Japan Geoscience Union Meeting 2023

Presentation information

[E] Online Poster

A (Atmospheric and Hydrospheric Sciences ) » A-AS Atmospheric Sciences, Meteorology & Atmospheric Environment

[A-AS04] Advances in Tropical Cyclone Research: Past, Present, and Future

Wed. May 24, 2023 1:45 PM - 3:15 PM Online Poster Zoom Room (1) (Online Poster)

convener:Satoki Tsujino(Meteorological Research Institute), Sachie Kanada(Nagoya University), Kosuke Ito(University of the Ryukyus), Yoshiaki Miyamoto(Faculty of Environment and Information Studies, Keio University)

On-site poster schedule(2023/5/23 17:15-18:45)

1:45 PM - 3:15 PM

[AAS04-P12] Assimilation of Observational Data by an Autonomous Surface Vehicle Just Below the Typhoon with WRF-3DVAR

*Yusuke Umemiya1, Naoko Kosaka1, Tsuneko Kura1, Masaki Hisada1, Kosuke Ito2,3, Kazuhisa Tsuboki2,4, Masaki Satoh2,5, Shuichi Mori2,6, Hironori Fudeyasu2, Fumiaki Moriyama2 (1.NTT Space Environment and Energy Laboratories., 2.Yokohama National University, Typhoon Science and Technology Research Center., 3.University of the Ryukyus., 4.Institute for Space-Earth Environmental Research, Nagoya University., 5.Atmosphere and Ocean Research Institute, The University of Tokyo., 6.Japan Agency for Marine-Earth Science and Technology.)

Keywords:Autonomous Surface Vehicle, Typhoon forecasting, Data assimilation, Weather Research and Forecasting Model, Three-dimensional variational data assimilation system, Typhoon observation

It is important to use observational data just over the ocean, to improve typhoon forecasting accuracy and to understand typhoon development. Many attempts have been made to observe meteorological conditions near the typhoon centers, but it is not easy to observe under typhoons due to the severe conditions. In this study, we use the observed data just below the typhoon from an autonomous surface vehicle (ASV) targeting Hinnamnor, a Category 5 typhoon that reached a minimum pressure of 920 hPa and a maximum wind speed of 55 m/s (105 knots) at 21 JST on Aug. 30, 2022. We assimilate these data with the Weather Research and Forecasting Model’s three-dimensional variational data assimilation system (WRFDA for 3DVAR).

For the first attempt, we assimilate sea level pressure (SLP) and temperature (SLT) as the observations. The assimilation time was set at 12 UTC on Aug. 31, 2022, when the ASV was closest to the typhoon center. This time is coordinated to the time resolution of NCEP GDAS/FNL, where NCEP GDAS/FNL are available every 6 hours for the initial and boundary conditions. At this time, the ASV was located about 23 km from the typhoon center. The respective values to be assimilated are 951.226 hPa (SLP) and 302.257 K (SLT), and both obtained as averages every 5 minutes by a water-resistant Baro Troll (In-situ Inc.) mounted at the height of 50 cm above the mast of the ASV.

To obtain the first guess, WRF was run for several hours beforehand. To obtain the WRF forecast output and see the assimilation effect on the typhoon forecast, WRF was run for several days with the analysis from the WRFDA for 3DVAR. The procedure is as follows: run WRF for 6 hours from 06 UTC on Aug. 31 with initialization by NCEP GDAS/FNL for spin-up and obtain the first guess (step 1); run WRF-3DVAR on the first guess to assimilate the observation data and produce the analysis at 12 UTC on Aug. 31 (step 2); run WRF for 24 hours from 12 UTC on Aug. 31, with the analysis obtained in step 2 as the initial condition, and obtain the WRF forecast output at 12 UTC on Sep. 1 (step3); run WRF as in step 3 with the first guess obtained in step 1 as the initial condition, and obtain the WRF forecast output without assimilation (step4); compare the WRF forecast outputs obtained in step 3 and step 4 as data with assimilation (DA) and without assimilation (NO-DA), respectively (step 5).

As a result, the pressure decreased by about 20 hPa in DA compared to NO-DA. The assimilation effect is large because of the scarcity of data near the typhoon center, even though the input value was at a single point and a single time. As the next step, we will test the effects of multi-temporal data. In addition, we will perform various experiments using oceanographic data such as sea surface temperature (SST) and investigate the atmosphere-ocean interaction just below the typhoon. We will then evaluate the impact of the observations near the typhoon center by comparing the real-time forecasting obtained by using other observations around the world.