Informatica logo


Login Register

  1. Home
  2. To appear
  3. Fuzzy Methods in Smart Farming: A System ...

Informatica

Information Submit your article For Referees Help ATTENTION!
  • Article info
  • Full article
  • Related articles
  • Cited by
  • More
    Article info Full article Related articles Cited by

Fuzzy Methods in Smart Farming: A Systematic Review
Irawan Widi Widayat ORCID icon link to view author Irawan Widi Widayat details   Andi Arniaty Arsyad   Aprinaldi Jasa Mantau   Yudhi Adhitya   Mario Köppen  

Authors

 
Placeholder
https://doi.org/10.15388/24-INFOR579
Pub. online: 5 December 2024      Type: Research Article      Open accessOpen Access

Received
1 December 2023
Accepted
1 November 2024
Published
5 December 2024

Abstract

Smart Farming (SF) has garnered interest from computer science researchers for its potential to address challenges in Smart Farming and Precision Agriculture (PA). This systematic review explores the application of Fuzzy Logic (FL) in these areas. Using a specific anonymous search method across five scientific web indexing databases, we identified relevant scholarly articles published from 2017 to 2024, assessed through the PRISMA methodology. Out of 830 selected papers, the review revealed four gaps in using FL to manage imprecise data in Smart Farming. This review provides valuable insights into FL for potential applications and areas needing further investigation in SF.

References

 
Abdelhafeez, A., Mahmoud, H., Aziz, A.S. (2023). Identify the most productive crop to encourage sustainable farming methods in smart farming using neutrosophic environment. Neutrosophic Systems with Applications, 6, 17–24.
 
Abdullah, N., Durani, N.A.B., Shari, M.F.B., Siong, K.S., Hau, V.K.W., Siong, W.N., Ahmad, I.K.A. (2020). Towards smart agriculture monitoring using fuzzy systems. IEEE Access, 9, 4097–4111.
 
Abouzahir, S., Sadik, M., Sabir, E. (2017). Iot-empowered smart agriculture: a real-time light-weight embedded segmentation system. In: International Symposium on Ubiquitous Networking. Springer, pp. 319–332.
 
Acharjya, D.P., Rathi, R. (2021). An integrated fuzzy rough set and real coded genetic algorithm approach for crop identification in smart agriculture. Multimedia Tools and Applications, 81, 35117–35142.
 
Ahmed, A., Parveen, I., Abdullah, S., Ahmad, I., Alturki, N., Jamel, L. (2024). Optimized data fusion with scheduled rest periods for enhanced smart agriculture via blockchain integration. IEEE Access, 12, 15171–15193.
 
Al-Ali, A., Al Nabulsi, A., Mukhopadhyay, S., Awal, M.S., Fernandes, S., Ailabouni, K. (2019). IoT-solar energy powered smart farm irrigation system. Journal of Electronic Science and Technology, 17(4), 100017.
 
Al-Mutairi, A.W., Al-Aubidy, K.M. (2023). IoT-based smart monitoring and management system for fish farming. Bulletin of Electrical Engineering and Informatics, 12(3), 1435–1446.
 
Alattab, A.A., Ibrahim, M.E., Irshad, R.R., Yahya, A.A., Al-Awady, A.A. (2023). Fuzzy-HLSTM (hierarchical long short-term memory) for agricultural based information mining. Computers Materials & Continua, 74(2), 2397–2413.
 
Alaviyan, Y., Aghaseyedabdollah, M., Sadafi, M., Yazdizade, A. (2020). Design and manufacture of a Smart Greenhouse with supervisory control of environmental parameters using fuzzy inference controller. In: 2020 6th Iranian Conference on Signal Processing and Intelligent Systems (ICSPIS), pp. 1–6.
 
Alemany, M.E., Esteso, A., Ortiz, A., Hernández, J.E., Fernández, A., Garrido, A., Martín, J., Liu, S., Zhao, G., Guyon, C., Iannacone, R., (2021). A conceptual framework for crop-based agri-food supply chain characterization under uncertainty. In: Agriculture Value Chain-Challenges and Trends in Academia and Industry. Springer, pp. 19–33.
 
Alomar, B., Alazzam, A. (2018). A smart irrigation system using IoT and fuzzy logic controller. In: 2018 Fifth HCT Information Technology Trends (ITT), IEEE, pp. 175–179.
 
Alpay, Ö., Erdem, E. (2018). The control of greenhouses based on fuzzy logic using wireless sensor networks. International Journal of Computational Intelligence Systems, 12(1), 190–203.
 
Alves, R.G., Maia, R.F., Lima, F. (2023). Development of a digital twin for smart farming: irrigation management system for water saving. Journal of Cleaner Production, 388, 135920.
 
Amertet Finecomess, S., Gebresenbet, G., Alwan, H.M. (2024). Utilizing an Internet of Things (IoT) device, intelligent control design, and simulation for an agricultural system. IoT, 5(1), 58–78.
 
