A crop model cross calibration for use in regional climate impacts studies

文献类型: 外文期刊

第一作者: Xiong, Wei

作者: Xiong, Wei;Lin, Erda;Li, Yue;Xiong, Wei;Lin, Erda;Li, Yue;Holman, Ian;Conway, Declan

作者机构:

关键词: calibration;crop model;climate change

期刊名称:ECOLOGICAL MODELLING ( 影响因子:2.974; 五年影响因子:3.264 )

ISSN:

年卷期:

页码:

收录情况: SCI

摘要: Crop simulation models are widely used to assess the impacts of and adaptation to climate change in relation to agricultural production. However, a substantial mismatch often exists between the spatial and temporal scale of available data and the requirements of crop simulation models. Conventional model calibration methods which concentrate on a model's performance at plot scale cannot be used for large scale regional simulation (especially for climate change impacts assessments), given the limited observed data and the iterative calibration needed. One primary purpose of regional simulation is to predict the spatial yield variation and temporal yield fluctuation. This purpose could be fulfilled through model input calibration in which the objective of the calibration focuses on spatial or temporal agreement between simulated and observed values. This study examines the performance of CERES-Rice at the regional scale across China using a cross calibration process based on limited experiment data, agroecological zones (AEZ) and 50 km x 50 km grid scale geographical database. Model performance is evaluated using rice yields from experimental sites at the plot scale, and/or observed yield data at the county scale. Results suggest: the CERES-Rice model was able to simulate the site-specific rice production with good performance in most of China, with a root mean square error (RMSE) = 991 kg ha(-1) and a relative RMSE = 14.9% for yield across China. The cross calibration process, in which AEZ-scale parameter values were derived, gave a relative bigger bias to yield estimation, with a RMSE = 1485 kg ha-1 and a relative RMSE = 22.5%, but achieved a reasonable agreement with observed maturity day and yield at spatial scale. The bias rose further if this cross calibrated model was used to simulate the real farmer rice yields at a regional scale, with a RMSE = 2191 kg ha-1 and relative RMSE = 34% across China. The pattern of yield variation was captured spatially by the model in most of the rice planting areas, but not temporally The sources of uncertainties were analyzed for both plot scale and regional scale simulation. This calibration process could be incorporated into climate change integrated assessment and adaptation assessment, especially for those developing counties with limited observed data.

分类号: X17

  • 相关文献

[1]Simulating the Impacts of Global Warming on Wheat in China Using a Large Area Crop Model. Li Sanai,Li Sanai,Wheeler, Tim,Challinor, Andrew,Lin Erda,Xu Yinlong,Ju Hui. 2010

[2]PREDICTION OF CHANGE OF WINTER WHEAT IN NORTH CHINA BY USING IPCC-AR4 MODEL DATA. Zhang Mingwei,Fan Jinlong,Li Guicai,Deng Hui,Ren Jianqiang,Chen Zhongxin,Deng Hui,Ren Jianqiang,Chen Zhongxin. 2011

[3]A Method to Calibrate the Electromagnetic Tracking Instrument When Measuring Branches of Fruit Trees. Wu, Ding-Feng,Wang, Jian,Zhou, Guo-Min,Liu, Li-Bo. 2011

[4]Calibration-induced uncertainty of the EPIC model to estimate climate change impact on global maize yield. Xiong, Wei,Yang, Di,Xiong, Wei,Porter, Cheryl H.,Jones, James W.,Skalsky, Rastislav,Balkovic, Juraj,Skalsky, Rastislav,Balkovic, Juraj. 2016

[5]Research and Design of Dynamic Belt weighing SCM System Based on the Separating Structure. Wang Su-zhen,Wu Chong-you,Xiao Ti-qiong,Yu Shan-shan. 2010

[6]Determination of Potassium in Farmland Soil Using Laser-Induced Breakdown Spectroscopy. Dong Da-ming,Zheng Wen-gang,Zhao Chun-jiang,Zhao Xian-de,Jiao Lei-zi,Zhang Shi-rui. 2013

[7]Calibration of the Angstrom-Prescott coefficients (a, b) under different time scales and their impacts in estimating global solar radiation in the Yellow River basin. Liu, Xiaoying,Mei, Xurong,Li, Yuzhong,Zhang, Yanqing,Wang, Qingsuo,Jensen, Fens Raunso,Porter, John Roy. 2009

[8]High-Performance Liquid Chromatographic Method for the Determination of Cyromazine and Melamine Residues in Milk and Pork. Wei, Ruicheng,Wang, Ran,Chen, Ming,Liu, Tiezheng,Zeng, Qingfei,Zeng, Qingfei.

