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首页> 外文期刊>Ecological Modelling >Resolving model parameter values from carbon and nitrogen stock measurements in a wide range of tropical mature forests using nonlinear inversion and regression trees
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Resolving model parameter values from carbon and nitrogen stock measurements in a wide range of tropical mature forests using nonlinear inversion and regression trees

机译:使用非线性反演和回归树,从各种热带成熟森林的碳和氮储量测量值中解析模型参数值

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Objectively assessing the performance of a model and deriving model parameter values from observations are critical and challenging in landscape to regional modeling. In this paper, we applied a nonlinear inversion technique to calibrate the ecosystem model CENTURY against carbon (C) and nitrogen (N) stock measurements collected from 39 mature tropical forest sites in seven life zones in Costa Rica. Net primary productivity from the Moderate-Resolution Imaging Spectroradiometer (MODIS), C and N stocks in aboveground live biomass, litter, coarse woody debris (CWD), and in soils were used to calibrate the model. To investigate the resolution of available observations on the number of adjustable parameters, inversion was performed using nine setups of adjustable parameters. Statistics including observation sensitivity, parameter correlation coefficient, parameter sensitivity, and parameter confidence limits were used to evaluate the information content of observations, resolution of model parameters, and overall model performance. Results indicated that soil organic carbon content, soil nitrogen content, and total aboveground biomass carbon had the highest information contents, while measurements of carbon in litter and nitrogen in CWD contributed little to the parameter estimation processes. The available information could resolve the values of 2-4 parameters. Adjusting just one parameter resulted in under-fitting and unacceptable model performance, while adjusting five parameters simultaneously led to over-fitting. Results further indicated that the MODIS NPP values were compressed as compared with the spatial variability of net primary production (NPP) values infer-red from inverse modeling. Using inverse modeling to infer NPP and other sensitive model parameters from C and N stock observations provides an opportunity to utilize data collected by national to regional forest inventory systems to reduce the uncertainties in the carbon cycle and generate valuable databases to validate and improve MODIS NPP algorithms.
机译:在景观到区域建模中,客观地评估模型的性能并从观察中得出模型参数值是至关重要的且具有挑战性。在本文中,我们应用了非线性反演技术来针对从哥斯达黎加七个生活区的39个成熟热带森林站点收集的碳(C)和氮(N)储量测量值对生态系统模型CENTURY进行校准。使用中等分辨率成像光谱仪(MODIS)的净初级生产力,地上活生物量,垫料,粗木屑(CWD)和土壤中的C和N储量来校准模型。为了研究关于可调参数数量的可用观测结果的分辨率,使用了九种可调参数设置进行了反演。统计数据包括观测灵敏度,参数相关系数,参数灵敏度和参数置信度极限,用于评估观测的信息内容,模型参数的分辨率和整体模型性能。结果表明,土壤有机碳含量,土壤氮含量和地上总生物量碳具有最高的信息含量,而对凋落物中碳和CWD中氮的测量对参数估算过程的贡献很小。可用信息可以解析2-4个参数的值。仅调整一个参数会导致拟合不足和无法接受的模型性能,而同时调整五个参数会导致拟合过度。结果进一步表明,与通过逆建模推断的净初级生产(NPP)值的空间变异性相比,MODIS NPP值得到了压缩。使用逆模型从C和N储量观测值推断NPP和其他敏感模型参数提供了利用国家到区域森林清单系统收集的数据的机会,以减少碳循环的不确定性并生成有价值的数据库来验证和改进MODIS NPP算法。

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