Last modified: 2023-12-10 19:09:26
Data science has been rapidly developing in recent years as the fourth science following experimental science, theoretical science, and computational science. In the field of chemical engineering, data-driven science, which derives superior materials and processes by making full use of a large amount of accumulated data and information, is becoming increasingly important, and many efforts are being made. This symposium will have speakers who are making pioneering efforts toward a data-driven society from various viewpoints and discuss future research and development.
Time | Paper ID | Title / Authors | Keywords | Topic code | Ack. number |
---|---|---|---|---|---|
Hall H, Day 1 | |||||
(9:00–10:40) (Chair: | |||||
H101 | Development of machine learning model for CO2 absorption performance of blended amine solutions | CO2 absorption machine learning amine | ST-21 | 445 | |
H102 | Predicting Physical Properties of Structurally Unknown Polymers Using Spectroscopy Data | Machine Learning Predict Descriptor | ST-21 | 353 | |
H103 | (withdrawn) | 100 | 364 | ||
H104 | [Featured presentation] Multimodal Deep Learning for Predictions of Various Properties of Composite Materials | multimodal deep learning materials informatics generative deep learning | ST-21 | 602 | |
H105 | Construction of MI platform for functional materials | Materials informatics DX | ST-21 | 450 | |
(10:40–11:20) (Chair: | |||||
H106 | [Invited lecture] Material exploration and process optimization by digital technology | Materials Informatics Process Informatics Quantum Chemistry | ST-21 | 784 | |
(11:20–12:00) (Chair: | |||||
H108 | [Invited lecture] Data-driven Approaches for Functional Materials Development in SEKISUI CHEMICAL. | Data-Driven Development Functional Materials Materials Informatics | ST-21 | 976 | |
(13:00–13:40) (Chair: | |||||
H113 | [Invited lecture] Remote Operation Support and Automatic Plant Operation Technology In Waste-to-Energy Plants | Remote operation Automatic operation AI and Data analysis | ST-21 | 979 | |
(13:40–15:20) (Chair: | |||||
H115 | [Invited lecture] Prediction and control of bacterial evolution through high-throughput automated experiments using robots | Laboratory automation Laboratory evolution Escherichia coli | ST-21 | 805 | |
H117 | Deep learning model for predicting all protein-protein interactions from sequence data | