Japan Geoscience Union Meeting 2019

Presentation information

[E] Oral

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

[A-AS02] Advances in Tropical Cyclone Research: Past, Present, and Future

Thu. May 30, 2019 10:45 AM - 12:15 PM 104 (1F)

convener:Sachie Kanada(Nagoya University), Akiyoshi Wada(Department of Typhoon and Severe Weather Research, Meteorological Research Institute), Kosuke Ito(University of the Ryukyus), Yoshiaki Miyamoto(Faculty of Environment and Information Studies, Keio University), Chairperson:Yoshiaki Miyamoto, Kosuke Ito(University of Ryukyus)

12:00 PM - 12:15 PM

[AAS02-11] Volumetric Detection of Tornadic Vortices Associated with Typhoon Nanmadol (2017) Using PAWR and Deep Learning

*Toru Adachi1, Naoki Ishitsu2, Kenichi Kusunoki1, Hanako Inoue1, Ken-ichiro Arai2, Chusei Fujiwara3, Hiroto Suzuki3 (1.Meteorological Research Institute, 2.Alpha Denshi/Meteorological Research Institute, 3.East Japan Railway Company)

Keywords:Typhoon, Tornado, Phased Array Weather Radar, Deep Learning

Tornadoes spawned by miniature supercells associated with typhoon are one of critical issues for disaster risk reduction in Japan. However, it is not easy to monitor and predict their occurrence because the parent storm is considerably small compared with classic-type tornadic supercell. We try to overcome this problem by combining cutting-edge technologies using rapid-scan phased array weather radar (PAWR) and deep learning analysis. We present a case study of tornado-like vortices which caused damages in Souka city, Saitama, during the approach of Typhoon Nanmadol (2017). We performed data analysis of two rapid-scan phased array weather radars operated by Meteorological Research Institute in Tsukuba and operated by Japan Radio Co., Ltd. in Chiba. To detect vortices from the PAWR-observed Doppler velocity data, we employed a vortex pattern finding scheme using convolutional neural network. Since PAWR carries out quasi-simultaneous observation of multi-elevational angles, we considered a group of vortices located in a radius of 4-km as a single vertically-extending volumetric vortex. By analyzing the spatiotemporal structure, we found a significant growth of a tornadic vortex about five minutes prior to its passage over the ground damage area. This finding suggests that a combination of rapid-scan PAWR observation and deep learning analysis is useful for monitoring and short-term forecasting of tornadoes associated with typhoon.

Acknowledgement: This work is supported by JSPS KAKENHI Grant 17K13007. In this analysis, we used PAWR data operated by Japan Radio Co., Ltd.