Journal of Advances in Modeling Earth Systems (Jun 2022)

Development of the Real‐Time 30‐s‐Update Big Data Assimilation System for Convective Rainfall Prediction With a Phased Array Weather Radar: Description and Preliminary Evaluation

  • T. Honda,
  • A. Amemiya,
  • S. Otsuka,
  • G.‐Y. Lien,
  • J. Taylor,
  • Y. Maejima,
  • S. Nishizawa,
  • T. Yamaura,
  • K. Sueki,
  • H. Tomita,
  • S. Satoh,
  • Y. Ishikawa,
  • T. Miyoshi

DOI
https://doi.org/10.1029/2021MS002823
Journal volume & issue
Vol. 14, no. 6
pp. n/a – n/a

Abstract

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Abstract We present the first ever real‐time numerical weather prediction system with 30‐s update cycles at a 500‐m grid spacing for the prediction of convective precipitation in the subsequent 30 min using a new‐generation multi‐parameter phased array weather radar. The system comprises a regional atmospheric model known as the SCALE and the local ensemble transform Kalman filter (LETKF). To accelerate the SCALE‐LETKF system, data transfer between the two aforementioned components is performed using a memory copy instead of a file I/O. A complete real‐time workflow including domain nesting and observational data transfer is constructed. A real‐time test in July and August 2020 showed that the system is fast enough for a real‐time application of 30‐s forecast‐analysis cycles and 30‐min prediction. The development includes a new thinning method considering the spatially correlated observation errors in the dense radar data. This new thinning method is effective in two past case studies in the summer of 2019.

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