JOURNAL BROWSE
Search
Advanced SearchSearch Tips
A Study on the Blue-green algae Monitoring Applications Design using Raspberry Pi
facebook(new window)  Pirnt(new window) E-mail(new window) Excel Download
 Title & Authors
A Study on the Blue-green algae Monitoring Applications Design using Raspberry Pi
KIM, Kyung-Min; KIM, Tae-Hyeon;
  PDF(new window)
 Abstract
In this paper, the blue-green algae monitoring program of applying IoT(Internet of things) technologies is designed and implemented that can check out the status of the river`s water quality in real time. The proposed system is to extract the image data from the camera of raspberry pi by an wireless network, and it is analyzed through the HSV color model. We measure the temperature using a DS18B20 1-wire temperature sensor. The extracted information of image data and temperature is then analyzed in C and Python programs for use with Raspberry Pi. The XML data in PHP program is made from the analyzed information and provides Web services. It also allows to refer the XML data using mobile devices.
 Keywords
Raspberry Pi;Internet of things (IoT);PhoneGap;Blue-green algae;
 Language
Korean
 Cited by
1.
비콘을 활용한 통학 시스템 설계,김경민;

한국정보통신학회논문지, 2016. vol.20. 10, pp.1941-1948 crossref(new window)
1.
Design of School Commuting System using Beacon, Journal of the Korea Institute of Information and Communication Engineering, 2016, 20, 10, 1941  crossref(new windwow)
 References
1.
Adafruit's Raspberry Pi: https://learn.adafruit.com/downloads/pdf/adafruits-rasp berry-pi-lesson-11-ds18b20-temperature-sensing.pdf.

2.
Altir Christian D. Bonganay.Josef C. Magno, Adrian G. Marcellna.John Marvin E. Morante & Noel G. Perez(2014). Automated Electric Meter Reading and Monitoring System using ZigBee-Integrated Raspberry Pi Single Board Computer via Modbus, Electrical, Electronics and Computer Science (SCEECS), 1-6.

3.
Han, Sanghoon & Cho, Hyungje(2002). HSV Color Model Based Front Vehicle Extraction and Lane Detection using Shadow Information,Journal of Korea Multimedia Society, 5(2), 176-190.

4.
Ju, daeyoung & Kim, jonggi(2014). "Creative convergence activation plan for Internet ofthings(IoT) in ultra-connection period", KIET ISSUE Paper 2014-342.

5.
Jung, Woojin.Oh, Janghoon & Yoon, Dongweon (2012). Design and Implementation of Hybrid Mobile App Framework,KIICE, 16(9), 1990-1996.

6.
Kim, Gwanjung & Heo, Jaedu(2014). IoT ecosystem-based monitoring and forecasting technology trends, IITP Week Technology Trends No.1668, 9-20

7.
Kim, HyunJi.Cho, JaeYoung & Ko, SungJea(2013). Re-coloring Methods using the HSV Color Space for people with the Red-green Color Vision Deficiency, Journal of The Institute of Electronics Engineers of Korea 50(3), 91-101.

8.
Kim, HyunSik & Park, yongseok & Im injong(2015). Internet of Things platform evolution and aftermarket business methods activated,The Magazine of the IEIE, 42(3), 40-48.

9.
Ministry of Environment 11-1480000-001363-10 (2014): https://www.konetic.or.kr/dataroom/dataroom_view.as p?1=1&gotopage=5&unique_num=8056&tblcode=EU N_ENV_MORGUE.

10.
Park, MyungKyu.Shim, SunHee & Kim, HaKyun (2011). The influence of cyber education factor in ordinary learning system on official's cyber education preference, Journal of Fishier and Marin Educational Research 23(1), 116-125.

11.
PhoneGap site: http://phonegap.com/

12.
Simon Monk(2013). Programming the Raspberry Pi: Getting Started with Python, McGraw-Hill.

13.
Water Infomation System: http://water.nier.go.kr/front/algaeInfo/algaeInfo01.jsp

14.
You, KyungA & Lee, SuHyung(2012). Occurrence and Management of the Green Tide caused by Cyanobacterial Bloom, Korean Society of Environmental Health and Toxicology Symposium, 71-74.