Browse > Article
http://dx.doi.org/10.3745/KTSDE.2022.11.9.355

Web-Based Data Analysis Service for Smart Farms  

Jung, Jimin (전북대학교 소프트웨어공학과)
Lee, Jihyun (전북대학교 소프트웨어공학과)
Noh, Hyemin (전북대학교 소프트웨어공학과)
Publication Information
KIPS Transactions on Software and Data Engineering / v.11, no.9, 2022 , pp. 355-362 More about this Journal
Abstract
Smart Farm, which combines information and communication technologies with agriculture is moving from simple monitoring of the growth environment toward discovering the optimal environment for crop growth and in the form of self-regulating agriculture. To this end, it is important to collect related data, but it is more important for farmers with cultivation know-how to analyze the collected data from various perspectives and derive useful information for regulating the crop growth environment. In this study, we developed a web service that allows farmers who want to obtain necessary information with data related to crop growth to easily analyze data. Web-based data analysis serivice developed uses R language for data analysis and Express web application framework for Node.js. As a result of applying the developed data analysis service together with the growth environment monitoring system in operation, we could perform data analysis what we want just by uploading a CSV file or by entering raw data directly. We confirmed that a service provider could provid various data analysis services easily and could add a new data analysis service by newly adding R script.
Keywords
Precision Agriculture; Smart Farm; Growth Data Analysis; Data Analysis-as-a-Web-Service;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Y. K. Yim, "Precision agriculture: Agricultural management system for minimizing environmental pollution while maximizing crop productivity," Innovative Growth Item Report, 2021.
2 IoF 2020, Digital ecosystem utilization [Internet], https://www.iof2020.eu/use-case-catalogue/vegetables/digital-ecosystem-utilisation, last accessed in Dec. 2021.
3 M. Colezea, G. Nusat, F. Pop, C. Negru, and A. Dumitrascu, "CLUeFARM: Integrated web-service platform for smart farms," Computers and Electronics in Agriculture, Vol.154, pp.134-154, 2018.   DOI
4 John Verzani "Using R for Introductory Statistics," 2nd Ed. CRC Press.
5 Python 3.10.2, "Distributing Python Modules," last accessed on 29 Jan. 2022, [Internet], https://docs.python.org/ko/3/distributing/index.html
6 S. Stoyanov, J. Todorov, I. Stoyanov, V. T.-Komsalova, L. Doukovska, and A. Dukovski, "ZEMELA - an intelligent agriculture platform," in Proceedings of the Big Data, Knowledge and Control Systems Engineering (BdKCSE), Sofia, Bulgaria, pp.1-6, 2021.
7 S. Barmpounakis et al., "Management and control applications in Agriculture domain via a Future Internet Business-to-Business platform," Information Processing In Agriculture, Vol.2, pp.51-63, 2015.   DOI
8 H. Yeo, "Application status of agricultural big data in foreign countries," World Agriculture, No.226, pp.37-52, 2019.
9 J. A. Delgado, N. M. Short Jr., D. P. Robers, and B. Vandenberg, "Big data analysis for sustainable agriculture on a geospatial cloud framework," Frontiers in Sustainable Food Systems, Vol.3, pp.1-13, 2019.   DOI
10 S. Wolfert, L. Ge, C. Verdouw, and M.-J. Bogaardt, "Big data in smart farming - a review," Agricultural Systems, Vol.153, pp.69-80, 2017.   DOI
11 S. Li and Y. Zhang, "Construction of big data processing platform for intelligent agriculture," in Proceedings of the International Conference on Big Data Analytics for Cyber-Physical-Systems, pp.1206-1212, 2020.
12 Market and Markets, "Agriculture analytics market by application area (Farm analytics, Livestock analytics, and Aquaculture analytics), component (solution and services), farm size (small, medium-sized, and large), deployment type, and region-global forecast to 2025," 2019.
13 J. Muangprathub, N, Boonnam, S. Kajornkasirat, N. Lekbangpong, A. Wanichsombat, and P. Nillaor, "IoT and agriculture data analysis for smart farm," Computers and Electronics in Agriculture, Vol.156, pp.467-474, 2019.   DOI
14 X. Pham and M. Stack, "How data analytics is transforming agriculture," Business Horizons, Vol.61, No.1, pp.125-133, 2018.   DOI
15 A. Ahrabian, S. Kolozali, S. Enshaeifar, C. Cheong-Took, and P. Barnaghi, "Data analysis as a web service: A case study using IoT sensor data," in Proceedings of the International Conference on Acoustics, Speech, and Signal Processing (ICASSP), New Orleans, Louisiana, USA, pp.6000-6004, 2017.
16 CRAN, "The Comprehensive R Archive Network," last accessed on 29 Jan. 2022, [Internet], https://cran.r-project.org/
17 Carson Sievert, "Interactive Web-Based Data Visualization with R, plotly, and shiny," CRC Press, 2019
18 Y. C. Choi, "Smart farm and big data," TTA Journal, Vol.11/12, 2018.
19 Rural Development Administration, "A study on productivity improvement model and gathering big data of smart farm in vegetable grown in facilities," Final Report (TRKO201900 016054), 2019.
20 X. Hu, L. Sun, Y. Zhou, and J. Ruan, "Review of operational management in intelligent agriculture based on the Internet of Things," Frontiers of Engineering Management, Vol.7, No.3, pp.309-322, 2020.   DOI
21 KDnuggests, "Data Science Tools Popularity, animated," last accessed on 29 Jan. 2022, [Internet], https://www.kdnuggets.com/2020/06/data-sci ence-tools-popularity-animated.html.
22 K. Park, M. C. Nguyen, and H. Won, "Web-based collaborative big data analytics on big data as a service platform," in Proceedings of the 17th International Conference on Advanced Communication Technology (ICACT), Pyeong-Chang, Korea, pp.564-567, 2015.