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http://dx.doi.org/10.7780/kjrs.2013.29.5.2

Prediction of Rice Yield in Korea using Paddy Rice NPP index - Application of MODIS data and CASA Model -  

Na, Sang Il (National Academy of Agricultural Science, Rural Development Administration)
Hong, Suk Young (National Academy of Agricultural Science, Rural Development Administration)
Kim, Yi Hyun (National Academy of Agricultural Science, Rural Development Administration)
Lee, Kyoung Do (National Academy of Agricultural Science, Rural Development Administration)
Jang, So Young (National Academy of Agricultural Science, Rural Development Administration)
Publication Information
Korean Journal of Remote Sensing / v.29, no.5, 2013 , pp. 461-476 More about this Journal
Abstract
Carnegie-Ames-Stanford Approach (CASA) model is one of the most quick, convenient and accurate models to estimate the NPP (Net Primary Productivity) of vegetation. The purposes of this study are (1) to examine the spatial and temporal patterns of vegetation NPP of the paddy field area in Korea from 2002 to 2012, and (2) to investigate how the rice productivity responded to inter-annual NPP variability, and (3) to estimate rice yield in Korea using CASA model applied to MOderate Resolution Imaging Spectroradiometer (MODIS) products and solar radiation. MODIS products; MYD09 for NIR and SWIR bands, MYD11 for LST, MYD15 for FPAR, respectively from a NASA web site were used. Finally, (4) its applicability is to be reviewed. For those purposes, correlation coefficients (linear regression for monthly NPP and accumulated NPP with rice yield) were examined to evaluate the spatial and temporal patterns of the relations. As a result, the total accumulated NPP and Sep. NPP tend to have high correlation with rice yield. The rice yield in 2012 was estimated to be 526.93kg/10a by accumulated NPP and 520.32 kg/10a by Sep. NPP. RMSE were 9.46kg/10a and 12.93kg/10a, respectively, compared with the yield forecast of the National Statistical Office. This leads to the conclusion that NPP changes in the paddy field were well reflected rice yield in this study.
Keywords
CASA; NPP; Rice yield; MODIS;
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Times Cited By KSCI : 5  (Citation Analysis)
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