...
首页> 外文期刊>Atmospheric Chemistry and Physics Discussions >Evaluation of cloud fraction and its radiative effect simulated by IPCC AR4 global models against ARM surface observations
【24h】

Evaluation of cloud fraction and its radiative effect simulated by IPCC AR4 global models against ARM surface observations

机译:IPCC AR4全局模型针对ARM表面观测评估云量及其辐射效应

获取原文
           

摘要

pstrongAbstract./strong Cloud Fraction (CF) is the dominant modulator of radiative fluxes. In this study, we evaluate CF simulated in the IPCC AR4 GCMs against ARM long-term ground-based measurements, with a focus on the vertical structure, total amount of cloud and its effect on cloud shortwave transmissivity. Comparisons are performed for three climate regimes as represented by the Department of Energy Atmospheric Radiation Measurement (ARM) sites Southern Great Plains (SGP), Manus, Papua New Guinea and North Slope of Alaska (NSA). Our intercomparisons of three independent measurements of CF or sky-cover reveal that the relative differences are usually less than 10% (5%) for multi-year monthly (annual) mean values, while daily differences are quite significant. The total sky imager (TSI) produces smaller total cloud fraction (TCF) compared to a radar/lidar dataset for highly cloudy days (CF 0.8), but produces a larger TCF value than the radar/lidar for less cloudy conditions (CF 0.3). The compensating errors in lower and higher CF days result in small biases of TCF between the vertically pointing radar/lidar dataset and the hemispheric TSI measurements as multi-year data is averaged. The unique radar/lidar CF measurements enable us to evaluate seasonal variation of cloud vertical structures in the GCMs. brbr Both inter-model deviation and model bias against observation are investigated in this study. Another unique aspect of this study is that we use simultaneous measurements of CF and surface radiative fluxes to diagnose potential discrepancies among the GCMs in representing other cloud optical properties than TCF. The results show that the model-observation and inter-model deviations have similar magnitudes for the TCF and the normalized cloud effect, and these deviations are larger than those in surface downward solar radiation and cloud transmissivity. This implies that other dimensions of cloud in addition to cloud amount, such as cloud optical thickness and/or cloud height, have a similar magnitude of disparity as TCF within the GCMs, and suggests that the better agreement among GCMs in solar radiative fluxes could be a result of compensating effects from errors in cloud vertical structure, overlap assumption, cloud optical depth and/or cloud fraction. The internal variability of CF simulated in ensemble runs with the same model is minimal. Similar deviation patterns between inter-model and model-measurement comparisons suggest that the climate models tend to generate larger biases against observations for those variables with larger inter-model deviation. brbr The GCM performance in simulating the probability distribution, transmissivity and vertical profiles of cloud are comprehensively evaluated over the three ARM sites. The GCMs perform better at SGP than at the other two sites in simulating the seasonal variation and probability distribution of TCF. However, the models remarkably underpredict the TCF at SGP and cloud transmissivity is less susceptible to the change of TCF than observed. In the tropics, most of the GCMs tend to underpredict CF and fail to capture the seasonal variation of CF at middle and low levels. The high-level CF is much larger in the GCMs than the observations and the inter-model variability of CF also reaches a maximum at high levels in the tropics, indicating discrepancies in the representation of ice cloud associated with convection in the models. While the GCMs generally capture the maximum CF in the boundary layer and vertical variability, the inter-model deviation is largest near the surface over the Arctic./p.
机译:> >摘要。云分数(CF)是辐射通量的主要调制器。在这项研究中,我们评估了IPCC AR4 GCM中针对ARM长期地面测量而模拟的CF,重点是垂直结构,云总量及其对云短波透射率的影响。以能源大气辐射测量部(ARM)的站点为代表的三种气候体制进行了比较,这些站点分别位于大平原南部(SGP),Manus,巴布亚新几内亚和阿拉斯加北坡(NSA)。我们对CF或天空覆盖层的三个独立测量值的比较表明,多年月(年)平均值的相对差异通常小于10%(5%),而每日差异非常显着。与高多云天(CF> 0.8)的雷达/激光雷达数据集相比,全天候成像仪(TSI)产生的总云分数(TCF)较小,但在低多云条件下(CF < 0.3)。在较低和较高CF天中的补偿误差会导致垂直指向的雷达/激光雷达数据集与半球TSI测量值之间的TCF偏差较小,因为这是多年数据的平均值。独特的雷达/雷达CF测量值使我们能够评估GCM中云垂直结构的季节变化。 本研究研究了模型间偏差和模型对观察的偏差。这项研究的另一个独特方面是,我们使用CF和表面辐射通量的同时测量来诊断GCM之间的潜在差异,以代表TCF以外的其他云光学特性。结果表明,TCF和归一化云效应的模型观测和模型间偏差具有相似的幅度,并且这些偏差大于表面向下的太阳辐射和云透射率的偏差。这意味着除云量以外,其他云尺寸(例如云光学厚度和/或云高度)与GCM内的TCF具有相似的差异程度,并暗示GCM之间在太阳辐射通量方面的更好一致性是云垂直结构,重叠假设,云光学深度和/或云分数的误差补偿效应的结果。使用同一模型在集合运行中模拟的CF的内部变化最小。模型间比较与模型度量比较之间的相似偏差模式表明,气候模型倾向于对那些模型间偏差较大的变量产生较大的观测偏差。 在三个ARM站点上全面评估了GCM在模拟云的概率分布,透射率和垂直剖面方面的性能。在模拟TCF的季节变化和概率分布方面,GCM在SGP上比其他两个站点表现更好。但是,这些模型显着地预测了SGP的TCF,并且云的透射率比所观察到的更不易受TCF变化的影响。在热带地区,大多数GCM趋向于低估CF,无法捕捉中低水平CF的季节性变化。 GCM中的高层CF比观测值要大得多,并且CF的模型间变异性在热带高水平也达到最大值,表明模型中与对流有关的冰云表示存在差异。虽然GCM通常会在边界层和垂直变化中捕获最大CF,但是模型间的偏差在北极表面附近最大。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号