Anter, A.M., Hassenian, A.E., Oliva, D. (2019). An improved fast fuzzy c-means using crow search optimization algorithm for crop identification in agricultural. Expert Systems with Applications, 118, 340–354.
 
Araújo, S.O., Peres, R.S., Filipe, L., Manta-Costa, A., Lidon, F., Ramalho, J.C., Barata, J. (2023). Intelligent data-driven decision support for agricultural systems-ID3SAS. IEEE Access, 11, 115798–115815.
 
Aruldoss, M., Lakshmi, T.M., Venkatesan, V.P. (2013). A survey on multi criteria decision making methods and its applications. American Journal of Information Systems, 1(1), 31–43.
 
Badr, G., Hoogenboom, G., Moyer, M., Keller, M., Rupp, R., Davenport, J. (2018). Spatial suitability assessment for vineyard site selection based on fuzzy logic. Precision Agriculture, 19(6), 1027–1048.
 
Bahri, O., Mourhir, A., Papageorgiou, E.I. (2020). Integrating fuzzy cognitive maps and multi-agent systems for sustainable agriculture. Euro-Mediterranean Journal for Environmental Integration, 5(1), 1–10.
 
Bamurigire, P., Vodacek, A. (2023). Validating algorithms designed for fertilization control in rice farming system. Discover Internet of Things, 3(4).
 
Bannerjee, G., Sarkar, U., Das, S., Ghosh, I. (2018). Artificial intelligence in agriculture: a literature survey. International Journal of Scientific Research in Computer Science Applications and Management Studies, 7(3), 1–6.
 
Barker, A.V. (2016). Science and Technology of Organic Farming. CRC Press.
 
Bellman, R.E., Zadeh, L.A. (1970). Decision-making in a fuzzy environment. Management Science, 17(4), B141–B164.
 
Benyezza, H., Bouhedda, M., Rebouh, S. (2021). Zoning irrigation smart system based on fuzzy control technology and IoT for water and energy saving. Journal of Cleaner Production, 302, 127001.
 
Benyezza, H., Bouhedda, M., Kara, R., Rebouh, S. (2023). Smart platform based on IoT and WSN for monitoring and control of a greenhouse in the context of precision agriculture. Internet Things, 23, 100830.
 
Benzaouia, M., Hajji, B., Mellit, A., Rabhi, A. (2023). Fuzzy-IoT smart irrigation system for precision scheduling and monitoring. Computers and Electronics in Agriculture, 215, 108407.
 
Bernardo, M.S., Medina, R.P., Fajardo, A.C. (2023). Illuminance performance of the solar sharing smart LED lighting for indoor vertical farming using fuzzy logic controller. In: AIP Conference Proceedings, Vol. 2508, 020006-1–020006-10.
 
Blanco-Mesa, F., Merigó, J.M., Gil-Lafuente, A.M. (2017). Fuzzy decision making: a bibliometric-based review. Journal of Intelligent & Fuzzy Systems, 32(3), 2033–2050.
 
Boechel, T., Policarpo, L.M., de Oliveira Ramos, G., Righi, R.d.R. (2021). Fuzzy time series for predicting phenological stages of apple trees. In: Proceedings of the 36th Annual ACM Symposium on Applied Computing, pp. 934–941.
 
Brans, J.-P. (1982). L’ingénierie de la décision. Elaboration d’instruments d’aide à la décision. La méthode PROMETHEE. In: l’Aide à la Décision: Nature, Instruments et Perspectives d’Avenir, pp. 183–213.
 
Bryan, N.M., Thang, K.F., Vinesh, T. (2019). An urban based smart IOT farming system. In: IOP Conference Series: Earth and Environmental Science, Vol. 268. IOP Publishing, p. 012038.
 
Cagri Tolga, A., Basar, M. (2022). The assessment of a smart system in hydroponic vertical farming via fuzzy MCDM methods. Journal of Intelligent & Fuzzy Systems, 42(1), 1–12.
 
Cai, W., Wen, X., Tu, Q., (2019). Designing an intelligent greenhouse monitoring system based on the internet of things. Applied Ecology and Environmental Research, 17(4), 8449–8464.
 
Castañeda-Miranda, A., Castaño-Meneses, V.M. (2020). Internet of things for smart farming and frost intelligent control in greenhouses. Computers and Electronics in Agriculture, 176, 105614.
 
Çelikbilek, Y., Tüysüz, F. (2020a). An evaluation model for intelligent farming systems: a fuzzy logic based simulation approach. In: Intelligent and Fuzzy Techniques in Big Data Analytics and Decision Making: Proceedings of the INFUS 2019 Conference, Istanbul, Turkey, July 23–25, 2019. Springer, pp. 1324–1331.
 
Çelikbilek, Y., Tüysüz, F. (2020b). Fuzzy logic based simulation approach for the evaluation of intelligent farming systems. Journal of Multiple-Valued Logic & Soft Computing, 35(1–2), 33–59.
 
Chavas, J.-P., Nauges, C. (2020). Uncertainty, learning, and technology adoption in agriculture. Applied Economic Perspectives and Policy, 42(1), 42–53.
 
