Browse > Article
http://dx.doi.org/10.5532/KJAFM.2019.21.3.158

Production of Farm-level Agro-information for Adaptation to Climate Change  

Moon, Kyung Hwan (National Institute of Horticultural and Herbal Science)
Seo, Hyeong Ho (National Institute of Horticultural and Herbal Science)
Shin, Min Ji (National Institute of Horticultural and Herbal Science)
Song, Eung Young (National Institute of Horticultural and Herbal Science)
Oh, Soonja (National Institute of Horticultural and Herbal Science)
Publication Information
Korean Journal of Agricultural and Forest Meteorology / v.21, no.3, 2019 , pp. 158-166 More about this Journal
Abstract
Implementing proper land management techniques, such as selecting the best crops and applying the best cultivation techniques at the farm level, is an effective way for farmers to adapt to climate change. Also it will be helpful if the farmer can get the information of agro-weather and the growth status of cultivating crops in real time and the simulated results of applying optional technologies. To test this, a system (web site) was developed to produce agro-weather data and crop growth information of farms by combining agricultural climate maps and crop growth modeling techniques to highland area for summer-season Chinese cabbage production. The system has been shown to be a viable tool for producing farm-level information and providing it directly to farmers. Further improvements will be required in the speed of information access, the microclimate models for some meteorological factors, and the crop growth models to test different options.
Keywords
Summer-season Chinese cabbage; Digital Climate Map(DCM); Process-based crop model; Adaptation to climate change;
Citations & Related Records
Times Cited By KSCI : 12  (Citation Analysis)
연도 인용수 순위
1 Shim, K.-M., K. A. Roh, K. H. So, K. Y. Kim, H. C. Jeong, and D. B. Lee, 2010: Assessing impacts of global warming on rice growth and production in Korea. Journal of Climate Change Research 1, 121-131. (in Korean with English abstract)
2 Soltani, A., and G. Hoogenboom, 2007: Assessing crop management options with crop simulation models based on generated weather data. Field Crops Research 103, 198-207.   DOI
3 Stockle, C., R. Nelson, M. Donatelli, and F. Castellvì, 2001: ClimGen: a flexible weather generation program. 2nd International Symposium Modelling Cropping Systems. Florence, Italy, 16-18.
4 Teh, C. B., 2006: Introduction to mathematical modeling of crop growth: How the equations are derived and assembled into a c omputer model.
5 Wilks, D. S., 1992: Adapting stochastic weather generation algorithms for climate change studies. Climatic change 22, 67-84.   DOI
6 Yin, X., and P. Struik, 2009: C3 and C4 photosynthesis models: an overview from the perspective of crop modelling. NJAS-Wageningen Journal of Life Sciences 57, 27-38.   DOI
7 Yin, X., M. Van Oijen, and A. H. Schapendonk, 2004: Extension of a biochemical model for the generalized stoichiometry of electron transport limited C3 photosynthesis. Plant, Cell & Environment 27, 1211-1222.   DOI
8 Yun, J. I., 2007: Applications of "high definition digital climate maps" in restructuring of Korean agriculture. Korean Journal of Agricultural and Forest Meteorology 9, 1-16. (in Korean with English abstract)   DOI
9 Yun, J. I., 2010: Agroclimatic maps augmented by a GIS technology. Korean Journal of Agricultural and Forest Meteorology 12, 63-73. (in Korean with English abstract)   DOI
10 Yun, J. I., S. O. Kim, J. H. Kim, and D. J. Kim, 2013: User-specific agrometeorological service to local farming community: A case study. Korean Journal of Agricultural and Forest Meteorology 15, 320-331. (in Korean with English abstract)   DOI
11 Kim, S. O., and J. I. Yun, 2015: Improving the usage of the Korea Meteorological Administration's digital forecasts in agriculture: IV. Estimation of daily sunshine duration and solar radiation based on 'Sky Condition' product. Korean Journal of Agricultural and Forest Meteorology 17, 281-289. (in Korean with English abstract)   DOI
12 Kim, C. K., 2010: Impact analysis and adatation strategy in agricultural sector against climate change. Proceedings of the Korean Society of Environmetal Agriculture Workshop, 4-29. (in Korean)
13 Kim, K. S., S O Kim, J. H. Kim, K. H. Moon, J. H. Shin, and J. Cho, 2018: Development and application of crop models in Korea. Korean Journal of Agricultural and Forest Meteorology 20, 145-148. (in Korean with English abstract)   DOI
14 Kim, S. O., and J. I. Yun, 2014: Improving usage of the Korea Meteorological Administration's digital forecasts in agriculture: III. Correction for advection effect on determination of daily maximum temperature over sloped surfaces. Korean Journal of Agricultural and Forest Meteorology 16, 297-303. (in Korean with English abstract)   DOI
15 Kim, S. O., and J. I. Yun, 2016: Improving the usage of the Korea Meteorological Administration's digital forecasts in agriculture: V. Field validation of the Sky-condition based lapse rate estimation scheme. Korean Journal of Agricultural and Forest Meteorology 18, 135-142. (in Korean with English abstract)   DOI
16 KMA (Korea Meteorological Administration), 2011: Report of Climate Change Scenario. 79-111. (in Korean)
