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首页> 外文期刊>Theoretical and applied climatology >Characterizing uncertainties in the ESA-CCI land cover map of the epoch 2010 and their impacts on MPI-ESM climate simulations
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Characterizing uncertainties in the ESA-CCI land cover map of the epoch 2010 and their impacts on MPI-ESM climate simulations

机译:描述2010年ESA-CCI土地覆盖图中的不确定性及其对MPI-ESM气候模拟的影响

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Limitations of mapping land surface properties and their conversion into climate model boundary conditions are major sources of uncertainty in climate simulations. In this paper, the range of the largest possible uncertainty in satellite-derived land cover (LC) map is estimated and its impact on climate simulations is quantified with the Earth System Model of the Max-Planck Institute for Meteorology utilizing prescribed sea surface temperature and sea ice. Two types of uncertainty in the LC map are addressed: (i) uncertainty due to classification algorithm of spectral reflectance into LC classes, and (ii) uncertainty due to conversion of LC classes into the climate model vegetation distribution. For forest cover, each of them is about the same order of magnitude as the uncertainty range in recent observations (similar to +/- 700 Mha). Superposing two sources of uncertainty results in LC maps that feature the range of vegetation deviation that is about the same order of magnitude as the recent (since year 1700) forest loss due to agriculture (forest cover uncertainty range similar to +/- 1700 Mha). These uncertainties in vegetation distribution lead to noticeable variations in near-surface climate variables, local, regional, and global climate forcing. Temperature does not show significant uncertainty in global mean, but rather exhibits regional deviations with an opposite response to LC uncertainty that compensate each other in the global mean (e.g., albedo feedback controls temperature in boreal North America resulting in cooling (warming) with decrease (increase) of vegetation while evaporative cooling controls temperature in South America and sub-Saharan Africa resulting in cooling (warming) with increase (decrease) of vegetation). Large-scale circulation is also affected by the LC uncertainty, and consequently precipitation pattern as well. It is demonstrated that precipitation uncertainty in the monsoonal regions are about the same order of magnitude as in previous studies with idealized perturbations of vegetation. These findings indicate that the range of uncertainty in satellite-derived vegetation maps for climate models is about the same order of magnitude as the uncertainty in recent observations of forest cover or as the forest lost due to agriculture. Consequently, climate simulations have a similar range of uncertainty in variables representing near-surface climate as the observed climate change due to land use. Hence, more accurate methods are needed for mapping and converting LC properties into model vegetation in order to increase reliability of climate model simulations.
机译:绘制地表特性并将其转换为气候模型边界条件的局限性是气候模拟不确定性的主要来源。在本文中,估算了卫星衍生的土地覆盖(LC)地图中最大可能不确定性的范围,并使用规定的海表温度和最大水温通过马克斯-普朗克气象研究所的地球系统模型量化了其对气候模拟的影响。海冰。解决了LC图中的两种类型的不确定性:(i)由于将光谱反射率分类为LC类而导致的不确定性,以及(ii)由于将LC类转换为气候模型植被分布而导致的不确定性。就森林覆盖而言,它们中的每一个都与最近观测到的不确定性范围大致相同数量级(类似于+/- 700 Mha)。在LC图中叠加两个不确定性源,其特征在于植被偏差的范围与最近(自1700年以来)由于农业造成的森林流失数量级相同(林业覆盖范围的不确定性类似于+/- 1700 Mha) 。植被分布的这些不确定性导致近地表气候变量,局部,区域和全球气候强迫的明显变化。温度并未在整体平均值中显示出明显的不确定性,而是表现出对LC不确定性具有相反响应的区域偏差,从而在整体平均值中相互补偿(例如,反照率反馈控制了北美北部地区的温度,导致温度降低(变暖)(蒸发冷却控制南美和撒哈拉以南非洲地区的温度,导致植被增加(减少)而导致冷却(变暖)。大规模的环流还受到LC不确定性的影响,因此也受降水模式的影响。结果表明,季风区的降水不确定性与先前研究的理想化植被扰动大致相同数量级。这些发现表明,气候模型的卫星植被图的不确定性范围与最近观测到的森林覆盖率的不确定性或由于农业造成的森林损失的幅度大致相同。因此,气候模拟在代表近地表气候的变量中具有与观测到的土地使用引起的气候变化相似的不确定性范围。因此,需要更准确的方法来将LC属性映射并转换为模型植被,以提高气候模型模拟的可靠性。

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