•  
  •  
 

Abstract

Today, smart technologies are rapidly entering various areas of our lives. The role of intelligent technologies in the effective organization of control and management processes in the field of agriculture is incomparable. At the same time, intelligently controlled greenhouses are one of the main elements of agriculture. The article analyzes the importance of smart farming technologies associated with intelligent observing and control systems for greenhouses. These technologies include aspects such as the Internet of Things, artificial intelligence, and intelligent control. Based on the results of the analysis, prospects for the development of a monitoring and control system for a smart greenhouse are proposed to support future research.

First Page

05

Last Page

11

References

  1. Tang, H. (2020). Smart agriculture empower agriculture's modern and high-quality development. Agricultural Machinery Technology Promotion, 2020 (6), 4-5.
  2. Luo, X., Liao, J., Hu, L., Zhou, Zh., Zhang, Zh., Zang, Y., Wang, P., He, J. (2021). Research progress of intelligent agricultural machinery and practice of unmanned farm in China. Journal of South China Agricultural University, 42(06). 8-17+5.
  3. Zhao, Ch. (2019). Study on the development of smart agriculture and strategic goals. Smart agriculture, 1(1). 1-7.
  4. Ji, Ch. (2014). Vision Information Acquisition for Fruit Harvesting Robot and Development of Robot Prototype System. China Agricultural University.
  5. Zhang, Zh. (2022). Research on the Agricultural Environment Big Data Processing System for the Internet of Things. Zhejiang Ocean University. Doi: 10.27747/d.cnki.gzjhy.2022.000247.
  6. Liu, Ch., Jing, X., Dong, G. (2011). Brief talk about the technical characteristics of the Internet of Things and its widespread application. Scientific Consultation (Technology Management), 2011(9). 86.
  7. Li, N., Jiang, X., Chen, Y., etc. (2021). Agricultural Internet of Things Engineering Technology Intelligence Management System. Agriculture and Technology, 41(10). 64-66.
  8. Sun, M. (2022). Greenhouse technology and its intelligent development prospects. Agricultural machinery use and maintenance. 2022 (02), 108-110. Doi: 10.14031/ J.CNKI.NJWX.2022.02.035.
  9. Luo, J., Liu, X., Chen, Zh., et al. (2018). Design of Intelligent Agricultural Irrigation System Based on ZigBee IoT Technology. Computer knowledge and technology, 2018 (30), 186-189.
  10. Yao, M., Luo, Y. (2021). Design and implementation of intelligent greenhouse for agricultural Internet of Things based on LORA technology. Wireless interconnection technology, 18 (24), 50-53.
  11. Wu, X., Wang, Y., Ju, X., etc. (2021). Intelligent greenhouse system research and design based on LORA and cloud platform Internet of things new technology. China. CN113519318A. 2021.10.22:1.
  12. Luo, J., Liu, X., Chen, Zh., et al. (2018). Design of Intelligent Agricultural Irrigation System Based on ZigBee IoT Technology. Computer knowledge and technology, 2018(30), 186-189.
  13. Liu, F., Xu, L., Ma, L. (2021). Design of distributed agricultural environment monitoring system based on ZigBee. Sensor and micro system, 40(03), 90-92. Doi: 10.13873/J.1000-9787 (202111 (2021111 ) 03-0090-03.
  14. Zhao, J. (2020). Design and Application of Farmland Automatic Irrigation System Based on Wifi. China University of Mining and Technology, 2020. Doi: 10.27623/ d. CNKI. Gzkyu. 2020.000989.