Chegini, H., Naha, R., Mahanti, A., Gong, M., Passi, K. (2023). An agriprecision decision support system for weed management in pastures. IEEE Access, 11, 92660–92675.
 
Chen, C.-T. (2000). Extensions of the TOPSIS for group decision-making under fuzzy environment. Fuzzy sets and systems, 114(1), 1–9.
 
Ching-Lai, H., Kwangsun, Y. (1981). Multiple Attribute Decision Making – Methods and Applications A State-of-the-Art Survey.
 
Chouhan, S.S., Singh, U.P., Jain, S. (2021). Automated plant leaf disease detection and classification using fuzzy based function network. Wireless Personal Communications, 121(3), 1757–1779.
 
Cruz, J.R.D., Magsumbol, J.-A.V., Dadios, E.P., Baldovino, R.G., Culibrina, F.B., Lim, L.A.G. (2017). Design of a fuzzy-based automated organic irrigation system for smart farm. In: 2017IEEE 9th International Conference on Humanoid, Nanotechnology, Information Technology, Communication and Control, Environment and Management (HNICEM). IEEE, pp. 1–6.
 
Culibrina, F.B., Dadios, E.P. (2018). Fuzzy logic implementation for power efficiency and reliable irrigation system (PERIS) of tomatoes smart farm. Journal of Telecommunication, Electronic and Computer Engineering (JTEC), 10(1–6), 65–71.
 
Damerum, A., Chapman, M.A., Taylor, G. (2020). Innovative breeding technologies in lettuce for improved post-harvest quality. Postharvest Biology and Technology, 168, 111266.
 
De, A., Singh, S.P. (2021). Analysis of fuzzy applications in the agri-supply chain: a literature review. Journal of Cleaner Production, 283, 124577.
 
Deepanayaki, M., Vidyaathulasiraman (2024). Sugarcane yield classification and prediction using light weight deep network. International Journal of Intelligent Systems and Applications in Engineering, 12(2), 207–213.
 
dela Cruz, J.R., Baldovino, R.G., Culibrina, F.B., Bandala, A.A., Dadios, E.P. (2017). Fuzzy-based decision support system for smart farm water tank monitoring and control. In: 2017 5th International Conference on Information and Communication Technology (ICoIC7). IEEE, pp. 1–4.
 
Dhumale, R., Dhumale, N., Umbrajkaar, A., Nikam, S., Mane, P., Sarwade, A. (2023). Fuzzy Internet of Things-based water irrigation system. Agricultural Engineering International: CIGR Journal, 25(2), 1–10.
 
Dhumras, H., Bajaj, R.K. (2023). Modified EDAS method for MCDM in robotic agrifarming with picture fuzzy soft Dombi aggregation operators. Soft Computing, 27(8), 5077–5098.
 
Dimatira, J.B.U., Dadios, E.P., Culibrina, F., Magsumbol, J.-A., Dela Cruz, J., Sumage, K., Tan, M.T., Gomez, M. (2016). Application of fuzzy logic in recognition of tomato fruit maturity in smart farming. In: 2016 IEEE Region 10 Conference (TENCON), pp. 2031–2035.
 
Dipali, D., Subramanian, T., Kumaran, G.S. (2023). A smart oyster mushroom cultivation using automatic fuzzy logic controller. Journal of Discrete Mathematical Sciences and Cryptography, 26(3), 601–615.
 
Ecer, F., Ögel, İ.Y., Krishankumar, R., Tirkolaee, E.B. (2023). The q-rung fuzzy LOPCOW-VIKOR model to assess the role of unmanned aerial vehicles for precision agriculture realization in the Agri-Food 4.0 era. Artificial Intelligence Review, 56, 13373–13406.
 
Elashiri, M.A., Shawky, A.T. (2018). Fuzzy Smart Greenhouses Using IoT. In: 2018 IEEE International Conference on Computational Intelligence and Computing Research (ICCIC). IEEE, pp. 1–4.
 
Erdoğan, M. (2022). Assessing farmers’ perception to Agriculture 4.0 technologies: a new interval-valued spherical fuzzy sets based approach. International Journal of Intelligent Systems, 37(2), 1751–1801.
 
Esteso, A., Alemany, M.M.E., Ortiz Bas, Á. (2017). Deterministic and uncertain methods and models for managing agri-food supply chain. Dirección y Organización (Online), 62, 41–46.
 
Fahim, M., El Mhouti, A., Boudaa, T., Jakimi, A. (2023). Modeling and implementation of a low-cost IoT-smart weather monitoring station and air quality assessment based on fuzzy inference model and MQTT protocol. Modeling Earth Systems and Environment, 9(4), 4085–4102.
 
Fakhrurroja, H., Mardhotillah, S.A., Mahendra, O., Munandar, A., Rizqyawan, M.I., Pratama, R.P. (2019). Automatic pH and humidity control system for hydroponics using fuzzy logic. In: 2019 International Conference on Computer, Control, Informatics and Its Applications (IC3INA). IEEE, pp. 156–161.
 
