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结合遥感技术与水稻生长模型来预算水稻产量
作者姓名:O. ABOU-ISMAIL  HUANG Jing-Feng  WANG Ren-Chao
作者单位:InstituteofAgriculturalRemoteSensing~InformationApplication,Zhejian9University,Hangzhou310029(China).
基金项目:*1Project supported by the Commission of Science, Technology and Industry for National Defence, China (No.Y97#14-6-2).
摘    要:Since remote sensing can provide information on the actual status of an agricultural crop, the integration betwee nremote sensing data and crop growth simulation models has become an important trend for yield estimation and prediction. The main objective of this research was to combine a rice growth simulation model with remote sensing data to estimate rice grain yield for different growing seasons leading to an assessment of rice yield at regional levels. Integration between NOAA (National Oceanic and Atmospheric Administration) AVHRR (Advanced Very High Resolution Radiometer) data and the rice growth simulation model ORYZA1 to develop a new software, which was named as Rice-SRS Model, resulted in accurate estimates for rice yield in Shaoxing, China, with an estimation error reduced to 1.03% and 0.79% over-estimation and 0.79% under-estimation for early, single and late season rice, respectively. Selecting suitable dates for remote sensing images was an important factor which could influence estimation accuracy. Thus, given the different growing periods for each rice season, four images were needed for early and late rice, while five images were preferable for single season rice. Estimating rice yield using two or three images was possible, however, if images were obtained during the panicle initiation and heading stages.

关 键 词:  种植仿真模型  产量估算  细微因素

Rice yield estimation by integrating remote sensing with rice growth simulation model
O. ABOU-ISMAIL,HUANG Jing-Feng,WANG Ren-Chao.Rice yield estimation by integrating remote sensing with rice growth simulation model[J].Pedosphere,2004,14(4):519-526.
Authors:O ABOU-ISMAIL  HUANG Jing-Feng and WANG Ren-Chao
Institution:Institute of Agricultural Remote Sensing & Information Application, Zhejiang University, Hangzhou 310029 (China). E-mail: ousamal9@yahoo.com;The General Organization of Remote Sensing (GORS), P. O Box 12586, Damascus (Syria);Institute of Agricultural Remote Sensing & Information Application, Zhejiang University, Hangzhou 310029 (China). E-mail: ousamal9@yahoo.com;Institute of Agricultural Remote Sensing & Information Application, Zhejiang University, Hangzhou 310029 (China). E-mail: ousamal9@yahoo.com
Abstract:Since remote sensing can provide information on the actual status of an agricultural crop, the integration betwee nremote sensing data and crop growth simulation models has become an important trend for yield estimation and prediction. The main objective of this research was to combine a rice growth simulation model with remote sensing data to estimate rice grain yield for different growing seasons leading to an assessment of rice yield at regional levels. Integration between NOAA (National Oceanic and Atmospheric Administration) AVHRR (Advanced Very High Resolution Radiometer) data and the rice growth simulation model ORYZA1 to develop a new software, which was named as Rice-SRS Model, resulted in accurate estimates for rice yield in Shaoxing, China, with an estimation error reduced to 1.03% and 0.79% over-estimation and 0.79% under-estimation for early, single and late season rice, respectively. Selecting suitable dates for remote sensing images was an important factor which could influence estimation accuracy. Thus, given the different growing periods for each rice season, four images were needed for early and late rice, while five images were preferable for single season rice. Estimating rice yield using two or three images was possible, however, if images were obtained during the panicle initiation and heading stages.
Keywords:remote sensing  rice growth simulation model  rice yield estimation
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