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http://dx.doi.org/10.5532/KJAFM.2019.21.3.167

History and Future Direction for the Development of Rice Growth Models in Korea  

Kim, Junhwan (Division of Crop Physiology and Production, National Institute of Crop Science, Rural Development Administration)
Sang, Wangyu (Division of Crop Physiology and Production, National Institute of Crop Science, Rural Development Administration)
Shin, Pyeong (Division of Crop Physiology and Production, National Institute of Crop Science, Rural Development Administration)
Baek, Jaekyeong (Division of Crop Physiology and Production, National Institute of Crop Science, Rural Development Administration)
Cho, Chongil (Division of Crop Physiology and Production, National Institute of Crop Science, Rural Development Administration)
Seo, Myungchul (Division of Crop Physiology and Production, National Institute of Crop Science, Rural Development Administration)
Publication Information
Korean Journal of Agricultural and Forest Meteorology / v.21, no.3, 2019 , pp. 167-174 More about this Journal
Abstract
A process-oriented crop growth model can simulate the biophysical process of rice under diverse environmental and management conditions, which would make it more versatile than an empirical crop model. In the present study, we examined chronology and background of the development of the rice growth models in Korea, which would provide insights on the needs for improvement of the models. The rice crop growth models were introduced in Korea in the late 80s. Until 2000s, these crop models have been used to simulate the yield in a specific area in Korea. Since then, improvement of crop growth models has been made to take into account biological characteristics of rice growth and development in more detail. Still, the use of the crop growth models has been limited to the assessment of climate change impact on crop production. Efforts have been made to apply the crop growth model, e.g., the CERES-Rice model, to develop decision support system for crop management at a farm level. However, the decision support system based on a crop growth model was attractive to a small number of stakeholders most likely due to scarcity of on-site weather data and reliable parameter sets for cultivars grown in Korea. The wide use of the crop growth models would be facilitated by approaches to extend spatial availability of reliable weather data, which could be either measured on-site or estimates using spatial interpolation. New approaches for calibration of cultivar parameters for new cultivars would also help lower hurdles to crop growth models.
Keywords
Process-oriented crop growth model; Site-specific weather data; Parameter calibration; Climate change; Decision support system;
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