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Bayesian analysis of uncertainty in the GlobCover 2009 land cover product at climate model grid scale

机译:对气候模型网格规模的GlobCover 2009土地覆盖产品不确定性的贝叶斯分析

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摘要

Land cover data derived from satellites are commonly used to prescribe inputs to models of the land surface. Since such data inevitably contains errors, quantifying how uncertainties in the data affect a model’s output is important. To do so, a spatial distribution of possible land cover values is required to propagate through the model’s simulation. However, at large scales, such as those required for climate models, such spatial modelling can be difficult. Also, computer models often require land cover proportions at sites larger than the original map scale as inputs, and it is the uncertainty in these proportions that this article discusses. This paper describes a Monte Carlo sampling scheme that generates realisations of land cover proportions from the posterior distribution as implied by a Bayesian analysis that combines spatial information in the land cover map and its associated confusion matrix. The technique is computationally simple and has been applied previously to the Land Cover Map 2000 for the region of England and Wales. This article demonstrates the ability of the technique to scale up to large (global) satellite derived land cover maps and reports its application to the GlobCover 2009 data product. The results show that, in general, the GlobCover data possesses only small biases, with the largest belonging to non–vegetated surfaces. In vegetated surfaces, the most prominent area of uncertainty is Southern Africa, which represents a complex heterogeneous landscape. It is also clear from this study that greater resources need to be devoted to the construction of comprehensive confusion matrices.
机译:从卫星获得的土地覆盖数据通常用于规定对地表模型的输入。由于此类数据不可避免地包含错误,因此量化数据的不确定性如何影响模型的输出非常重要。为此,需要在可能的土地覆被值上进行空间分布,以通过模型的模拟进行传播。但是,在诸如气候模型所需的大规模应用中,这样的空间建模可能很困难。另外,计算机模型通常需要比原始地图比例更大的地点的土地覆盖比例作为输入,而本文讨论的正是这些比例的不确定性。本文描述了一种蒙特卡洛采样方案,该方案通过贝叶斯分析隐含的后验分布来生成土地覆盖比例,该贝叶斯分析结合了土地覆盖图中的空间信息及其相关的混淆矩阵。该技术的计算简单,以前已应用于英格兰和威尔士地区的Land Cover Map 2000。本文演示了该技术能够放大到大型(全球)卫星衍生的土地覆盖图的能力,并将其应用于GlobCover 2009数据产品。结果表明,总的来说,GlobCover数据仅具有较小的偏差,其中最大的偏差属于非植被表面。在植被表面,不确定性最突出的区域是南部非洲,它代表着复杂的异质景观。从这项研究中还可以清楚地看到,需要将更多的资源用于构建综合混淆矩阵。

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