Guo, Y. ” An effective clustering method based on data indeterminacy in neutrosophic set domain”. Engineering Applications of Artificial Intelligence, 89, 103411, 2020.
 Li, Q., Ma, Y., Smarandache, F., & Zhu, S. ” Single-valued neutrosophic clustering algorithm based on Tsallis entropy maximization”. Axioms, 7(3), 57, 2018.
 Tas¸, F., Topal, S., & Smarandache, F. ” Clustering neutrosophic data sets and neutrosophic valued metric spaces”. Symmetry, 10(10), 430, 2018.
 Long, H. V., Ali, M., Khan, M., & Tu, D. N. ”A novel approach for fuzzy clustering based on neutrosophic association matrix”. Computers & Industrial Engineering, 127, pp.687-697, 2019.
  Basha, S. H., Tharwat, A., Abdalla, A., & Hassanien, A. E.” Neutrosophic rule-based prediction system for toxicity effects assessment of biotransformed hepatic drugs”. Expert Systems with Applications, 121, pp.142-157, 2019.
 Basha, S. H., Abdalla, A. S., & Hassanien, A. E. (2016, December). Gnrcs: hybrid classification system based on neutrosophic logic and genetic algorithm. In 2016 12th International Computer Engineering Conference (ICENCO) (pp. 53-58). IEEE.
 Kavitha, B., Karthikeyan, S., & Maybell, P. S. ”An ensemble design of intrusion detection system for handling uncertainty using Neutrosophic Logic Classifier”. Knowledge-Based Systems, 28, pp.88-96, 2012.
 Pai, S. P., & Prabhu Gaonkar, R. S. ” Safety modelling of marine systems using neutrosophic logic”. Proceedings of the Institution of Mechanical Engineers, Part M: Journal of Engineering for the Maritime Environment, 2020. 1475090220925733