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Adapting and evaluating the CROPGRO-peanut model for response to phosphorus on a sandy-loam soil under semi-arid tropical conditions

机译:适应和评估CROPGRO-花生模型对半干旱热带条件下沙壤土上磷的响应

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Phosphorus (P) deficiency is a major constraint to crop production in many agricultural systems globally. Application of phosphorus fertilizer is essential for optimal crop yields when soils are P limiting. Crop simulation models can provide an alternative, less time consuming and inexpensive means of determining the optimum crop P requirements under varied soil and climatic conditions. The CROPGRO-peanut model is capable of simulating the growth and yield of peanut in response to weather, soil, water, nitrogen and management practices but its capability in predicting crop responses to soil and fertilizer P needs to be established. Our objective was to adapt and evaluate the CROPGRO-peanut model within the DSSAT system to simulate the growth and yield of peanut (Arachis hypogaea) in response to soil and fertilizer P. Data from four P fertilizer treatments (0, 13, 26 and 39 kg P ha(-1)) and two cropping seasons (2002 and 2003) experiments on an Alfisol were used to calibrate the model. The model was tested using two data sets from a P fertilizer x cultivar trial conducted on-station in 1997 and 1998 and P fertilizer x fungicide trials on-farm in 2002. The limited testing showed that the P module accurately simulated the seasonal patterns of aboveground biomass and pod yield in the on-farm trials. Averaged across sampling dates RMSEs in the on-farm trials ranged from 100 to 398 kg ha(-1) (d >= 0.99) for total biomass and from 97 to 263 kg ha(-1) (d values >= 0.98) for pod yield. At final harvest, the variability of simulated biomass and pod yield was about 5.4 and 10.0% of the observed biomass and pod yield respectively. In the P fertilizer x cultivar trial, the variability of simulated biomass and pod yield were 22 and 13% for cv. F-Mix and 19 and 5% for cv. Chinese respectively. The model simulated the seasonal patterns of vegetative P content in the four farmers' fields fairly well with RMSEs ranging from 0.28 to 1.29 kg ha(-1) when averaged across measurements dates. The model outputs were sensitive to soil P test values, the method of P fertilizer application and to plant P uptake factors, such as root P extraction radius and root length density. There were differences in the sensitivity of the simulations to changes in target tissue P concentrations. Increasing or decreasing the optimum P concentration of seed and minimum P concentrations of leaf and stem had the greatest effects on pod yield compared to other plant parts. We conclude that the generic soil and plant P model in DSSAT 4.5 is capable of simulating peanut growth and yield in response to soil P levels or fertilizer application on an Alfisol. (C) 2015 Elsevier B.V. All rights reserved.
机译:磷缺乏是全球许多农业系统中作物生产的主要制约因素。当土壤限磷时,磷肥的施用对于获得最佳作物产量至关重要。作物模拟模型可以提供一种替代方法,其耗时少且成本低廉,可以在变化的土壤和气候条件下确定最佳的作物P需求。 CROPGRO-花生模型能够模拟花生的生长和产量,以响应天气,土壤,水,氮和管理措施,但是还需要建立预测作物对土壤和肥料P响应的能力。我们的目标是在DSSAT系统中适应并评估CROPGRO-花生模型,以模拟花生(Achiachis hypogaea)对土壤和肥料P的生长和产量。来自四种P肥料处理的数据(0、13、26和39) kg P ha(-1))和两个耕种季节(2002和2003)在Alfisol上进行的实验用于校准模型。该模型使用1997年和1998年在站点上进行的P肥料x品种试验以及2002年在农场进行的P肥料x杀菌剂试验的两个数据集进行了测试。有限的测试表明,P模块可以准确模拟地上的季节性模式农场试验中的生物量和豆荚产量。在农场试验中,采样日期的平均RMSEs对于总生物量而言为100到398 kg ha(-1)(d> = 0.99),对于97-263 kg ha(-1)(d值> = 0.98)豆荚产量。在最终收获时,模拟生物量和豆荚产量的变异性分别约为观察到的生物量和豆荚产量的5.4%和10.0%。在磷肥x品种试验中,模拟生物量和豆荚产量的变异性分别为22%和13%。 F-Mix,19和5%(简历)。分别是中文。该模型很好地模拟了四个农民田地中营养性P含量的季节性模式,RMSE跨测量日期取平均值,范围为0.28至1.29 kg ha(-1)。模型输出对土壤磷测试值,磷肥施用方法和植物磷吸收因子(例如根磷提取半径和根长密度)敏感。模拟对目标组织P浓度变化的敏感性存在差异。与其他植物部位相比,增加或减少种子的最佳磷浓度以及叶片和茎的最低磷浓度对荚果产量的影响最大。我们得出结论,DSSAT 4.5中的通用土壤和植物P模型能够模拟花生的生长和产量,以响应土壤P水平或在Alfisol上施用肥料。 (C)2015 Elsevier B.V.保留所有权利。

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