Browse > Article
http://dx.doi.org/10.17661/jkiiect.2018.11.6.764

A Study on the Design of Data Collection System for Growing Environment of Crops  

Lee, Ki-Young (Department of Bio-medical, Catholic Kwandong University)
Jeong, Jin-Hyoung (Department of Bio-medical, Catholic Kwandong University)
Kim, Su-Hwan (Department of Bio-medical, Catholic Kwandong University)
Lim, Chang-Mok (IREIS Inc.)
Lee, Sang-Sik (Department of Bio-medical, Catholic Kwandong University)
Publication Information
The Journal of Korea Institute of Information, Electronics, and Communication Technology / v.11, no.6, 2018 , pp. 764-771 More about this Journal
Abstract
Domestic and foreign agricultural environments nowadays are undergoing various changes such as aging of agricultural population, increase of earned population, rapid climate change, diversification of agricultural product distribution structure, depletion of water resources and limited cultivation area. In order to respond to various environmental changes in recent agriculture, practical use of Smart Greenhouse to easily record, store and manage crop production information such as crop growing information, growth environment and agriculture work log, Interest is growing. In this paper, we propose a system that collects the situation information necessary for growth such as temperature, humidity, solar radiation, CO2 concentration, and monitor the collected data, which can be measured in the rhizosphere of the crop. We have developed a system that collects data such as temperature, humidity, radiation, and growth environment data, which are measured by data obtained from the rhizosphere measuring section of a growing crop and measured by a sensor, and transmitted to a wireless communication gateway of 400 MHz. We developed the integrated SW that can monitor the rhythm environment data and visualize the data by using cloud based data. We can monitor by graph format and data format for visualization of data. The existing smart farm managed crops and facilities using only the data within the farm, and this study suggested the most efficient growth environment by collecting and analyzing the weather and growth environment of the farms nationwide.
Keywords
Cloud system; Crop data; Monitoring; Smart farms; Wireless communications; Agricultural environments;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
1 Guerrini, F. 2015. The future of agriculture? smart farming. Forbes, http://www.forbes.com/sites/federicoguerrini/2015/18/the-future-of-agriculture-smart-farming/#5708f01a337c.
2 Research-platform Design for the Korean Smart Greenhouse Based on Cloud Computing, Jeong-Hyun Baek, Jeong-Wook Heo, Hyun-Hwan Kim, Youngsin Hong, and Jae-Su Lee, Protected Horticulture and Plant Factory, Vol. 27, No. 1:27-33, January (2018)   DOI
3 Gartner. 2017. Artificial intelligence, machine learning, and smart things promise an intelligent future. www.gartner.com/smarterwithgartner/gartners-top-10-technologytrends-2017/.
4 Kapnias, D., P. Ilias. 2016. Automated classification of land cover for the needs of CAP using Sentinel data. 22nd CPA/IACS conference, 24-25 Nov. 2016, Lisbon(Portugal).
5 Analysis of Research Trend and Core Technologies Based on ICT to Materialize Smart-farm, Uk-hyeon Yeo, In-bok Lee*, Kyeong-seok Kwon, Taehwan Ha, Se-jun Park, Rack-woo Kim, and Sang-yeon Lee, Protected Horticulture and Plant Factory, Vol. 25, No. 1:30-41, March (2016)   DOI
6 Lim, S.W. 2005. Fertilizers. Ilsinsa, Seoul, Korea.,
7 Hameed, I., E. I. El-Madbouly, and M. I. Abdo. 2017. Reconfigurable adaptive fuzzy fault-hiding control for greenhouse climate control system. International Journal of Automation and Control, 11(2):164-187.   DOI
8 Blackmore, S., 2000. Developing the principles of precision farming. In ICETS 2000: Proceedings of the ICETS 2000 (China Agricultural University, Beijing, China). p. 11-13.
9 Baek, J.H., and H.L. Lee. 2014. Design and implementation of crop-environmental control cloud systems based on growth patterns. The Korean Institute of Information Scientists and Engineers, Database Society Journal, 30(2):57-66 (in Korean).
10 IRS Global Research. 2016. IoT-based smart agriculture and smart farm market forecasts and core technology development trends. http://www.irsglobal.com/.
11 Li, G., W. Zhang, and Y. Zhang. 2014. A design of the IOT gateway for agricultural greenhouse. Sensors & Transducers, 172(6):75.
12 Atole. A., A. Asmar, A. Biradar, N. Kothawade, S. Sarod and R. G. Khope. 2017. IoT based smart farming system International Journal of Emerging Technologies and Innovative Research(www.jetir.org), April 2017, 4(4):29-31.
13 Lee, J.S., Y.G. Hong, G.H. Kim, D.H. Lee, S.R. Han, and D.H. Im. 2016. A study on development of cloud system for the smart greenhouse automatic control. The Korean Institute of Communications and Information Sciences, 19 Nov. 2016 Fall Conference. 61:559-560 (in Korean).
14 Lee Se-yong, 2016, "Cloud-based smart farm technology," The Journal of The Korean Institute of Communication Sciences, Vol. 34, No. 1, pp. 51-57.
15 Yo-Hoon Hong, Seung-June Song, Kwang-Mun Jang, Jungkyu Rho, 'Smart Factory Platform based on Multi-Touch and Image Recognition Technologies', The Journal of The Institute of Internet, Broadcasting and Communication VOL. 18 No. 1, 2018