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Beyond the logistic growth model for nitrous oxide emission factors from agricultural soils

机译:超出农业土壤中氧化亚氮排放因子的物流生长模型

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Measurement of nitrous oxide emission in the dairy farm is a time-consuming process. The alternative approach is to run a realistic process-based model. The NZ-DNDC model is capable of generating reasonable results in a short time. The model is driven by weather and soil parameters that have a high degree of temporal (weather) and spatial (soil properties) variability. This variability in soil and weather parameters leads to uncertainty in the predicted nitrous oxide emissions. This paper examines the possibility of developing a simplified model to investigate the effects of variation in individual weather or soil parameters on nitrous oxide emission. This study undertakes to apply the logistic growth model with secondary growth effects to model the growth of the nitrous oxide emission factor with environmental variables. The generalized model considered here allows for the inclusion of secondary growth with the addition of only one extra parameter, unlike many bi-logistic growth models which double the number of parameters. The model has the capability to generate the generalized logistic behavior as well as a number of different realistic growth and decay behaviors. A nonlinear least-squares regression algorithm is described that provides parameter estimates from time-series growth data. This is an iterative process that starts with an initial realistic guess of the parameters. The modified technique presented here computes the correction term which is multiplied to the old parameter to get the new value. This is a more robust technique that allows for a little non-linearity around the solution. Model sensitivity and robustness are discussed in relation to error structure in the data. Taxonomy and examples of systems of greenhouse gas emission that exhibit secondary growth or decay are presented. The model is shown to be superior to the simple logistic model for representing many growth processes.
机译:乳制品农场中氧化二氮排放的测量是耗时的过程。替代方法是运行基于现实的过程的模型。 NZ-DNDC模型能够在短时间内产生合理的结果。该模型由具有高度时间(天气)和空间(土壤性质)可变性的天气和土壤参数驱动。土壤和天气参数的这种变异性导致预测的一氧化二氮氧化物排放中的不确定性。本文探讨了开发简化模型,以研究各个天气或土壤参数变异对氧化亚氮排放的影响的可能性。本研究承诺利用二次生长效应应用逻辑生长模型,以模拟氧化亚氮排放因子的生长与环境变量。这里考虑的广义模型允许将次要生长包含在仅添加一个额外参数,与许多双逻辑生长模型不同,这是一个双逻辑的参数的数量。该模型具有能够产生广义逻辑行为以及许多不同的逼真增长和衰减行为。描述了非线性最小二乘回归算法,其提供来自时序增长数据的参数估计。这是一个迭代过程,它从参数的初始逼真猜测开始。此处呈现的修改技术计算乘以乘以旧参数以获得新值的校正项。这是一种更强大的技术,允许解决方案周围的少量非线性。模型敏感性和鲁棒性与数据中的错误结构有关。提出了表现出次要生长或衰减的温室气体排放系统的分类和实例。该模型被示出优于代表许多增长过程的简单逻辑模型。

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