日本地球惑星科学連合2022年大会

講演情報

[E] 口頭発表

セッション記号 A (大気水圏科学) » A-CG 大気海洋・環境科学複合領域・一般

[A-CG38] 衛星による地球環境観測

2022年5月23日(月) 09:00 〜 10:30 104 (幕張メッセ国際会議場)

コンビーナ:沖 理子(宇宙航空研究開発機構)、コンビーナ:本多 嘉明(千葉大学環境リモートセンシング研究センター)、高薮 縁(東京大学 大気海洋研究所)、コンビーナ:松永 恒雄(国立環境研究所地球環境研究センター/衛星観測センター)、座長:岡本 幸三(気象研究所)

10:00 〜 10:15

[ACG38-05] Advances and applications of satellite data assimilation of clouds, precipitation, and the ocean

*三好 建正1,7、Wu Ting-Chi1寺崎 康児1、Liang Jianyu1大石 俊1大塚 成徳1小槻 峻司2,1岡崎 淳史3,1、富田 浩文1Chen Ying-Wen4金丸 佳矢9佐藤 正樹4八代 尚5岡本 幸三6、Kalnay Eugenia7久保田 拓志8可知 美佐子8 (1.理化学研究所、2.千葉大学、3.弘前大学、4.東京大学、5.国立環境研究所、6.気象研究所、7.メリーランド大学、8.宇宙航空研究開発機構、9.情報通信研究機構)

キーワード:データ同化、衛星データ、雲、降水、海洋

This research aims to advance data assimilation, analysis and prediction of clouds, precipitation and the ocean, based on the achievements from the previous projects since 2013, i.e., “ensemble data assimilation of TRMM/GPM precipitation observations” (2013-2016), “advancing data assimilation of GPM observations” (2016-2019), “advancing precipitation prediction algorithm by data assimilation of GPM observations” (2019-2022), “development of a satellite ocean data assimilation system with the JAXA Supercomputer System Generation 2” (2017-2020), and “satellite data assimilation using an ocean model” (2020-2022). We developed the global atmospheric ensemble data assimilation system called NICAM-LETKF, where NICAM stands for the Nonhydrostatic ICosahedral Atmospheric Model and the LETKF for the Local Ensemble Transform Kalman Filter. We also developed a precipitation nowcasting system called GSMaP RIKEN Nowcast (GSMaP_RNC) using the satellite-analyzed Global Mapping of Precipitation (GSMaP) dataset. We developed real-time precipitation prediction system by seamlessly merging data from the NICAM-LETKF numerical weather prediction and GSMaP_RNC and have been operating it continuously for public data dissemination. In addition, we have been operating JAXA’s real-time atmospheric analysis system called NEXRA (NICAM-LETKF JAXA Research Analysis) and have been disseminating real-time level-4 analysis products using satellite data, with proven data quality by analyzing past high-impact weather events such as typhoons and heavy rainfalls. Moreover, we implemented the LETKF with an ocean model called sbPOM and developed daily-update ocean data assimilation system using dense and frequent SST data from the Himawari-8 geostationary satellite. This research will integrate these atmospheric and oceanic data assimilation projects with significant extension to the following research items. Through the research, we aim to deepen our integrated understanding of the earth system on clouds, precipitation and the ocean and to advance analysis and prediction, and their real-life applications.
1) NEXRA
2) GSMaP_RNC and Seamless Precipitation Prediction System
3) Ocean Data Assimilation & Daily Analysis Product and Verification
4) GPM DPR Data Assimilation
5) Use of EarthCARE Cloud Radar Data
6) Incorporating Observation Error Correlation in Satellite Data Assimilation
7) Application of Machine Learning (ML) to Satellite Observation Operator
8) Non-linear and non-Gaussian Data Assimilation with Local Particle Filter (LPF)
9) Atmosphere-Ocean Coupled Data Assimilation (ensemble for the atmosphere-ocean interface)