Using Ensemble of Neural Networks to Learn Stochastic Convection Parameterizations for Climate and Numerical Weather Prediction Models from Data Simulated by a Cloud Resolving Model

V. Krasnopolsky, M. Fox-Rabinovitz, A. Belochitski
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引用次数: 110

Abstract

Anovel approach based on the neural network (NN) ensemble technique is formulated and used for development of aNNstochastic convection parameterization for climate and numerical weather prediction (NWP)models. This fast parameterization is built based on learning fromdata simulated by a cloud-resolvingmodel (CRM) initialized with and forced by the observed meteorological data available for 4-month boreal winter from November 1992 to February 1993. CRM-simulated data were averaged and processed to implicitly define a stochastic convection parameterization. This parameterization is learned from the data using an ensemble of NNs. The NN ensemble members are trained and tested. The inherent uncertainty of the stochastic convection parameterization derived following this approach is estimated. The newly developed NN convection parameterization has been tested in National Center of Atmospheric Research (NCAR) Community AtmosphericModel (CAM). It produced reasonable and promising decadal climate simulations for a large tropical Pacific region. The extent of the adaptive ability of the developed NN parameterization to the changes in the model environment is briefly discussed. This paper is devoted to a proof of concept and discusses methodology, initial results, and the major challenges of using the NN technique for developing convection parameterizations for climate and NWP models.
基于云分辨模式模拟数据的神经网络集成学习气候和数值天气预报模式的随机对流参数化
提出了一种基于神经网络(NN)集成技术的新方法,并将其用于气候和数值天气预报(NWP)模式的随机对流参数化开发。这种快速参数化是基于一个云解析模型(CRM)模拟的数据学习而建立的,该模型是由1992年11月至1993年2月的4个月北方冬季的观测气象资料初始化和强迫的。对crm模拟数据进行平均和处理,以隐式定义随机对流参数化。这种参数化是使用神经网络集合从数据中学习到的。对NN集合成员进行训练和测试。估计了采用这种方法得到的随机对流参数化的固有不确定性。新开发的神经网络对流参数化方法已在美国国家大气研究中心(NCAR)社区大气模型(CAM)中进行了验证。它产生了合理的、有希望的热带太平洋地区的年代际气候模拟。简要讨论了所开发的神经网络参数化对模型环境变化的自适应能力。本文致力于概念的证明,并讨论了使用神经网络技术为气候和NWP模型开发对流参数化的方法、初步结果和主要挑战。
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