Global medium-term numerical forecast GRAPES_GFS

A numerical forecasting and global technology, applied in complex mathematical operations, weather condition forecasting, data processing applications, etc., can solve problems affecting assimilation accuracy, error correction of observation information, lack of background error covariance, etc., to suppress calculation noise, calculate Effects of improved accuracy and improved mass conservation

Active Publication Date: 2020-01-17
NATIONAL METEOROLOGICAL CENTRE
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AI Technical Summary

Problems solved by technology

The traditional deviation correction of observation data mainly depends on the difference between observation and background. There are two main problems in business application: (1) when there is a significant deviation in the model, the observation information will be wrongly corrected; (2) when the quality control is not When perfect, it will cause unreasonable observation bias estimation and correction
As far as the global model is concerned, the calculation accuracy of the semi-implicit semi-Lagrangian algorithm of the dynamical framework is low, and how to improve mass conservation is not considered, and the computational noise processing related to the semi-Lagrangian scheme has not been fully considered in the algorithm design Insufficient consideration of large-scale terrain processing and sub-grid terrain dynamics, insufficie...

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  • Global medium-term numerical forecast GRAPES_GFS
  • Global medium-term numerical forecast GRAPES_GFS
  • Global medium-term numerical forecast GRAPES_GFS

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Embodiment Construction

[0059] The method of the present invention comprises the following steps:

[0060] Step 1. Establish the GRAPES_GFS global mid-range numerical forecast system, including data assimilation, dynamic framework, physical process, parallel computing, data preprocessing, and running script modules.

[0061] Step 2. Use non-interpolated potential-temperature Lagrangian advection calculations in the dynamic framework, optimize the filtering scheme in polar regions, introduce terrain filtering to consider effective terrain, research and development of scalar advection schemes with high precision conservation, mass conservation corrections, terrain filtering, w -damping and the introduction of stratospheric Rayleigh friction effect to improve the stability, mass conservation and calculation accuracy of the model dynamic framework; adopt the independently developed semi-Lagrangian scalar advection scheme and polar region processing technology to improve Calculation accuracy of model wet ...

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Abstract

The invention discloses global medium-term numerical forecast GRAPES_GFS. The global medium-term numerical forecast GRAPES_GFS is characterized in that in the aspect of large-scale parallel computing,the improvement of an existing framework is proposed for the shortcomings of an existing semi-implicit semi-Lagrangian integration scheme in terms of computational efficiency and scalability, and a solving algorithm with high efficiency and high performance is proposed based on the semi-implicit integral scheme and linearization system. The non-equidistant difference is adopted to improve the calculation accuracy of the background temperature profile and solve the problem of large errors of the background temperature profile at the level of drastic change of model vertical stratification thickness. The digital filtering module is reconstructed and optimized to improve the stability and computational efficiency of digital filtering. A 3D-Var integrated single-point test system is established.

Description

technical field [0001] The invention belongs to the technical field of global medium-term numerical weather forecasting, and in particular relates to a GRAPES (Global / Regional Assimilation and Prediction System) global medium-term numerical forecasting method (GlobalForecast System), referred to as GRAPES_GFS. Background technique [0002] At present, the global medium-range numerical weather prediction system is the core of the numerical forecasting system, which not only provides boundary conditions and background information for regional mesoscale numerical forecasting, but also serves as the basis for global ensemble forecasting. The continuous development of global medium-range forecasting models and assimilation technology has largely promoted the overall research and forecasting level of numerical forecasting in the world[. Therefore, the development and continuous improvement of the global medium-range forecasting system is the key task of the weather forecasting cen...

Claims

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Application Information

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IPC IPC(8): G01W1/10G06F17/11G06F30/20G06Q50/26
CPCG01W1/10G06F17/11G06Q50/26
Inventor 沈学顺薛纪善陈德辉韩威胡江林刘永柱孙健张林金之雁苏勇王金成龚建东张华张红亮刘奇俊陈起英田伟红胡江凯周斌赵滨王建捷
Owner NATIONAL METEOROLOGICAL CENTRE
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