FarmBeats, (2024). FarmBeats: AI, Edge and IoT for Agriculture. https://www.microsoft.com/en-us/research/project/farmbeats-iot-agriculture/overview/.
 
Florea, A., Popa, D.-I., Morariu, D., Maniu, I., Berntzen, L., Fiore, U. (2023). Digital farming based on a smart and user-friendly IoT irrigation system: a conifer nursery case study. IET Cyber-Physical Systems: Theory & Applications, 9(2), 150–168.
 
Flores, E.J.C. (2023). Fuzzy-based greenhouse irrigation controller system. Southeast Asian Journal of Science and Technology, 8(1), 29–37.
 
Foley, J.A., Ramankutty, N., Brauman, K.A., Cassidy, E.S., Gerber, J.S., Johnston, M., Mueller, N.D., O’Connell, C., Ray, D.K., West, P.C., Balzer, C., Bennett, E.M., Carpenter, S.R., Hill, J., Monfreda, C., Polasky, S., Rockström, J., Sheehan, J., Siebert, S., Tilman, D., Zaks, D.P.M. (2011). Solutions for a cultivated planet. Nature, 478(7369), 337–342.
 
Gichamo, T., Gokcekus, H., Ozsahin, D.U., Gelete, G., Uzun, B. (2020). Evaluation of different natural wastewater treatment alternatives by fuzzy PROMETHEE method. Desalin Water Treat, 177, 400–407.
 
Godfray, H.C.J., Beddington, J.R., Crute, I.R., Haddad, L., Lawrence, D., Muir, J.F., Pretty, J., Robinson, S., Thomas, S.M., Toulmin, C. (2010). Food security: the challenge of feeding 9 billion people. Science, 327(5967), 812–818.
 
Gomstyn, A., Jonker, A. (2023). What is smart farming? https://www.ibm.com/topics/smart-farming.
 
Hasan, I., Srivastava, A., Khan, Z.R., Rizvi, S.A.M. (2023). A novel fuzzy inference-based decision support system for crop water optimization. Operations Research Forum, 4, 38.
 
He, Q., Zhao, H., Feng, Y., Wang, Z., Ning, Z., Luo, T. (2024). Edge computing-oriented smart agricultural supply chain mechanism with auction and fuzzy neural networks. Journal of Cloud Computing: Advances, Systems and Applications, 13(1), 66.
 
Herman, Surantha, N., (2019). Intelligent monitoring and controlling system for hydroponics precision agriculture. In: 2019 7th International Conference on Information and Communication Technology (ICoICT). IEEE. pp. 1–6.
 
Huang, Y.-P., Wang, T.-H., Basanta, H. (2020). Using fuzzy mask R-CNN model to automatically identify tomato ripeness. IEEE Access, 8, 207672–207682.
 
Irwanto, F., Hasan, U., Lays, E.S., De La Croix, N.J., Mukanyiligira, D., Sibomana, L., Ahmad, T. (2024). IoT and fuzzy logic integration for improved substrate environment management in mushroom cultivation, Smart Agricultural Technology, 7, 100427.
 
Jaiswal, S., Ballal, M.S. (2020). Fuzzy inference based irrigation controller for agricultural demand side management. Computers and Electronics in Agriculture, 175, 105537.
 
Jamil, F., Ibrahim, M., Ullah, I., Kim, S., Kahng, H.K., Kim, D.-H. (2022). Optimal smart contract for autonomous greenhouse environment based on IoT blockchain network in agriculture. Computers and Electronics in Agriculture, 192, 106573.
 
Jamroen, C., Komkum, P., Fongkerd, C., Krongpha, W. (2020). An intelligent irrigation scheduling system using low-cost wireless sensor network toward sustainable and precision agriculture. IEEE Access, 8, 172756–172769.
 
Jayakumar, V., Mohideen, A.B.K., Saeed, M.H., Alsulami, H., Hussain, A., Saeed, M. (2023). Development of complex linear diophantine fuzzy soft set in determining a suitable agri-drone for spraying fertilizers and pesticides. IEEE Access, 11, 9031–9041.
 
Jennifer Simonson, C.B. Most Secure Browser of 2022. https://www.forbes.com/advisor/business/software/secure-browsers.
 
Johnson, L.K., Bloom, J.D., Dunning, R.D., Gunter, C.C., Boyette, M.D., Creamer, N.G. (2019). Farmer harvest decisions and vegetable loss in primary production. Agricultural Systems, 176, 102672.
 
Kahneman, D., Tversky, A. (2013). Prospect theory: an analysis of decision under risk. In: Handbook of the fundamentals of financial decision making: Part I. World Scientific, pp. 99–127.
 
Kamphuis, H.J. (2009). Production and quality standards of cocoa mass, cocoa butter and cocoa powder. In: Industrial Chocolate Manufacture and Use, fourth edition.
 
Karimah, S.A., Rakhmatsyah, A., Suwastika, N.A. (2019). Smart pot implementation using fuzzy logic. Journal of Physics: Conference Series, 1192, 012058.
 
