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A robust parameter approach for estimating CERES-Rice model parameters for the Vietnam Mekong Delta

机译:估计越南湄公河三角洲CERES-Rice模型参数的可靠参数方法

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Rice crop models, such as CERES-Rice, are useful tools to predict rice growth and understand the effects of climatic and management changes on rice yield. As these models involve complex processes, non-linearity and interdependence of parameters may result in high uncertainty in model results. In this study, we tested the CERES-Rice model in the Vietnam Mekong Delta for two rice cultivars (Jasmine 85 and VD20) in four experimental sites. We applied a two-stage calibration procedure. In the first stage, initial sets of good performing parameters were identified. In the second stage, the good performing parameter sets and their minimum-maximum ranges were refined using the Robust Parameter Estimation (ROPE) approach. We found that in the first calibration stage, the majority of the parameter sets that performed well in the calibration sites performed poorly in the validation sites. For example, the simulated rice yields were within +/-5% of the observed yields in the calibration sites. But in the validation sites, the same parameter sets resulted in the differences of -77% to 19% for Jasmine 85 and -47% to 9.5% for VD20. This is because these parameter sets had a broad range of values, which compensated each other well in calibration but were less successful to do so in validation. When the ROPE was applied, the value ranges of the parameters narrowed down and the model performance in validation improved. In general, the parameter ranges identified by ROPE are considered more robust and have higher probability to perform better. Our positive results show a good potential of the ROPE approach for calibration of the CERES-Rice model, which can also be applied with similar other crop growth models. The robust parameter value ranges derived in this study may be used as reference parameter values for future applications of the model in the region. (C) 2016 Elsevier B.V. All rights reserved.
机译:水稻作物模型,例如CERES-Rice,是预测水稻生长并了解气候和管理变化对水稻产量的影响的有用工具。由于这些模型涉及复杂的过程,因此非线性和参数的相互依赖性可能导致模型结果的高度不确定性。在这项研究中,我们测试了越南湄公河三角洲的CERES-Rice模型在四个实验地点的两个水稻品种(茉莉85和VD20)。我们应用了两阶段校准程序。在第一阶段,确定了性能良好的初始参数集。在第二阶段,使用鲁棒参数估计(ROPE)方法完善了性能良好的参数集及其最小-最大范围。我们发现,在第一个校准阶段中,大多数在校准站点中执行良好的参数集在验证站点中的表现较差。例如,模拟稻米的产量在标定地点观察到的产量的+/- 5%之内。但是在验证站点中,相同的参数集导致Jasmine 85的-77%至19%和VD20的-47%至9.5%之间的差异。这是因为这些参数集具有广泛的值范围,这些值在校准中可以很好地相互补偿,但在验证中却不太成功。应用ROPE时,参数的取值范围变窄,验证模型的性能得到改善。通常,ROPE标识的参数范围被认为更健壮,并且具有更高的概率更好地执行。我们的积极结果表明,ROPE方法在校准CERES-Rice模型方面具有很大的潜力,也可以与其他类似的作物生长模型一起应用。本研究中得出的稳健参数值范围可以用作模型在该地区未来应用的参考参数值。 (C)2016 Elsevier B.V.保留所有权利。

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