17 Kim, S. O., D. J. Kim, J. H. Kim, and J. I. Yun, 2013: Improving usage of the Korea Meteorological Administration's digital forecasts in agriculture: I. Correction for local temperature under the inversion condition. Korean Journal of Agricultural and Forest Meteorology 15, 76-84. (in Korean with English abstract)   DOI
18 Kim, S., and S. H. Lee, 2011: The impact of climate changes on highland agriculture region in Taeback mountainous. Climate research 6, 100-109. (in Korean with English abstract)
19 Kim, S. H., J. H. Jeong, and L. L. Nackley, 2013: Photosynthetic and transpiration responses to light, CO2, temperature, and leaf senescence in garlic: Analysis and modeling. Journal of the American Society for Horticultural Science 138, 149-156.   DOI
20 Kim, S. H., and J. H. Lieth, 2003: A coupled model of photosynthesis, stomatal conductance and transpiration for a rose leaf (Rosa hybrida L.). Annals of botany 91, 771-781.   DOI
21 Lee, B. U., 1997: Transpiration modelling and verification in greenhouse tomato. Protected Horticulture and Plant Factory 6, 205-215. (in Korean with English abstract)
22 Lee, C. K., J.-H. Kim, J.-Y. Son, Y.-H. Yoon, J.-H. Seo, Y.-U. Kwon, J.-C. Shin, and B.-W. Lee, 2010: Estimating grain weight and grain nitrogen content with temperature, solar radiation and growth traits during grain-filling period in rice. Journal of Crop Science and Biotechnology 55, 275-283. (in Korean with English abstract)
23 Lee, C. K., B. U. Lee, J. C. Shin, and Y. H. Yun, 2001: Heading date and final leaf number as affected by sowing date and prediction of heading date based on leaf appearance model in rice. Journal of Crop Science and Biotechnology 46, 195-201. (in Korean with English abstract)
24 Richardson, C., 1985: Weather simulation for crop management models. Transactions of the ASAE 28, 1602-1606.   DOI
25 Moon, K. H., E. Y. Song, I. C. Sonn, S. H. Wi, and H. N. Hyun, 2017: Estimation of Markov chain and gamma distribution parameters for generation of daily precipitation data from monthly data. Korean Journal of Agricultural and Forest Meteorology 19, 27-35. (in Korean with English abstract)   DOI
26 Moon, K. H., E. Y. Song, S. H. Wi, and S. Oh, 2018a: Development of a Chinese cabbage model using Microsoft Excel/VBA. Korean Journal of Agricultural and Forest Meteorology 20, 228-232. (in Korean with English abstract)   DOI
27 Moon, K. H., E. Y. Song, S. H. Wi, H. H. Seo, and H. N. Hyun, 2018b: Generation of daily temperature data using monthly mean temperature and precipitation data. Korean Journal of Agricultural and Forest Meteorology 20, 252-261. (in Korean with English abstract)   DOI
28 Moon, K. H., K. S. Choi, I. C. Sonn, E. Y. Song, and S. Oh, 2014: A simple emergence model of southern type garlic based on temperature. Korean Journal of Agricultural and Forest Meteorology 16, 343-348. (in Korean with English abstract)   DOI
29 Nelson, G. C., and G. E. Shively, 2014: Modeling climate change and agriculture: an introduction to the special issue. Agricultural Economics 45, 1-2.   DOI
30 Rosenzweig, C., J. W. Jones, J. L. Hatfield, A. C. Ruane, K. J. Boote, P. Thorburn, J. M. Antle, G. C. Nelson, C. Porter, S. Janssen, S. Asseng, B. Basso, F. Ewert, D. Wallach, G. Baigorria, and J. M. Winter, 2013: The agricultural model intercomparison and improvement project (AgMIP): protocols and pilot studies. Agricultural and Forest Meteorology 170, 166-182.   DOI
31 Rosenzweig, C., J. Elliott, D. Deryng, A. C. Ruane, C. Muller, A. Arneth, K. J. Boote, C. Folberth, M. Glotter, N. Khabarov, K. Neumann, F. Piontek, T. A. M. Pugh, E. Schimid, E. Stehfest, H. Yang and J. W. Jones, 2014: Assessing agricultural risks of climate change in the 21st century in a global gridded crop model intercomparison. Proceedings of the National Academy of Sciences 111, 3268-3273.   DOI
32 Seo, B. S., and B. U. Lee, 2018: Prototype development of phenology module of paprika process model for implement of functionalstructural model. Proceedings of the Korean Society of Crop Science Conference, 143-143. (in Korean)
33 Hsiao, J., K. Yun, K. H. Moon, and S. H. Kim, 2019: A process-based model for leaf development and growth in hardneck garlic (Allium sativum). Annals of Botany. https://doi.org/10.1093/aob/mcz060   DOI
34 Ban, H. Y., D. H. Choi, J. B. Ahn, and B. U. Lee, 2017: Predicting regional soybean yield using crop growth simulation model. Korean Journal of Remote Sensing 33, 699-708. (in Korean with English abstract)   DOI
35 Bouman, B., H. Van Keulen, H. Van Laar, and R. Rabbinge, 1996: The 'School of de Wit'crop growth simulation models: a pedigree and historical overview. Agricultural Systems 52, 171-198.   DOI
36 Farquhar, G. v., S. v. von Caemmerer, and J. Berry, 1980: A biochemical model of photosynthetic CO2 assimilation in leaves of C3 species. Planta 149, 78-90.   DOI
37 Jones, J. W., and Coauthors, 2003: The DSSAT cropping system model. European Journal of Agronomy 18, 235-265.   DOI
38 Kambezidis, H. D., and B. E. Psiloglou, 2008: The meteorological radiation model (MRM): advancements and applications. Modeling Solar Radiation at the Earth's Surface, Springer, Berlin, Heidelberg, 357-392.