はやぶさ2プロジェクトチーム
Profile Information
- Affiliation
- Assoiciate Professor, Institute of Space and Astronautical Science, Japan Aerospace Exploration AgencyAssociate Professor, School of Physical Sciences, The Graduate University for Advanced Studies
- J-GLOBAL ID
- 200901006137313045
- researchmap Member ID
- 1000253786
- External link
Research Interests
5Research Areas
1Research History
4-
Jul, 1998 - Sep, 2003
Education
3-
Apr, 1988 - Mar, 1991
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Apr, 1986 - Mar, 1988
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Apr, 1982 - Mar, 1986
Committee Memberships
1-
2007 - 2011
Awards
1-
May, 2009
Papers
127-
日本航空宇宙学会論文集, 73(3) 109-116, 2025Conventionally, the double-probe method is used to observe the electric field by the sounding rockets. In the double-probe method, two pairs of dipole antennas are equipped to observe the electric field of two orthogonal components in the spin plane perpendicular to the rocket axis. In this study, we establish an electric field analysis method using one pair of dipole antennas and investigate its error in order to reduce the size of the detector and the risk by reducing the number of extensions. The results show that the magnitude of the electric field has an error of ±12% and the direction of the electric field vector has an error of ±4º.
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AIAA SCITECH 2024 FORUM, 2024
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Experimental Astronomy, 54(2-3) 521-559, Dec, 2022 Peer-reviewed
Misc.
130-
Mar 12, 2026Electron temperature (Te) is an important parameter governing space weather in the upper atmosphere, but has historically been underexplored in the space weather machine learning literature. We present CLARE, a machine learning model for predicting electron temperature in the Earth's plasmasphere trained on AKEBONO (EXOS-D) satellite measurements as well as solar and geomagnetic indices. CLARE uses a classification-based regression architecture that transforms the continuous Te output space into 150 discrete classification intervals. Training the model on a classification task improves prediction accuracy by 6.46% relative compared to a traditional regression model while also outputting uncertainty estimation information on its predictions. On a held out test set from the AKEBONO data, the model's Te predictions achieve 69.67% accuracy within 10% of the ground truth and 46.17% on a known geomagnetic storm period from January 30th to February 7th, 1991. We show that machine learning can be used to produce high-accuracy Te models on publicly available data.
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地球電磁気・地球惑星圏学会総会及び講演会(Web), 156th, 2024
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地球電磁気・地球惑星圏学会総会及び講演会(Web), 156th, 2024
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地球電磁気・地球惑星圏学会総会及び講演会(Web), 156th, 2024
Books and Other Publications
2Presentations
326-
2026 URSI-Japan Radio Science Meeting, Mar 2, 2026
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2026 URSI-Japan Radio Science Meeting, Mar 2, 2026
Teaching Experience
1-
Jun, 2005 - Present惑星大気科学特論 (総合研究)
Professional Memberships
3Research Projects
15-
Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2023 - Mar, 2026
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Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2018 - Mar, 2021
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Grants-in-Aid for Scientific Research Grant-in-Aid for Scientific Research (B), Japan Society for the Promotion of Science, Apr, 2012 - Mar, 2015
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Grants-in-Aid for Scientific Research Grant-in-Aid for Scientific Research (B), Japan Society for the Promotion of Science, Apr, 2010 - Mar, 2014
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Grants-in-Aid for Scientific Research Grant-in-Aid for Scientific Research (B), Japan Society for the Promotion of Science, 2008 - 2010
● 指導学生等の数
2-
Fiscal Year2021年度(FY2021)Master’s program4Students under Commissioned Guidance Student System4Students under Skills Acquisition System1
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Fiscal Year2020年度(FY2020)Master’s program3Students under Commissioned Guidance Student System3Students under Skills Acquisition System2
● 専任大学名
1-
Affiliation (university)総合研究大学院大学(SOKENDAI)
● 所属する所内委員会
3-
ISAS Committee理学委員会
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ISAS Committee観測ロケット専門委員会
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ISAS Committeeスペースチェンバー専門委員会