Japanese page
SCEJ

SCEJ 56th Autumn Meeting (Tokyo, 2025)

Last modified: 2025-09-29 10:33:36

Hall and day program : Hall CD, Day 1 : CD115

The preprints(abstracts) are now open. These can be viewed by clicking the Paper IDs. The ID/PW sent to the Registered participants (excludes free registration) and invited persons are required.

Hall CD(C.A. Bldg. 3F 301), Day 1(Sep. 16)

ST-21

TimePaper
ID
Title / AuthorsKeywordsTopic codeAck.
number
ST-21 [Trans-Division Symposium]
Frontiers of Data-driven Research and Development
(9:20–10:20) (Chair: Shimada Iori)
9:209:40CD102High-resolution flow analysis in cell culture tanks using a combination of PINNs and CFD
(Akita U.) *(Reg)Horiguchi Ikki, (U. Osaka) Shima Keisuke, (Stu)Mizukami Yuto, (Reg)Okano Yasunori
Suspension culture
Computational flow dynamics
Neural Networks
ST-21171
9:4010:00CD103Prediction of electrostatic inkjet printing characteristics using CNN with electric field distribution as input
(Tokyo U. Sci.) *(Reg)Matsukawa Hiroaki, (Reg)Otake Katsuto
Electrostatic inkjet
Convolutional Neural Networks
Electric field distribution
ST-2197
10:0010:20CD104Novel feature suggestion for Predictive Model of the Bacterial Reverse Mutation Test
(Kogakuin U.) *(Stu)Kondo Kazuma, (Stu)Miyatake Koshiro, (Reg)Higuchi Hayato, (Reg)Miyagawa Masaya, (Reg)Takaba Hiromitsu
Machine Learning
Variational Autoencoder
COSMO method
ST-21744
10:2010:40Break
(10:40–12:00) (Chair: Muroga Shun)
10:4011:20CD106[Invited lecture] Practical studies of data-driven materials research based on accelerating the data cycle
(Science Tokyo) Ando Yasunobu
autonomous experiment
machine learning potential
spectral analysis
ST-21939
11:2012:00CD108[Invited lecture] Accelerating Catalyst Development through High-Throughput Experiments
(AIST) Fujitani Tadahiro
Catalyst development
High-throughput screening
Autonomous experimentation
ST-21935
(13:00–14:20) (Chair: Mukaida Shiho)
13:0013:40CD113[Invited lecture] Machine learning-enabled spectroscopy and materials discovery
(U. Tokyo) Mizoguchi Teruyasu
Machine learning
XANES/ELNES
Materials discovery
ST-21938
13:4014:20CD115[Invited lecture] Optimization Applications in Business and Information Systems
(NS Solutions) Minami Etsuro
Optimization Problems
Combinatorial Optimization
Business Applications
ST-21946
(14:20–16:20) (Chair: Toya Yoshihiro)
14:2015:00CD117[Invited lecture] Perspectives and Challenges in Laboratory Automation Supporting Data-Driven Science in the field of Biotechnology
(Riken) Horinouchi Takaaki
Laboratory automation
Biotechnology
Data-Driven Science
ST-21945
15:0015:20Break
15:2015:40CD120Development of automated and autonomous experimental systems for electrode slurry: challenges and approaches
(Toyota Central R&D Labs) *(Cor)Kudo Sayako, (Cor)Matsunaga Takuro, (Cor)Makino Soichiro, (Cor)Kusano Takumi, (Cor)Yamawaki Yuya, (Reg)Nakamura Hiroshi, (U. Tokyo) (Stu)Oya Hirotaka, (Reg)Nagato Keisuke
automatic and autonomous laboratory
slurry
viscosity
ST-21346
15:4016:00CD121A Heterogeneous Transfer Learning Approach for Manufacturing Method Transitions in Pharmaceutical Processes
(Kyoto U.) *(Stu)Ihira Junya, (Daiichi Sankyo) (Reg)Yaginuma Keita, (Cor)Sato Kanta, (Kyoto U.) (Reg)Kato Shota, (Reg)Kano Manabu
Heterogeneous Transfer Learning
Manufacturing Method Transition
Pharmaceutical Manufacturing
ST-21471
16:0016:20CD122Development of a method for predicting drug-drug interactions using food ingredients as substitute for negative data
(Meiji U.) *(Stu)Kosakai Soma, (Reg)Kaneko Hiromasa
Drug-drug interaction
Machine learning
Positive-unlabeled learning
ST-21178

Technical program
Technical sessions (Wide)  (For narrow screen)
Session programs
Search in technical program
SCEJ 56th Autumn Meeting (Tokyo, 2025)


© 2025 The Society of Chemical Engineers, Japan. All rights reserved.
For more information contact Organizing Committee of SCEJ 56th Autumn Meeting
E-mail: inquiry-56fwww4.scej.org