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Tracking the model: Data assimilation by artificial neural network

机译:跟踪模型:人工神经网络的数据同化

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To generate reliable forecasts, we need good estimates of both the current system state and the model parameters. Numerical weather prediction (NWP) uses atmospheric general circulation models (AGCMs) to predict weather based on current weather conditions. The process of entering observation data into mathematical model to generate the accurate initial conditions is called data assimilation (DA). It combines observations, forecasting, and filtering step. The data assimilation process is performed by using artificial neural networks (NN) to obtain the initial condition to the atmospheric global model for the Florida State University (in USA. The NN is configured to emulate the analysis computed from the Local Ensemble Transform Kalman filter (LETKF) analysis. The method is tested employing synthetic observations. Multilayer Perceptron neural network is applied, with supervised training algorithm. An optimal configuration for the NN is obtained by solving an associated optimization problem. The data assimilation cycle is carried out at January, 2004. The results demonstrate the effectiveness of the NN technique for atmospheric data assimilation, with better computational performance and similar quality of LETKF analyses.
机译:为了生成可靠的预测,我们需要对当前系统状态和模型参数的良好估计。数值天气预报(NWP)使用大气通用循环模型(AGCMS)来预测基于当前天气条件的天气。将观察数据进入数学模型以生成准确的初始条件的过程称为数据同化(DA)。它结合了观察,预测和过滤步骤。通过使用人工神经网络(NN)来实现数据同化过程,以获得佛罗里达州立大学大气全球模型的初始条件(在美国。NN配置为仿真从本地集合变换卡尔曼滤波器计算的分析( Letkf)分析。采用合成观测测试该方法。利​​用监督训练算法来测试多层的Perceptron神经网络。通过解决相关的优化问题,获得了Nn的最佳配置。数据同化周期是在2004年1月进行的。结果证明了NN技术对大气数据同化的有效性,具有更好的计算性能和类似LetkF分析的质量。

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