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SCEJ 53rd Autumn Meeting (Nagano, 2022)

Program search result : 推算 : 7 programs

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Title (J) field includes “推算”; 7 programs are found. (“Poster with Flash” presentations are double-counted.)
The search results are sorted by the start time.

TimePaper
ID
Title / AuthorsKeywordsTopic codeAck.
number
Day 1
16:0016:20
CB122Estimation of temperature dependence of organic compounds solubility in water by machine learning
(Shinshu U.) *(Stu)Minesugi Haruka, (Reg)Shimada Iori, (Reg)Fukunaga Hiroshi, (Reg)Takahashi Nobuhide, (Reg)Osada Mitsumasa
solubility
machine learning
phase equilibrium
SY-73709
Day 2
10:4011:00
AB206Estimate of Contact Force by Simulation for Non-Newtonian Viscosity of Polymer Solution
(U. Tokyo) (Reg)Furuse Hisamoto
non-Newtonian viscosity
simulation
contact force
SY-5544
Day 2
10:4011:00
CA206[Invited lecture] Estimation of physical properties from molecular structures using convolutional graph neural network
(Tokyo U. Sci.) (Reg)Murakami Yuya
physical property estimation
graph neural network
group contribution method
SY-51325
Day 2
11:0011:20
CA208Prediction of physical property by deep learning
(Tokyo U. Sci.) (Reg)Ohe Shuzo
physical property
deep learning
prediction
SY-51515
Day 2
14:4015:00
CA218Prediction of Phase Equilibria for Carbonate Ester Containing Multicomponent Systems Using ASOG
(Nihon U.) *(Reg)Tochigi Katsumi, (Reg)Matsuda Hiroyuki, (Reg)Kurihara Kiyofumi
carbonate ester
phase equilibria
ASOG
SY-512
Day 3
9:009:20
CB301Development of a Model for Predicting the Solubility of Organic Compounds in Supercritical CO2 Using Machine Learning Based on QSPR
(Kanazawa U.) *(Stu)Yamamoto S., (Stu)Maeda N., Kawanishi T., (Reg)Uchida H.
Machine learning
Molecular descriptors
Solubility
SY-73754
Day 3
11:4012:00
DC309Prediction of phase equilibrium of water-organic compounds system at high-temperature and high-pressure using machine learning
(Shinshu U.) *(Stu)Tamura Kotaro, (Reg)Shimada Iori, (Reg)Fukunaga Hiroshi, (Reg)Takahashi Nobuhide, (Reg)Osada Mitsumasa
machine learning
prediction of phase equilibrium
high-temperature and high-pressure
ST-21532

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SCEJ 53rd Autumn Meeting (Nagano, 2022)


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