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http://dx.doi.org/10.17661/jkiiect.2018.11.5.521

The Agriculture Decision-making System(ADS) based on Deep Learning for improving crop productivity  

Park, Jinuk (Computer Engineering of Graduate School, Catholic Kwandong University)
Ahn, Heuihak (Department of Software, Catholic Kwandong University)
Lee, ByungKwan (Department of Software, Catholic Kwandong University)
Publication Information
The Journal of Korea Institute of Information, Electronics, and Communication Technology / v.11, no.5, 2018 , pp. 521-530 More about this Journal
Abstract
This paper proposes "The Agriculture Decision-making System(ADS) based on Deep Learning for improving crop productivity" that collects weather information based on location supporting precision agriculture, predicts current crop condition by using the collected information and real time crop data, and notifies a farmer of the result. The system works as follows. The ICM(Information Collection Module) collects weather information based on location supporting precision agriculture. The DRCM(Deep learning based Risk Calculation Module) predicts whether the C, H, N and moisture content of soil are appropriate to grow specific crops according to current weather. The RNM(Risk Notification Module) notifies a farmer of the prediction result based on the DRCM. The proposed system improves the stability because it reduces the accuracy reduction rate as the amount of data increases and is apply the unsupervised learning to the analysis stage compared to the existing system. As a result, the simulation result shows that the ADS improved the success rate of data analysis by about 6%. And the ADS predicts the current crop growth condition accurately, prevents in advance the crop diseases in various environments, and provides the optimized condition for growing crops.
Keywords
ADS(Agriculture Decision-making System); DRCM(Deep learning based Risk Calculation Module); Deep Learning; ICM(Information Collection Module); soil and weather information;
Citations & Related Records
Times Cited By KSCI : 9  (Citation Analysis)
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