首页> 外文期刊>Land Degradation and Development >PREDICTING CARBON STOCKS FOLLOWING REFORESTATION OF PASTURES: A SAMPLING SCENARIO-BASED APPROACH FOR TESTING THE UTILITY OF FIELD-MEASURED AND REMOTELY DERIVED VARIABLES
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PREDICTING CARBON STOCKS FOLLOWING REFORESTATION OF PASTURES: A SAMPLING SCENARIO-BASED APPROACH FOR TESTING THE UTILITY OF FIELD-MEASURED AND REMOTELY DERIVED VARIABLES

机译:预测牧场重新造林后的碳储备:一种用于测试现场测量和远程导出变量的实用性的基于采样方案的方法

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Reforestation of agricultural lands is an important means of restoring land and sequestering carbon (C). At large scales, the labour and costs of direct measurement of ecosystem responses can be prohibitive, making the development of models valuable. Here, we develop a new sampling scenario-based modelling approach coupled with Bayesian model averaging to build predictive models for absolute values in mixed-species woody plantings and differences from their adjacent pasture, for litter stocks, soil C stocks and soil C:N ratios. Modelling scenarios of increasing data availability and effort were tested. These included variables that could be derived without a site visit (e.g. location, climate and management) that were sampled in the adjacent pasture (e.g. soil C and nutrients) or were sampled in the environmental planting (e.g. vegetation, litter properties, soil C and nutrients). The predictive power of models varied considerably among C variables (litter stocks, soil C stocks and soil C: N ratios in tree plantings and their differences to their adjacent pastures) and the model scenarios used. The use of a sampling scenario-based approach to building predictive models shows promise for monitoring changes in tree plantings, following reforestation. The approach could also be readily adapted to other contexts where sampling effort for predictor variables in models is a major potential limitation to model utilization. This study demonstrates the benefit of exploring scenarios of data availability during modelling and will be especially valuable where the sampling effort differs greatly among variables. Copyright (C) 2016 John Wiley & Sons, Ltd.
机译:农业土地的重新造林是恢复土地和螯合碳(C)的重要手段。在大规模的尺度上,劳动力和直接测量生态系统反应的成本可能是令人畏惧的,使模型的发展有价值。在这里,我们开发了一种新的采样方案的建模方法,与贝叶斯模型进行平均,以构建混合物种木质种植和与其相邻牧场差异的绝对值的预测模型,用于凋落物库存,土壤C库存和土壤C:n比率。测试了增加数据可用性和努力的建模情景。这些包括在没有站点访问的情况下衍生的变量(例如,在邻近的牧场(例如土壤C和营养物质)中取样或在环境种植中取样(例如植被,垃圾属性,土壤C和营养素)。模型的预测力量在C变量(垃圾堆,土壤C股和土壤C:N比率以及它们与其相邻牧场的差异)中变化显着各种各样地变化,并且使用了模型情景。在重新造林之后,使用基于样本的基于方案的方法来构建预测模型的监测变化的承诺。该方法也可以很容易地适应其他语境,其中模型中预测器变量的采样努力是模型利用的主要潜在限制。本研究表明,在建模期间探索数据可用性的情况,并且在变量中的采样效果大大不同的情况下将特别有价值。版权所有(c)2016 John Wiley& SONS,LTD.

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