Kavitha, M., Sujaritha, M. (2022). A sensitive wavebands identification system for smart farming. Computer Systems Science & Engineering, 43(1), 245–257.
 
Keshavarz Ghorabaee, M., Zavadskas, E.K., Olfat, L., Turskis, Z. (2015). Multi-criteria inventory classification using a new method of evaluation based on distance from average solution (EDAS). Informatica, 26(3), 435–451.
 
Keswani, B., Mohapatra, A.G., Mohanty, A., Khanna, A., Rodrigues, J.J., Gupta, D., De Albuquerque, V.H.C. (2019). Adapting weather conditions based IoT enabled smart irrigation technique in precision agriculture mechanisms. Neural Computing and Applications, 31(1), 277–292.
 
Khanum, A., Alvi, A., Mehmood, R. (2017). Towards a semantically enriched computational intelligence (SECI) framework for smart farming. In: International Conference on Smart Cities, Infrastructure, Technologies and Applications. Springer, pp. 247–257.
 
Khanum, A., Alvi, A., Mehmood, R. (2018). Towards a semantically enriched computational intelligence (SECI) framework for smart farming. In: Smart Societies, Infrastructure, Technologies and Applications: First International Conference, SCITA 2017, Jeddah, Saudi Arabia, November 27–29, 2017. Springer, pp. 247–257.
 
Khudoyberdiev, A., Ahmad, S., Ullah, I., Kim, D. (2020). An optimization scheme based on fuzzy logic control for efficient energy consumption in hydroponics environment. Energies, 13(2), 289.
 
Khummanee, S., Wiangsamut, S., Sorntepa, P., Jaiboon, C. (2018). Automated smart farming for orchids with the internet of things and fuzzy logic. In: 2018 International Conference on Information Technology (InCIT). IEEE, pp. 1–6.
 
Kitchenham, B.A. (2012). Systematic review in software engineering: where we are and where we should be going. In: Proceedings of the 2nd International Workshop on Evidential Assessment of Software Technologies, pp. 1–2.
 
Kokkonis, G., Kontogiannis, S., Tomtsis, D. (2017). Fitra: a neuro-fuzzy computational algorithm approach based on an embedded water planting system. In: Proceedings of the Second International Conference on Internet of things, Data and Cloud Computing, pp. 1–8.
 
Krishnan, R.S., Julie, E.G., Robinson, Y.H., Raja, S., Kumar, R., Thong, P.H., Son, L.H., (2020). Fuzzy logic based smart irrigation system using internet of things. Journal of Cleaner Production, 252, 119902.
 
Kumar, D., Kalita, P. (2017). Reducing postharvest losses during storage of grain crops to strengthen food security in developing countries. Foods, 6(1), 8.
 
Lai, Y.-J., Liu, T.-Y., Hwang, C.-L. (1994). Topsis for MODM. European Journal of Operational Research, 76(3), 486–500.
 
Lal, P.P., Prakash, A.A., Chand, A.A., Prasad, K.A., Mehta, U., Assaf, M.H., Mani, F.S., Mamun, K.A. (2022). IoT integrated fuzzy classification analysis for detecting adulterants in cow milk. Sensing and Bio-Sensing Research, 36, 100486.
 
Lemma, Y., Kitaw, D., Gatew, G. (2014). Loss in perishable food supply chain: an optimization approach literature review. International Journal of Scientific & Engineering Research, 5(5), 302–311.
 
Liu, X., Le Bourvellec, C., Yu, J., Zhao, L., Wang, K., Tao, Y., Renard, C.M.G.C., Hu, Z. (2022). Trends and challenges on fruit and vegetable processing: Insights into sustainable, traceable, precise, healthy, intelligent, personalized and local innovative food products. Trends in Food Science & Technology, 125, 12–25.
 
Mahajan, H.B., Badarla, A. (2021). Cross-layer protocol for WSN-assisted IoT smart farming applications using nature inspired algorithm. Wireless Personal Communications, 121(4), 3125–3149.
 
Mahbub, M. (2020). A smart farming concept based on smart embedded electronics, internet of things and wireless sensor network. Internet of Things, 9, 100161.
 
Makkar, R. (2018). Application of fuzzy logic: a literature review. International Journal of Statistics and Applied Mathematics, 3, 357–359.
 
Manikandan, R., Ranganathan, G., Bindhu, V. (2023). Deep learning based IoT module for smart farming in different environmental conditions. Wireless Personal Communications, 128(3), 1715–1732.
 
Mbow, C., Rosenzweig, C.E., Barioni, L.G., Benton, T.G., Herrero, M., Krishnapillai, M., Ruane, A.C., Liwenga, E., Pradhan, P., Rivera-Ferre, M.G. (2020). Food security. Technical report, IPCC.
 
Mendes, W.R., Araújo, F.M.U., Dutta, R., Heeren, D.M. (2019). Fuzzy control system for variable rate irrigation using remote sensing. Expert Systems with Applications, 124, 13–24.
 
