The WRF-Based Incremental Analysis Updates and Its Implementation in an Hourly Cycling Data Assimilation System

Min Chen, Xiang Yu Huang, Wei Wang

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

An incremental analysis update (IAU) scheme is successfully implemented into a WRF/WRFDA-based hourly cycling data assimilation system with the goal to reduce the imbalance introduced by the high-frequency intermittent data assimilation, especially when radar data are included. With the application of IAU, the analysis increment is smoothly introduced into the model integration over a time window centered at the analysis time. As in digital filter initialization (DFI), the IAU scheme is able to limit large shocks in the early part of a model forecast. Compared to DFI, IAU does better in hydrometeor spinup and produces more continuous precipitation forecasts from cycle to cycle. The run with IAU is shown to improve the precipitation forecast skills (101% for CSI scores) compared to the regular cycling forecasts without IAU. The data assimilation system with IAU is also able to accept more observations due to balanced first-guess fields. Comparable results are obtained in IAU tests when the time-varying weights are used versus constant weights. Because of its better property, the IAU with the time-varying weights is implemented in the operational system.

Original languageEnglish
Pages (from-to)1063-1078
Number of pages16
JournalWeather and Forecasting
Volume38
Issue number7
DOIs
StatePublished - Jul 2023

Keywords

  • Data assimilation
  • Mesoscale models
  • Model initialization
  • Numerical weather prediction/forecasting
  • Operational forecasting

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