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Comparisons among four different upscaling strategies for cultivar genetic parameters in rainfed spring wheat phenology simulations with the DSSAT-CERES-Wheat model

Author

Listed:
  • Chen, Shang
  • He, Liang
  • Cao, Yinxuan
  • Wang, Runhong
  • Wu, Lianhai
  • Wang, Zhao
  • Zou, Yufeng
  • Siddique, Kadambot H.M.
  • Xiong, Wei
  • Liu, Manshuang
  • Feng, Hao
  • Yu, Qiang
  • Wang, Xiaoming
  • He, Jianqiang

Abstract

Cropping system models are widely used to assess the impacts of and adaptation practices to climate change on agricultural production. However, crop growth simulations at large scales have often lacked consideration of variation in crop cultivars, which were represented by different sets of genetic coefficients in crops models. In this study, taking the phenology of spring wheat (Triticum aestivum L.) as an example, we compared four different strategies for upscaling genetic parameters in phenology simulations at large scales with two experimental datasets. The first dataset was from field experiments comprising 40 different spring wheat cultivars at Altay (2014) and Yangling (2015–2017) station; the second dataset was historical (2010–2014) observed phenology records from 57 national agro-meteorological observation stations in China. The four strategies were the representative cultivar estimated at a single site (SSPs), the representative cultivar estimated at the 57 sites (NRPs), the various representative cultivars estimated at different agro-ecological zones (RRPs), and the virtual cultivars generated from the posterior distributions (VCPs). The posterior distributions aforesaid were established based on the calibrated parameter values of the 40 different spring wheat cultivars planted in Yangling. Then, 1000 sets of VCPs were randomly sampled from the posterior distributions. The results indicated that both the SSPs and NRPs strategy obtained large errors and uncertainties in spring wheat phenology simulations in China since only one representative cultivar was used. The RRPs strategy achieved the second high and the highest accuracy in anthesis and maturity data simulations. The VCPs strategy obtained the highest accuracy in anthesis simulation but relative larger errors in maturity simulation. The VCPs strategy can be directly used in large-scale crop growth simulations without tedious process of calibration. Hence, this strategy is recommended in areas where observations are scarce and for model users who not good at model parameter estimation.

Suggested Citation

  • Chen, Shang & He, Liang & Cao, Yinxuan & Wang, Runhong & Wu, Lianhai & Wang, Zhao & Zou, Yufeng & Siddique, Kadambot H.M. & Xiong, Wei & Liu, Manshuang & Feng, Hao & Yu, Qiang & Wang, Xiaoming & He, J, 2021. "Comparisons among four different upscaling strategies for cultivar genetic parameters in rainfed spring wheat phenology simulations with the DSSAT-CERES-Wheat model," Agricultural Water Management, Elsevier, vol. 258(C).
  • Handle: RePEc:eee:agiwat:v:258:y:2021:i:c:s0378377421004583
    DOI: 10.1016/j.agwat.2021.107181
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    References listed on IDEAS

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    1. He, Jianqiang & Jones, James W. & Graham, Wendy D. & Dukes, Michael D., 2010. "Influence of likelihood function choice for estimating crop model parameters using the generalized likelihood uncertainty estimation method," Agricultural Systems, Elsevier, vol. 103(5), pages 256-264, June.
    2. Seidel, S.J. & Barfus, K. & Gaiser, T. & Nguyen, T.H. & Lazarovitch, N., 2019. "The influence of climate variability, soil and sowing date on simulation-based crop coefficient curves and irrigation water demand," Agricultural Water Management, Elsevier, vol. 221(C), pages 73-83.
    3. Xiong, Wei & Balkovič, Juraj & van der Velde, Marijn & Zhang, Xuesong & Izaurralde, R. César & Skalský, Rastislav & Lin, Erda & Mueller, Nathan & Obersteiner, Michael, 2014. "A calibration procedure to improve global rice yield simulations with EPIC," Ecological Modelling, Elsevier, vol. 273(C), pages 128-139.
    4. Yao, Ning & Li, Yi & Xu, Fang & Liu, Jian & Chen, Shang & Ma, Haijiao & Wai Chau, Henry & Liu, De Li & Li, Meng & Feng, Hao & Yu, Qiang & He, Jianqiang, 2020. "Permanent wilting point plays an important role in simulating winter wheat growth under water deficit conditions," Agricultural Water Management, Elsevier, vol. 229(C).
    5. Zhang, Huihui & Ma, Liwang & Douglas-Mankin, Kyle R. & Han, Ming & Trout, Thomas J., 2021. "Modeling maize production under growth stage-based deficit irrigation management with RZWQM2," Agricultural Water Management, Elsevier, vol. 248(C).
    6. Brar, A.S. & Buttar, G.S. & Jhanji, Daman & Sharma, Neerja & Vashist, K.K. & Mahal, S.S. & Deol, J.S. & Singh, Gagandeep, 2015. "Water productivity, energy and economic analysis of transplanting methods with different irrigation regimes in Basmati rice (Oryza sativa L.) under north-western India," Agricultural Water Management, Elsevier, vol. 158(C), pages 189-195.
    7. Kar, Gouranga & Verma, Harsh Nath, 2005. "Phenology based irrigation scheduling and determination of crop coefficient of winter maize in rice fallow of eastern India," Agricultural Water Management, Elsevier, vol. 75(3), pages 169-183, July.
    8. Liu, Huan & Pequeno, Diego N.L. & Hernández-Ochoa, Ixchel M. & Krupnik, Timothy J. & Sonder, Kai & Xiong, Wei & Xu, Yinlong, 2020. "A consistent calibration across three wheat models to simulate wheat yield and phenology in China," Ecological Modelling, Elsevier, vol. 430(C).
    9. Marie Laure Delignette-Muller & Christophe Dutang, 2015. "fitdistrplus : An R Package for Fitting Distributions," Post-Print hal-01616147, HAL.
    10. Guo, Ruiping & Lin, Zhonghui & Mo, Xingguo & Yang, Chunlin, 2010. "Responses of crop yield and water use efficiency to climate change in the North China Plain," Agricultural Water Management, Elsevier, vol. 97(8), pages 1185-1194, August.
    11. Sun, Shuang & Yang, Xiaoguang & Lin, Xiaomao & Sassenrath, Gretchen F. & Li, Kenan, 2018. "Climate-smart management can further improve winter wheat yield in China," Agricultural Systems, Elsevier, vol. 162(C), pages 10-18.
    12. Delignette-Muller, Marie Laure & Dutang, Christophe, 2015. "fitdistrplus: An R Package for Fitting Distributions," Journal of Statistical Software, Foundation for Open Access Statistics, vol. 64(i04).
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