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The importance of management information and soil moisture representation for simulating tillage effects on N2O emissions in LPJmL5.0-tillage

机译:管理信息和土壤湿度代表的重要性,用于模拟LPJML5.0耕作中N2O排放的耕作效应

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No-tillage is often suggested as a strategy to reduce greenhouse gas emissions. Modeling tillage effects on nitrous oxide?(N2O) emissions is challenging and subject to great uncertainties as the processes producing the emissions are complex and strongly nonlinear. Previous findings have shown deviations between the LPJmL5.0-tillage model (LPJmL: Lund–Potsdam–Jena managed Land) and results from meta-analysis on global estimates of tillage effects on N2O emissions. Here we tested LPJmL5.0-tillage at four different experimental sites across Europe and the USA to verify whether deviations in N2O emissions under different tillage regimes result from a lack of detailed information on agricultural management, the representation of soil water dynamics or both. Model results were compared to observational data and outputs from field-scale DayCent model simulations. DayCent has been successfully applied for the simulation of N2O emissions and provides a richer database for comparison than noncontinuous measurements at experimental sites. We found that adding information on agricultural management improved the simulation of tillage effects on N2O emissions in LPJmL. We also found that LPJmL overestimated N2O emissions and the effects of no-tillage on N2O emissions, whereas DayCent tended to underestimate the emissions of no-tillage treatments. LPJmL showed a general bias to overestimate soil moisture content. Modifications of hydraulic properties in LPJmL in order to match properties assumed in DayCent, as well as of the parameters related to residue cover, improved the overall simulation of soil water and N2O emissions simulated under tillage and no-tillage separately. However, the effects of no-tillage (shifting from tillage to no-tillage) did not improve. Advancing the current state of information on agricultural management and improvements in soil moisture highlights the potential to improve LPJmL5.0-tillage and global estimates of tillage effects on N2O emissions.
机译:常规认为无耕作作为减少温室气体排放的策略。对氧化亚氮的造型耕作效应?(N2O)排放是具有挑战性的,并且由于产生排放的过程是复杂和强烈的非线性的巨大不确定性而受到巨大的不确定性。以前的研究结果显示了LPJML5.0耕作模型(LPJML:LPJML:LUND-POTSDAM-JENA管理土地)之间的偏差,以及META分析的结果对N2O排放的全球耕作效应估计。在这里,我们在欧洲和美国的四个不同实验部位测试了LPJML5.0耕作,以验证在不同耕作制度下的N2O排放中的偏差是否因缺乏有关农业管理的详细信息,土壤水动态或两者的陈述。将模型结果与现场级的主体模型模拟的观察数据和输出进行比较。 Dencent已成功应用于模拟N2O排放,并提供比实验位点的非连续测量比较的更丰富的数据库。我们发现添加有关农业管理信息的信息改善了LPJML中N2O排放的耕作效应的模拟。我们还发现,LPJML高估N2O排放和No-Tillage对N2O排放的影响,而活性倾向于低估无耕作治疗的排放。 LPJML展示了一般偏见,以估计土壤含水量。改进LPJML中的液压性能,以匹配在中生的特性,以及与残留盖相关的参数,改善了耕作下的土壤水和N2O排放的整体模拟,分别地模拟了耕作。然而,无耕作的影响(从耕作到无耕作)没有改善。推进目前农业管理信息状况和土壤水分的改善突出了改善LPJML5.0耕作和对N2O排放的耕作效应的全球估计。

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