首页> 外文会议>Conference on remote sensing and modeling of the atmosphere, oceans, and interactions VI >Improvement of Systematic Bias of mean state and the intraseasonal variability of CFSv2 through superparameterization and revised cloud-convetion-radiation parameterization
【24h】

Improvement of Systematic Bias of mean state and the intraseasonal variability of CFSv2 through superparameterization and revised cloud-convetion-radiation parameterization

机译:通过超公数化和修正云互联 - 辐射参数化改善平均状态的平均状态和综合变异性和CFSV2的综合变异性

获取原文

摘要

Inspite of significant improvement in numerical model physics, resolution and numerics, the general circulation models (GCMs) find it difficult to simulate realistic seasonal and intraseasonal variabilities over global tropics and particularly over Indian summer monsoon (ISM) region. The bias is mainly attributed to the improper representation of physical processes. Among all the processes, the cloud and convective processes appear to play a major role in modulating model bias. In recent times, NCEP CFSv2 model is being adopted under Monsoon Mission for dynamical monsoon forecast over Indian region. The analyses of climate free run of CFSv2 in two resolutions namely at T126 and T382, show largely similar bias in simulating seasonal rainfall, in capturing the intraseasonal variability at different scales over the global tropics and also in capturing tropical waves. Thus, the biases of CFSv2 indicate a deficiency in model's parameterization of cloud and convective processes. Keeping this in background and also for the need to improve the model fidelity, two approaches have been adopted. Firstly, in the superparameterization, 32 cloud resolving models each with a horizontal resolution of 4 km are embedded in each GCM (CFSv2) grid and the conventional sub-grid scale convective parameterization is deactivated. This is done to demonstrate the role of resolving cloud processes which otherwise remain unresolved. The superparameterized CFSv2 (SP-CFS) is developed on a coarser version T62. The model is integrated for six and half years in climate free run mode being initialised from 16 May 2008. The analyses reveal that SP-CFS simulates a significantly improved mean state as compared to default CFS. The systematic bias of lesser rainfall over Indian land mass, colder troposphere has substantially been improved. Most importantly the convectively coupled equatorial waves and the eastward propagating MJO has been found to be simulated with more fidelity in SP-CFS. The reason of such betterment in model mean state has been found to be due to the systematic improvement in moisture field, temperature profile and moist instability. The model also has better simulated the cloud and rainfall relation. This initiative demonstrates the role of cloud processes on the mean state of coupled GCM. As the superparameterization approach is computationally expensive, so in another approach, the conventional Simplified Arakawa Schubert (SAS) scheme is replaced by a revised SAS scheme (RSAS) and also the old and simplified cloud scheme of Zhao-Karr (1997) has been replaced by WSM6 in CFSV2 (hereafter CFS-CR). The primary objective of such modifications is to improve the distribution of convective rain in the model by using RSAS and the grid-scale or the large scale non-convective rain by WSM6. The WSM6 computes the tendency of six class (water vapour, cloud water, ice, snow, graupel, rain water) hydrometeors at each of the model grid and contributes in the low, middle and high cloud fraction. By incorporating WSM6, for the first time in a global climate model, we are able to show a reasonable simulation of cloud ice and cloud liquid water distribution vertically and spatially as compared to Cloudsat observations. The CFS-CR has also showed improvement in simulating annual rainfall cycle and intraseasonal variability over the ISM region. These improvements in CFS-CR are likely to be associated with improvement of the convective and stratiform rainfall distribution in the model. These initiatives clearly address a long standing issue of resolving the cloud processes in climate model and demonstrate that the improved cloud and convective process paramterizations can eventually reduce the systematic bias and improve the model fidelity.
机译:在数值模型物理分辨率和数字,一般环流模式(GCM)难以模拟对全球热带现实季节和季节内可变性,特别是在印度夏季风(ISM)区域显著改善Inspite。偏置主要归因于物理过程的表示不当。在所有的过程,云和对流过程似乎在调控模型偏差了重要作用。最近一个时期,NCEP CFSv2模型正处于季风使命采用了预测印度地区季风动力学。即在以T126和T382两种分辨率CFSv2气候自由滑行的分析,显示出模拟季节性降雨,在对全球热带地区不同规模的捕捉季节内变化,也捕捉东风波大致相同的偏见。因此,CFSv2的偏见表明云和对流过程的模型参数的缺乏。这个背景,也为需要提高模型的保真度保持,有两种方法已被采纳。首先,在superparameterization,32种云分辨模式各自具有4公里的水平分辨率被嵌入在每个GCM(CFSv2)网格和常规子网格尺度对流参数被停用。这样做是为了演示解决云计算的过程,否则仍然没有得到解决的作用。该superparameterized CFSv2(SP-CFS)是一个粗糙的版本T62开发。该模型集成了六年半的时间里气候自由运行模式从2008年5月16日被初始化的分析揭示相比默认CFS是SP-CFS模拟显著提高平均状态。较小的降雨量超过印度国土面积的系统性偏差,对流层较冷已大大得到改善。最重要的,已经发现的对流耦合赤道波和向东传播MJO与在SP-CFS更保真度来模拟。模型的平均状态,例如改善的原因已被发现是由于水分场,温度曲线和潮湿不稳定系统的改进。该模型还具有较好的模拟云和降水的关系。这一举措表明云过程对耦合模式的平均状态的作用。由于superparameterization方法在计算上是昂贵的,所以在另一种方法中,传统的简体荒川舒伯特(SAS)方案被修订SAS方案(RSAS),并且还照卡尔的旧的和简化的云方案(1997)已被替换替换通过(以下CFS-CR)WSM6在CFSV2。这样的修改的主要目的是通过使用RSAS和电网规模或由WSM6大规模非对流雨改善的对流雨模型中的分布。所述WSM6计算6类(水蒸气,云水,冰,雪,霰,雨水)水凝在每个模型网格并有助于在低,中,高云量的倾向。通过将WSM6,在全球气候模型中的第一次,我们能够展现云冰的合理模拟相比,观察Cloudsat云和垂直空间上云水分布。该CFS-CR还显示,在ISM模拟区域年降水量周期和季节内变化的改善。在CFS-CR这些改进都可能与改善该模型中的对流和层云降水分布的关联。这些举措显然针对解决气候模型中的云过程的长期存在的问题,并表明改进云和对流过程paramterizations最终可以降低系统性偏差,提高了模型精度。

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