[9]Modeling Nitrate Leaching and Optimizing Water and Nitrogen Management under Irrigated Maize in Desert Oases in Northwestern China. Hu, Kelin,Li, Baoguo,Huang, Yuanfang,Li, Yong,Chen, Deli,Wei, Yongping,Edis, Robert,Chen, Weiping,Zhang, Yuanpei.

[10]Model AVSWAT apropos of simulating non-point source pollution in Taihu lake basin. Zhang, Qiu-Ling,Chen, Ying-Xu,Jilani, Ghulam,Shamsi, Imran Haider,Yu, Qiao-Gang.

[11]Ranking higher taxa using divergence times: a case study in Dothideomycetes. Liu, Jian-Kui,Zhao, Qi,Liu, Jian-Kui,Liu, Jian-Kui,Liu, Zuo-Yi,Hyde, Kevin D.,Jeewon, Rajesh,Phillips, Alan J. L.,Maharachchikumbura, Sajeewa S. N.,Ryberg, Martin.

[12]Development of a web temporal-spatial information application for main crops based on integration of remote sensing and crop model. Yang Xiaodong,Xu Xingang,Gu Xiaohe,Yang Hao,Yu Haiyang,Yang Fuzeng. 2014

[13]Research on remote crop production management system based on crop simulation models and WebGIS. Zhang, Jianbing,Zhu, Liping,Zhu, Yeping. 2008

[14]Spatial decision supporting for winter wheat irrigation and fertilizer optimizing in North China Plain. Yang Xiaodong,Yang Hao,Dong Yansheng,Yu Haiyang. 2014

[15]DEVELOPMENT OF FARMLAND DROUGHT ASSESSMENT TOOLS BASED ON THE ASSIMILATION OF REMOTELY SENSED CANOPY BIOPHYSICAL VARIABLES INTO CROP WATER RESPONSE MODELS. Casa, R.,Silvestro, P. C.,Yang, H.,Yang, G.,Pignatti, S.,Pascucci, S.,Yang, H.,Yang, G.. 2015

[16]Assimilation of temporal-spatial leaf area index into the CERES-Wheat model with ensemble Kalman filter and uncertainty assessment for improving winter wheat yield estimation. Li He,Jiang Zhi-wei,Chen Zhong-xin,Ren Jian-qiang,Liu Bin,Hasituyu,Jiang Zhi-wei. 2017

[17]Application of Crop Model Data Assimilation With a Particle Filter for Estimating Regional Winter Wheat Yields. Jiang, Zhiwei,Chen, Jin,Jiang, Zhiwei,Chen, Zhongxin,Liu, Jia,Ren, Jianqiang,Li, Zongnan,Sun, Liang,Li, He. 2014

[18]Study on the Growth Simulation Information Acquisition System of Farm Crops Based on Internet of Things. Sun, Kaimeng. 2014

[19]A calibration procedure to improve global rice yield simulations with EPIC. Xiong, Wei,Balkovic, Juraj,van der Velde, Marijn,Skalsky, Rastislav,Obersteiner, Michael,Xiong, Wei,Lin, Erda,Zhang, Xuesong,Izaurralde, R. Cesar,Zhang, Xuesong,Izaurralde, R. Cesar,Mueller, Nathan,Balkovic, Juraj,Skalsky, Rastislav.

[20]The Estimation of Regional Crop Yield Using Ensemble-Based Four-Dimensional Variational Data Assimilation. Jiang, Zhiwei,Chen, Jin,Jiang, Zhiwei,Chen, Zhongxin,Ren, Jianqiang,Li, Zongnan,Sun, Liang,Jiang, Zhiwei,Chen, Zhongxin,Ren, Jianqiang,Li, Zongnan,Sun, Liang. 2014

作者其他论文 更多>>