  15. Jiang, Sh., Li, H., Wu, R., Li, D. (2022). Research on smart agriculture systems based on ZigBee and NB-IOT. Electronic test, 36 (11), 11-15. Doi: 10.16520/J.CNKI. 1000-8519.2022.11.009.
  16. Sun, Zh. (2021). Research on Monitoring System and Key Technologies of Rice Growth Environment Based on Internet of Things. Jilin University, 2021. Doi: 10.27162/d.cnki.gjlin.2021.000414.
  17. Valente, F.J., Morijo, J.P., Vivaldini, K.C.T., et al. (2019). Fog-Based Data Fusion for International Conference on Network and Service Management (CNSM).
  18. Viani, F., Bertolli, M., Salucci, M., et al. (2017). Low-Cost Wireless Monitoring and Decision Support for Water Saving in Agriculture. IEEE Sensors Journal, 1.
  19. Liu, Q., Zhang, X., Ding, Y. etc. (2013). Agriculture Iot-Oriented Multi-Environment Information Fusion for Monitoring and Recognition. Zhejiang Agricultural Science, 339 (12), 1694-1696.
  20. [20] Huang, X. (2022). A RFID-based Design of Soil Moisture and Salinity Sensor of Precision Agriculture. Journal of Shunde Vocational and Technical College, 20 (04), 38-41.
  21. Ma, Sh., Li, X., Zhang, X. (2018). Design of Agricultural Seed Quality Tracking System Based on RFID. Anhui Agricultural Science, 46 (15), 180-184+191. Doi: 10.13989/J.CNKI.0517-6611.2018.15.056.
  22. Ning, W., Douglas, B., Tyler, S. RFID-BASED PLANT Tracking and Data Management System for a Greenhouse. UNITED States. US104841b2.10.23: 1.
  23. Yin, L. (2014). Research on the Key Technology of Acquiring and Identifying Information from the Internet of Things in Agriculture. Harbin: Harbin Institute of Technology.
  24. Yao, Y., Liao, G., Zhao, X., et al. (2013). Research Progress of Crop Growth Environment Information Perception Techniques. Crop research, 27(1), 58-63.
  25. Liu, F., Chen, J., Mu, J., Wu, P., Han, W. (2013). Detection of soil temperature and its relationship with moisture content. Agricultural research in dry areas, 31 (03), 95-99+117.
  26. Xiao, K.H., Xiao, D.Q., Luo, X.W. (2010). Smart water-saving irrigation system in precision agriculture based on wire-less sensor network. Transactions of the CSAE, 26(11), 170-175.
  27. Sun, J., Li, M., Tang, N., et al. (2007). Spectral Characteristics and Their Correlation with Soil Parameters of Black Soil in Northeast China. Spectral and spectral analysis, 27 (8), 1502-1505.
  28. Wang, Zh., Wang, Y., Ge, X., Gan, Zh., Wang, Y., Deng, D. (2021). Design of Soil Nutrient Detection and Remote Monitoring System Based on GPRS. Shanxi electronic technology, 2021(02), 48-50.
  29. Dong, D.M., Zhao, C.J., Zheng, W.G. et al. (2013). Spectral characterization of nitrogen in farmland soil by laser-in-duced breakdown spectroscopy. Spectroscopy Letters, 46(6), 421-426.
  30. Pan, B. (2022). Design of Growth Information Detection System for Wheat Plot Breeding Based on Vision. Anhui Agricultural University. DOI: 10.26919/d.cNKI.Gannu.2022.000646.
  31. Du, M., Yang, T., Ma, Y., Zhang, J., Wu, L. (2022). Detection of chlorophyll content in tomato leaves based on NIR hyperspectral imaging technology. Jiangsu Agricultural Science, 50(20), 48-55. doi: 10.158899 /j.issn.1002-1302.2022.20.007.
  32. Tang, D., Yu, Y., Liu, B. (2020). Evaluation System of the Crop Lodging Area Based on the Image Edge Detection. Agricultural mechanization research, 42(05), 88-93. doi: 10.13427/j.cnki.njyi .2020.05.014.
  33. Jiang, R., Wang, P., Xu, Y. et al. (2020). Assessing the opera-tion parameters of a low-altitude UAV for the collec-tion of NDVI values over a paddy rice field. Remote Sensing, 12(11), 1-16.
