Abstract

The initial field has a crucial influence on numerical weather prediction (NWP). Data assimilation (DA) is a reliable method to obtain the initial field of the forecast model. At the same time, data are the carriers of information. Observational data are a concrete representation of information. DA is also the process of sorting observation data, during which entropy gradually decreases. Four-dimensional variational assimilation (4D-Var) is the most popular approach. However, due to the complexity of the physical model, the tangent linear and adjoint models, and other processes, the realization of a 4D-Var system is complicated, and the computational efficiency is expensive. Machine learning (ML) is a method of gaining simulation results by training a large amount of data. It achieves remarkable success in various applications, and operational NWP and DA are no exception. In this work, we synthesize insights and techniques from previous studies to design a pure data-driven 4D-Var implementation framework named ML-4DVAR based on the bilinear neural network (BNN). The framework replaces the traditional physical model with the BNN model for prediction. Moreover, it directly makes use of the ML model obtained from the simulation data to implement the primary process of 4D-Var, including the realization of the short-term forecast process and the tangent linear and adjoint models. We test a strong-constraint 4D-Var system with the Lorenz-96 model, and we compared the traditional 4D-Var system with ML-4DVAR. The experimental results demonstrate that the ML-4DVAR framework can achieve better assimilation results and significantly improve computational efficiency.

Highlights

  • Numerical weather prediction (NWP) predicts future atmospheric states using numerical methods on high-performance computers to solve equations describing atmospheric dynamics and thermal processes under certain initial conditions

  • Joint-4DVAR is the joint 4D-Var assimilation system, its forecast model is from Lorenz-96, and the tangent linear and adjoint models are from the bilinear neural network (BNN) model

  • Machine learning (ML)-4DVAR is a 4D-Var assimilation system based on ML, and its forecast model and tangent linear and adjoint models are derived from the BNN model

Read more

Summary

Introduction

Numerical weather prediction (NWP) predicts future atmospheric states using numerical methods on high-performance computers to solve equations describing atmospheric dynamics and thermal processes under certain initial conditions. It can be seen as an initial value problem [1,2,3]. In order to obtain an accurate initial field, we need to increase the credibility of the data and artificially remove redundant information. Data assimilation (DA) merges observations with numerical model forecasts to estimate the current optimal atmospheric state. Four-dimensional variational assimilation (4D-Var) is the most popular data assimilation method, which is widely used in many operational NWP centers [5,6,7,8,9,10]

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call