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A dynamic environment-sensitive site index model for the prediction of site productivity potential under climate change

机译:动态的环境敏感站点指数模型,用于预测气候变化下的站点生产力潜力

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Accurate and reliable predictions of the future development of forest site productivity are crucial for the effective management of forest stands. Static models which simply extrapolate productivity into the future are inappropriate under conditions of environmental change since they lack a close link between fundamental environmental drivers and forest growth processes. Here we present a dynamic environment-sensitive site index model formulated in the framework of a nonlinear state space approach based on longitudinal data from long-term experimental plots. Estimation of the model parameters was carried out using the prediction error minimization method. Our aim was to identify dynamic relationships between site index and environmental variables and to make conditional predictions of the future development of site index under climate change scenarios. Nonlinear, interactive, as well as accumulative effects of environmental factors (climate/weather and nitrogen influx) on the growth response were considered in the model. In the study, we estimated the dynamic environment-sensitive site index model using data from 604 Norway spruce (Picea abies [L.] Karst.) long-term experimental plots in southwest Germany with measurement data covering a period of more than 100 years from the end of the 19th century until today. We used the calibrated model to project future site index changes under increasing growing season temperature scenarios. Conventional climate change impact studies usually utilize a gradient approach and apply space-for-time substitution for the parameterization of models that are calibrated using spatial variability in the data. In contrast, the approach presented here utilizes the longitudinal data structure of multiple real growth time series to simultaneously exploit spatial and temporal variation in the data to provide more reliable and robust projections. Limitations of the space-for-time substitution approach in forest growth modelling are discussed. (C) 2016 Elsevier B.V. All rights reserved.
机译:准确可靠地预测林场生产力的未来发展对于有效管理林分至关重要。在环境变化的情况下,仅将生产率推断到未来的静态模型是不合适的,因为它们在基本的环境驱动因素和森林生长过程之间缺乏紧密的联系。在这里,我们提出了一个基于长期实验图的纵向数据,在非线性状态空间方法框架内制定的动态环境敏感站点指数模型。使用预测误差最小化方法进行模型参数的估计。我们的目标是确定站点索引与环境变量之间的动态关系,并对气候变化情景下站点索引的未来发展进行条件预测。在模型中考虑了非线性,交互式以及环境因素(气候/天气和氮流入)对生长响应的累积影响。在这项研究中,我们使用来自德国西南部的604个挪威云杉(Picea abies [L.] Karst。)长期实验区的数据估计了动态的环境敏感站点指数模型,其测量数据覆盖了距今100多年的历史。 19世纪末直到今天。我们使用校准后的模型来预测生长季节温度升高情况下未来站点指数的变化。常规的气候变化影响研究通常采用梯度方法,并使用时空替代方法来对使用数据中空间变异性进行校准的模型进行参数化。相反,此处介绍的方法利用多个实际增长时间序列的纵向数据结构来同时利用数据中的空间和时间变化,以提供更可靠,更可靠的预测。讨论了森林生长模型中时空替代方法的局限性。 (C)2016 Elsevier B.V.保留所有权利。

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