Mohapatra, A.G., Lenka, S.K., Keswani, B. (2019). Neural network and fuzzy logic based smart DSS model for irrigation notification and control in precision agriculture. Proceedings of the National Academy of Sciences, India Section A: Physical Sciences, 89(1), 67–76.
 
Monteleone, S., De Moraes, E.A., Maia, R.F. (2019). Analysis of the variables that affect the intention to adopt Precision Agriculture for smart water management in Agriculture 4.0 context. In: 2019 Global IoT Summit (GIoTS). IEEE, pp. 1–6.
 
Moz.com (2024). How search engine work: Crawling, Indexing and Ranking (Beginner guide to SEO). https://moz.com/beginners-guide-to-seo/how-search-engines-operate.
 
Munir, M.S., Bajwa, I.S., Cheema, S.M. (2019). An intelligent and secure smart watering system using fuzzy logic and blockchain. Computers & Electrical Engineering, 77, 109–119.
 
Nagothu, S.K., Anitha, G. (2023). Fuzzy based irrigation control system for Indian subcontinent. Journal of Scientific and Industrial Research (JSIR), 82, 355–362.
 
Nandi, P.K., Mahmood, M.A. (2021). An automated irrigation and fertilization management system using fuzzy logic. In: 2021 5th International Conference on Electrical Information and Communication Technology (EICT). IEEE, pp. 1–5.
 
Neugebauer, M., Akdeniz, C., Demir, V., Yurdem, H. (2023). Fuzzy logic control for watering system. Scientific Reports, 13(1), 18485.
 
Okoh, S.A., Salihu, B., Onwuka, E., Suleiman, Z. (2023). Development of IoT cloud-based platform for smart farming in the sub-saharan Africa with implementation of smart-irrigation as test-case. (2023). International Journal of Information Technology and Computer Science, 15(2), pp. 1–14.
 
Padma, T., Shantharajah, S., Ramadoss, P. (2022). Hybrid fuzzy AHP and fuzzy TOPSIS decision model for aquaculture species selection. International Journal of Information Technology & Decision Making, 21(3), 999–1030.
 
Paltrinieri, G., Staff, F. (2014). Handling of Fresh Fruits, Vegetables and Root Crops: A Training Manual for Grenada. Food and Agriculture Organization of the United Nations, Rome, Italy.
 
Pandiyaraju, V., Logambigai, R., Ganapathy, S., Kannan, A. (2020). An energy efficient routing algorithm for WSNs using intelligent fuzzy rules in precision agriculture. Wireless Personal Communications, 112(1), 243–259.
 
Perianes-Rodriguez, A., Waltman, L., van Eck, N.J. (2016). Constructing bibliometric networks: a comparison between full and fractional counting. Journal of Informetrics, 10(4), 1178–1195.
 
Pezol, N.S., Adnan, R., Tajjudin, M. (2020). Design of an internet of things (iot) based smart irrigation and fertilization system using fuzzy logic for chili plant. In: 2020 IEEE International Conference on Automatic Control and Intelligent Systems (I2CACIS). IEEE, pp. 69–73.
 
Pierre, N.J., Sefu, B., Venuste, S., D’Amour, M.J., Daniel, K., Pierre, N.J., Bosco, K.J., Felix, H. (2023). Smart crops irrigation system with low energy consumption. Journal of Appropriate Technology, 9(1), 9–19.
 
Pitowarno, E., Leksono, B.O., Utomo, E.B., Muamar, M. (2023). Design and development smart aquaculture in freshwater pond based on fuzzy logic. BIO Web of Conferences 80, 06001.
 
Prasad, R., Tiwari, R., Srivastava, A.K. (2023a). Internet of things-based fuzzy logic controller for smart soil health monitoring: a case study of semi-arid regions of India. Engineering Proceedings, 58(1), 85.
 
Prasad, R., Tiwari, R., Srivastava, A.K. (2023b). IoT-Based fuzzy logic controller for smart soil health monitoring: a case study of semi-arid region of India. In: 10th International Electronic Conference on Sensors and Applications (ECSA-10), 15, p. 30.
 
Puri, V., Chandramouli, M., Van Le, C., Hoa, T.H. (2020). Internet of things and fuzzy logic based hybrid approach for the prediction of smart farming system. In: 2020 International Conference on Computer Science, Engineering and Applications (ICCSEA). IEEE, pp. 1–5.
 
Qiao, Y., Luo, J., Li, F., Yin, L., Sun, P. (2023). An online resource management for obscured sensors in agriculture using UAV. ACM Transactions on Sensor Networks.
 
Ramli, M.I., Ariffin, M.A.M., Zainol, Z., Amin, M.N.M., Hirawan, D., Sumitra, I.D., Jamil, N. (2023). Design of a smart portable farming kit for indoor cultivation using the raspberry Pi platform. Pertanika Journal of Science & Technology, 31(4), 1731–1754.
 
