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Simulation and prediction of soil organic carbon spatial change in arable lands based on DNDC model

机译:基于DNDC模型的耕地土壤有机碳空间变化模拟与预测

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Soil organic carbon (SOC) change not only affects soil fertility and productivity, but also plays an important role to clarify the potential for regional soil carbon sequestration and the impact of global climate change. The method of predicting the SOC trends based on model is superior to methods of long-term experiment and soil sample collecting on the time scale. Because of the spatial and regional variability of climate, soil and farming system, SOC change simulation and prediction on the spatial scale has defect in terms of regional representation and simulation accuracy if using several points or county as modeling unit. In order to improve the accuracy of SOC change prediction on regional and spatial scale, this study simulated the effects of 4 fertilizer application treatments of past 16 years (1990–2005) on SOC change based on DNDC model using data from the long-term experiment station of Gongzhuling of Jilin province in China, and validated the DNDC model. Then the modeling units of Jilin province was divided according to the spatial variability characteristics of climate, soil by using geographic information system (GIS) technology. SOC spatial change trends of Jilin in next 60 years (2011–2070) were simulated and predicted by 3 kinds of scenarios designation on future climate changes (climate repeat, Precis B2 and Precis A2) and spring corn planning. The results showed: (1) DNDC model can be used for SOC simulation and predictions for the study area. The root mean square error (RMSE) were less than 10% comparing SOC measured values to simulated values for 4 fertilizer application treatments. (2) SOC spatial changes simulation and prediction of Jilin based on DNDC model indicated that 60% areas of arable land SOC trended to increase from 2011–2070 under the scenario of climate repeat and spring corn plant, 28% trended to decrease. Under the climate scenario of Precis A2, the area of SOC increase and decrease kept balance. Under th- climate scenario of Precis B2, 60% areas of arable land SOC trended to decrease. (3) Under modeling units division by using spatial heterogeneity of climate and soil, the results of SOC simulation and prediction in regional scale are more reasonable as opposed to a few typical points or the county unit as modeling unit.
机译:土壤有机碳(SOC)的变化不仅影响土壤的肥力和生产力,而且在阐明区域性土壤碳固存的潜力和全球气候变化的影响方面也起着重要作用。基于模型的SOC趋势预测方法优于长期实验和时间尺度上土壤样品采集的方法。由于气候,土壤和耕作系统的空间和区域变异性,如果使用多个点或县作为建模单位,则在空间尺度上的SOC变化模拟和预测在区域表示和模拟准确性方面存在缺陷。为了提高区域和空间尺度上SOC变化预测的准确性,本研究使用长期实验数据,基于DNDC模型模拟了过去16年(1990-2005)的4种施肥处理对SOC变化的影响。中国吉林省公主岭市的加油站,并验证了DNDC模型。然后,利用地理信息系统(GIS),根据气候,土壤的空间变异特征,对吉林省的建模单元进行了划分。通过对未来气候变化的三种情景设定(气候重复,Precis B2和Precis A2)和春玉米计划,对吉林省未来60年(2011-2070年)SOC的空间变化趋势进行了模拟和预测。结果表明:(1)DNDC模型可用于研究区域的SOC模拟和预测。将SOC测量值与4种肥料施用处理的模拟值进行比较,均方根误差(RMSE)小于10%。 (2)基于DNDC模型的吉林省SOC空间变化模拟和预测表明,在气候重复和春玉米种植的情况下,2011-2070年耕地SOC面积有增加的趋势,而28-20%的趋势是减少。在Precis A2的气候情景下,SOC的增加和减少面积保持平衡。在Precis B2的气候情景下,60%的耕​​地SOC趋于减少。 (3)在利用气候和土壤空间异质性进行建模单位划分的情况下,与几个典型点或县级单位作为建模单位相比,区域尺度上的SOC模拟和预测结果更为合理。

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