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Assessing the influence of canopy snow parameterizations on snow albedo feedback in boreal forest regions

机译:评估冠层积雪参数化对北方森林地区积雪反照率反馈的影响

摘要

Variation in snow albedo feedback (SAF) among CMIP5 climate models has been shown to explain much of the variation in projected 21st Century warming over Northern Hemisphere land. Prior studies using observations and models have demonstrated both considerable spread in the albedo, and a weak bias in the simulated strength of SAF, over snow-covered boreal forests. Boreal evergreen needleleaf forests are capable of intercepting snowfall throughout the snow season, which has a significant impact on seasonal albedo. Two satellite data products and tower-based observations of albedo are compared with simulations from multiple configurations of the Community Climate System Model (CCSM4) to investigate the causes of weak simulated SAF over the boreal forest. The largest bias occurs in April-May when simulated SAF is one-half the strength of SAF in observations. This is traced to two canopy snow parameterizations in the land model. First, there is no mechanism for the dynamic removal of snow from the canopy when temperatures are below freezing, which results in albedo values in midwinter that are biased high. Second, when temperatures do rise above freezing, all snow on the canopy is melted instantaneously, which results in an unrealistically early transition from a snow-covered to a snow-free canopy. These processes combine to produce large differences between simulated and observed monthly albedo, and are the sources of the weak bias in SAF. This analysis highlights the importance of canopy snow parameterizations for simulating the hemispheric scale climate response to surface albedo perturbations. A number of new experiments are described as recommendations for future work.
机译:CMIP5气候模式中雪反照率反馈(SAF)的变化已被证明可以解释北半球土地预计的21世纪变暖的大部分变化。先前使用观测和模型进行的研究表明,在积雪覆盖的北方森林中,反照率的分布范围很广,而SAF模拟强度的偏差较小。北方常绿针叶林能够在整个雪季中拦截降雪,这对季节性反照率有重大影响。将两种卫星数据产品和基于塔的反照率观测值与来自社区气候系统模型(CCSM4)多种配置的模拟结果进行了比较,以研究北方森林中模拟SAF减弱的原因。最大的偏差发生在4月到5月,这时模拟的SAF是观测中SAF强度的一半。这可追溯到土地模型中的两个冠层雪参数化。首先,当温度低于冰点时,没有动态从机盖中除雪的机制,这会导致仲冬的反照率值偏高。其次,当温度确实超过冰点时,冠层上的所有积雪瞬间融化,这导致从积雪覆盖到无雪冠层的不切实际的早期过渡。这些过程结合在一起,在模拟的和观察到的每月反照率之间产生了很大的差异,并且是SAF中弱偏差的来源。该分析突出了冠层积雪参数化对于模拟半球尺度气候对地表反照率摄动的响应的重要性。描述了许多新实验作为对未来工作的建议。

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    Thackeray Chad William;

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  • 年度 2014
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