Remya, S. (2022). An adaptive neuro-fuzzy inference system to monitor and manage the soil quality to improve sustainable farming in agriculture. Soft Computing, 26, 13119–13132.
 
Ribarics, P. (2016). Big Data and its impact on agriculture. Ecocycles, 2(1), 33–34.
 
Robles Algarín, C., Callejas Cabarcas, J., Polo Llanos, A. (2017). Low-cost fuzzy logic control for greenhouse environments with web monitoring. Electronics, 6(4), 71.
 
Saaty, T.L. (1980). The Analytic Hierarchy Process. McGraw Hill, New York, USA.
 
Saggi, M.K., Jain, S. (2020). Application of fuzzy-genetic and regularization random forest (FG-RRF): estimation of crop evapotranspiration (ETc) for maize and wheat crops. Agricultural Water Management, 229, 105907.
 
Saltini, R., Akkerman, R., Frosch, S. (2013). Optimizing chocolate production through traceability: a review of the influence of farming practices on cocoa bean quality. Food Control, 29(1), 167–187.
 
Sannakki, S.S., Rajpurohit, V.S. (2011). A survey on applications of fuzzy logic in agriculture. Journal of Computer Applications, 4(1), 8–11.
 
Sharma, R.P., Dharavath, R., Edla, D.R. (2023). IoFT-FIS: internet of farm things based prediction for crop pest infestation using optimized fuzzy inference system. Internet of Things, 21, 100658.
 
Stojkoska, B.L.R., Trivodaliev, K.V. (2017). A review of Internet of Things for smart home: challenges and solutions. Journal of Cleaner Production, 140, 1454–1464.
 
Sundmaeker, H., Verdouw, C., Wolfert, J., Freire, L.P. (2016). Internet of food and farm 2020. In: Digitising the Industry, Vol. 49. River Publishers, pp. 129–150.
 
Tang, S., Zhu, Q., Zhou, X., Liu, S., Wu, M. (2002). A conception of digital agriculture. In: IEEE International Geoscience and Remote Sensing Symposium, Vol. 5. IEEE, pp. 3026–3028.
 
Taşkıner, T., Bilgen, B. (2021). Optimization models for harvest and production planning in agri-food supply chain: a systematic review. Logistics, 5(3), 52.
 
The free encyclopedia (2024). Search Engine. https://en.wikipedia.org/wiki/Search_engine.
 
Tobias, R.R., Mital, M.E., Concepcion, R., Lauguico, S., Alejandrino, J., Montante, S.J., Vicerra, R.R., Bandala, A., Sybingco, E., Dadios, E. (2020). Hybrid tree-fuzzy logic for aquaponic lettuce growth stage classification based on canopy texture descriptors. In: 2020 IEEE Region 10 Conference (TENCON). IEEE, pp. 1075–1080.
 
Tomasiello, S., Alijani, Z. (2021). Fuzzy-based approaches for agri-food supply chains: a mini-review. Soft Computing, 25(11), 7479–7492.
 
Ulloa, R., Makhortykh, M., Urman, A. (2022). Scaling up search engine audits: practical insights for algorithm auditing. Journal of Information Science, 50(2), 404–419.
 
Umam, F., Dafid, A., Cahyani, A.D. (2023). Implementation of fuzzy logic control method on chilli cultivation Technology based smart drip irrigation system. Jurnal Ilmiah Teknik Elektro Komputer dan Informatika, 9(1), 132–141.
 
United Nations (2024). Transforming our world: the 2030 Agenda for Sustainable Development. https://sdgs.un.org/2030agenda.
 
Van Eck, N.J., Waltman, L. (2017). Citation-based clustering of publications using CitNetExplorer and VOSviewer. Scientometrics, 111(2), 1053–1070.
 
Van Laarhoven, P.J., Pedrycz, W. (1983). A fuzzy extension of Saaty’s priority theory. Fuzzy sets and Systems, 11(1–3), 229–241.
 
Viani, F., Bertolli, M., Salucci, M., Polo, A. (2017). Low-cost wireless monitoring and decision support for water saving in agriculture. IEEE Sensors Journal, 17(13), 4299–4309.
 
Walter, A., Finger, R., Huber, R., Buchmann, N. (2017a). Opinion: smart farming is key to developing sustainable agriculture. Proceedings of the National Academy of Sciences, 114(24), 6148–6150.
 
Walter, A., Finger, R., Huber, R., Buchmann, N. (2017b). Smart farming is key to developing sustainable agriculture. Proceedings of the National Academy of Sciences, 114(24), 6148–6150.
 
Waltman, L., van Eck, N.J., Noyons, E.C.M. (2010). A unified approach to mapping and clustering of bibliometric networks. Journal of Informetrics, 4(4), 629–635.
 
Wiangsamut, S., Chomphuwiset, P., Khummanee, S. (2019). Chatting with plants (orchids) in automated smart farming using IoT, fuzzy logic and chatbot. Advances in Science, Technology and Engineering Systems Journal, 4(5), 163–173.
 