  34. Jiang, R., Arturo, S.A., Kati, L. et al. (2021). UAV-based partially sampling system for rapid NDVI mapping in the evaluation of rice nitrogen use efficiency. Journal of Cleaner Production, 289, 1-16.
  35. Zhou, X., Zhou, L., Yilita, L.Y. (2023). Automatic detection method of forest diseases and insect pests based on spectral images. Applied optics, 44 (02), 420-426.
  36. Zhou, Zh (2022). Detection of Tomato Diseases and Insects Based on THz-NIR Hyperspectral Fusion. Jiangsu University. Doi: 10.27170/d.cnki.gjsuu.2022.001541.
  37. Akila, P.B. and M. (2023). IoT-based pest detection and classification using deep features with enhanced deep learning strategies. Engineering Applications of Artificial Intelligence, 121. Elsevier BV, p. 105985. doi: 10.1016/j.engappai.2023.105985.
  38. Anwar, Z., Masood, S. (2023). Exploring Deep Ensemble Model for Insect and Pest Detection from Images. Procedia Computer Science, 218, 2328-2337, 2023. doi: 10.1016/j.procs.2023.01.208.
  39. Wu, Zh., Wei, Zh., Chen, Y., Yin, Zh., Li, B., Ma, B. (2017). A crop disease and insect pest detection method. China. CN107067043B, 2017.08.18:1.
  40. Sun, Y. (2018). Study of Pest Information for Tea Plant Based on Electronic Nose. Zhejiang University.
  41. Raigar, R.K., Upadhyay, R., Mishra, H.N. (2017). Storage quality assessment of shelled peanuts using non-destructive electronic nose combined with fuzzy logic approach. Postharvest Biology and Technology, 132, 43-50. doi: 10.1016/j.postharvbio.2017.05.016.
  42. Liu, Ch., Lin, H., Li, Y., Gongliang, M.Zh. (2020). Analysis on Status and Development Trend of Intelligent Control Technology for Agricultural Equipment. Journal of Agricultural Machinery, 51(01), 1-18.
  43. Li, B. (2022). A smart agricultural greenhouse remote monitoring system based on the Internet of Things technology. China Science and Technology Information, 2022(15), 95-96.
  44. Huixingyan. (2022). Application and analysis of smart agriculture in vegetable greenhouses. China Agricultural Machinery Supervision, 2022(07), 26-28.
  45. Li, G.Ch. (2022). Multi-node Distributed Design of Intelligent Agricultural Greenhouse Monitoring System. Software, 43(05), 56-60.
  46. Lee, Y.–J. (2021). Precision control system of smart greenhouse. Korea. KR102264227B1, 2021.06.11:1.
  47. Wu, Y., Zheng, Q., Song, X., Liu, Ch., Li, L., Huang, L., Wang, Zh. (2022). Research on 3D GIS Intelligent Management Platform of Small Reservoir Oriented to Agricultural Irrigation. Anhui Agricultural Science, 50(06), 215-221.
  48. Montoya, F.G. et al. (2013). A monitoring system for intensive agriculture based on mesh networks and the android system. Computers and Electronics in Agriculture, 99. 14-20. doi:10.1016/j.compag.2013.08.028.
  49. Liu, J. (2016). Developing Cloud-based Mobile Software Platform for Smart Farming. Nanjing Agricultural University, 2016.
  50. Han, R. (2020). Big Data-Based AgriculturTural Greenhouse Environment Control System. CHINA.CN11268621A. 2020.12.11: 1.1.

Share

COinS
 
 

To view the content in your browser, please download Adobe Reader or, alternately,
you may Download the file to your hard drive.

NOTE: The latest versions of Adobe Reader do not support viewing PDF files within Firefox on Mac OS and if you are using a modern (Intel) Mac, there is no official plugin for viewing PDF files within the browser window.