그림 1. 생장환경 Data 수집 시스템 구성도 Fig. 1. Growth environment Data collection system diagram
그림 2. 메인 및 농장정보 편집 화면 Fig. 2. Main and farm information edit screen
그림 3. 모바일 앱 화면 Fig. 3. Mobile app screen
그림 5. 전송부 블록도 FIg. 5. Transmission block diagram
그림 4. 측정부 기구 도면 Fig. 4. Measuring mechanism drawing
그림 6. 통계-일일 그래프 표시 Fig 6. Statistics - daily graph
그림 7. 실제 구동 화면 Fig. 7. Actual driving screen
그림 8. 각 데이터 차트 및 실제 데이터 리스트 Fig. 8. Each data chart and actual data list
표 1. 한국과 네덜란드 간의 작물 생산성 지수. Table 1. Index of crop productivity between Korea and Netherlands.
표 2. 근권 측정부 측정 항목 및 주요 사항 Table 2. Environment of Crops metrics and key points
표 3. 근권 데이터 전송부 생장환경 측정 항목 및 주요 사항 Table 3. Growing Environment of Crops metrics and key points
표 4. 게이트웨이 주요 사양 Table 4. Gateway Specifications
참고문헌
- 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.
- 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) https://doi.org/10.12791/KSBEC.2018.27.1.27
- Gartner. 2017. Artificial intelligence, machine learning, and smart things promise an intelligent future. www.gartner.com/smarterwithgartner/gartners-top-10-technologytrends-2017/.
- 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).
- 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) https://doi.org/10.12791/KSBEC.2016.25.1.30
- Lim, S.W. 2005. Fertilizers. Ilsinsa, Seoul, Korea.,
- 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. https://doi.org/10.1504/IJAAC.2017.083297
- 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.
- IRS Global Research. 2016. IoT-based smart agriculture and smart farm market forecasts and core technology development trends. http://www.irsglobal.com/.
- 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).
- Li, G., W. Zhang, and Y. Zhang. 2014. A design of the IOT gateway for agricultural greenhouse. Sensors & Transducers, 172(6):75.
- 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.
- 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).
- 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.
- 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