Widura, A., Hadiatna, F., Anugerah, D. (2023). Fuzzy-based smart farming and consumed energy comparison using internet of things. IEEE Access, 11.
 
Yadav, R., Daniel, A. (2018). Fuzzy based smart farming using wireless sensor network. In: 2018 5th IEEE Uttar Pradesh Section International Conference on Electrical, Electronics and Computer Engineering (UPCON). IEEE, pp. 1–6.
 
Zaguia, A. (2023). Smart greenhouse management system with cloud-based platform and IoT sensors. Spatial Information Research, 31(5), 559–571.

Biographies

Widayat Irawan Widi
https://orcid.org/0000-0002-3194-5512
irawan.widi.widayat@ieee.org

I.W. Widayat is doctor student at the Department of Computer Science and Systems Engineering. Kyushu Institute of Technology, Japan. He received his master’s degree in multimedia intelligent network from Institute of Technology Sepuluh Nopember Surabaya, in 2011. His research interests include fuzzy cognitive maps, blockchain technology, distributed system, cloud computing, smart city, network security, multi agent system. Since 2003, he has been a computer network and security lecturer and researcher at the Department of Information and Computer Engineering Politeknik Negeri Ujung Pandang, Indonesia.

Arsyad Andi Arniaty
andi.arniaty@uai.ac.id

A.A. Arsyad is an associate lecturer at the Faculty of Science and Technology, Informatics Department, University of Al Azhar Indonesia. She received her PhD in computer science and systems engineering from Kyushu Institute of Technology, Japan, in 2022. Her research interests include smart documentation systems, smart information systems, blockchain, and the internet of things. She has also been a member of the IEEE (Institute of Electrical and Electronics Engineers) since 2021.

Mantau Aprinaldi Jasa
mantau.aprinaldi@ieee.org

A.J. Mantau is a researcher and lecturer in the field of computer science. He earned his PhD in computer science and systems engineering from Kyushu Institute of Technology, Japan, in 2024. Currently, he is a lecturer at the Faculty of Computer Science, University of Indonesia. His research interests include machine learning, computer vision, robotics, data mining, swarm intelligence, and swarm robotics. He is also an active member of the Institute of Electrical and Electronics Engineers (IEEE).

Adhitya Yudhi
yudhiadhitya@gmail.com

Y. Adhitya is a researcher at the Department of Informatics Engineering, Faculty of Computer Science, Al Asyariah Mandar University in Indonesia. He received his PhD (Doctor of Philosophy in Engineering) from the Department of Computer Science and Systems Engineering (CSSE), Graduate School of Computer Science and Systems Engineering, Kyushu Institute of Technology, in 2023. His research interests are focused on implementing machine learning models within a smart farming and IoT communication schemes scenario for practical implementation, increased precision, solving real-world problems, improving farming operating efficiency, and providing robust solutions.

Köppen Mario
mkoeppen@ieee.org

M. Köppen is a research professor at the Graduate School of Creative Informatics of the Kyushu Institute of Technology, received his master’s degree in solid-state physics at Humboldt-University of Berlin in 1991. Afterwards, he worked as a scientific assistant at the Central Institute for Cybernetics and Information Processing in Berlin. From 1992 to 2006, he worked with the Fraunhofer Institute for Production Systems and Design Technology and achieved a doctoral degree at the Technical University Berlin. He has published more than 150 peer-reviewed papers in conference proceedings, journals, and books and played an active role in various conferences, incl. the WSC online conference series on Soft Computing in Industrial Applications, and the HIS conference series on Hybrid Intelligent Systems. He is a founding member of the World Federation of Soft Computing, and since 2016, editor-in-chief of the journal Applied Soft Computing. In 2006, he became a JSPS fellow at the Kyushu Institute of Technology in Japan, a professor at the Network Design and Research Center (NDRC) in 2008, and a professor at the Graduate School of Creative Informatics of the Kyushu Institute of Technology in 2013.


Full article Related articles Cited by PDF XML
Full article Related articles Cited by PDF XML

Copyright
© 2024 Vilnius University
by logo by logo
Open access article under the CC BY license.

Keywords
fuzzy logic Smart Farming precision agriculture agri-food chain Preferred Reporting Items for Systematic Reviews (PRISMA)

Metrics
since January 2020
474

Article info
views

406

Full article
views

177

PDF
downloads

30

XML
downloads

Export citation

Copy and paste formatted citation
Placeholder

Download citation in file


Share


RSS

INFORMATICA

  • Online ISSN: 1822-8844
  • Print ISSN: 0868-4952
  • Copyright © 2023 Vilnius University

About

  • About journal

For contributors

  • OA Policy
  • Submit your article
  • Instructions for Referees
    •  

    •  

Contact us

  • Institute of Data Science and Digital Technologies
  • Vilnius University

    Akademijos St. 4

    08412 Vilnius, Lithuania

    Phone: (+370 5) 2109 338

    E-mail: informatica@mii.vu.lt

    https://informatica.vu.lt/journal/INFORMATICA
Powered by PubliMill  •  Privacy policy