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首页> 外文期刊>Field Crops Research >Uncertainties in simulating N uptake, net N mineralization, soil mineral N and N leaching in European crop rotations using process-based models
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Uncertainties in simulating N uptake, net N mineralization, soil mineral N and N leaching in European crop rotations using process-based models

机译:使用基于过程的模型在欧洲作物旋转中模拟N吸收,净矿化,土壤矿物N和N浸出的不确定性

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摘要

Modelling N transformations within cropping systems is crucial for N management optimization in order to increase N use efficiency and reduce N losses. Such modelling remains challenging because of the complexity of N cycling in soil-plant systems. In the current study, the uncertainties of six widely used process-based models (PBMs), including APSIM, CROPSYST, DAISY, FASSET, HERMES and STICS, were tested in simulating different N managements (catch crops (CC) and different N fertilizer rates) in 12-year rotations in Western Europe. Winter wheat, sugar beet and pea were the main crops, and radish was the main CC in the tested systems. Our results showed that PBMs simulated yield, aboveground biomass, N export and N uptake well with low RMSE values, except for sugar beet, which was generally less well parameterized. Moreover, PBMs provided more accurate crop simulations (i.e. N export and N uptake) compared to simulations of soil (N mineralization and soil mineral N (SMN)) and environmental variables (N leaching). The use of multi-model ensemble mean or median of four PBMs significantly reduced the mean absolute percentage error (MAPE) between simulations and observations to less than 15% for yield, aboveground biomass, N export and N uptake. Multi-model ensemble also significantly reduced the MAPE for net N mineralization and annual N leaching to around 15%, while it was larger than 20% for SMN. Generally, PBMs well simulated the CC effects on N fluxes, i.e. increasing N mineralization and reducing N leaching in both short-term and long-term, and all PBMs correctly predicted the effects of the reduced N rate on all measured variables in the study. The uncertainties of multi-model ensemble for N mineralization, SMN and N leaching were larger, mainly because these variables are influenced by plant-soil interactions and subject to cumulative long-term effects in crop rotations, which makes them more difficult to simulate. Large differences existed between individual PBMs due to the differences in formalisms for describing N processes in soil-plant systems, the skills of modelers and the model calibration level. In addition, the model performance also depended on the simulated variables, for instance, HERMES and FASSET performed better for yield and crop biomass, APSIM, DAISY and STICS performed better for N export and N uptake, STICS provided best simulation for SMN and N leaching among the six individual PBMs in the study, but all PBMs met difficulties to well predict either average or variance of soil N mineralization. Our results showed that better calibration for soil N variables is needed to improve model predictions of N cycling in order to optimize N management in crop rotations.
机译:在裁剪系统内建模N变换对于N管理优化至关重要,以提高N使用效率并降低N损耗。由于土壤 - 植物系统中的N循环的复杂性,这种建模仍然具有挑战性。在目前的研究中,在模拟不同的N管理(捕获作物(CC)和不同的肥料速率下,测试了六种基于过程的基于过程的模型(PBMS)的不确定性,包括APSIM,庄重剧,雏菊,FASSET,HERMES和STIC。 )在西欧的12年旋转中。冬小麦,甜菜和豌豆是主要作物,萝卜是测试系统中的主要CC。我们的研究结果表明,除甜菜外,PBMS模拟产量,地上生物量,N导出和N个出口和N采用良好,除了甜菜,甜菜甜菜通常较少的参数化。此外,与土壤模拟(N矿化和土壤矿物N(SMN))和环境变量(N浸出)相比,PBMS提供了更准确的作物模拟(即N导出和N个摄取)。使用四种PBMS的多模型集合均值或中位数显着降低了模拟和观察之间的平均绝对百分比误差(MAPE),以屈服,地上生物量,N导出和N个吸收而小于15%。多模型集合也显着降低了净矿化的MAPE和每年的N次浸出至约15%,而SMN的液体大于20%。通常,PBMS井模拟了N助焊剂的CC效应,即增加N矿化并在短期和长期减少N次浸,所有PBMS都正确预测了降低的N比率对研究中的所有测量变量的影响。 N个矿化,SMN和N浸出的多模型集合的不确定性较大,主要是因为这些变量受植物 - 土相互作用的影响,并且在作物旋转中受到累积的长期影响,这使得它们更难以模拟。各个PBMS之间存在巨大差异,由于用于描述土壤工厂系统中的N过程的形式主义的差异,建模者的技能和模型校准水平。此外,模型性能还取决于模拟变量,例如,Hermes和Fasset更好地为产量和作物生物量,APSIM,菊花和STICS更好地为N导出和N个摄取,STIC为SMN和N浸出提供了最佳仿真在研究中的六种单独的PBM中,所有PBMS均遇到困难,以预测土壤N矿化的平均或差异。我们的研究结果表明,需要更好地校准土壤N变量,以改善N循环的模型预测,以便在作物旋转中优化N管理。

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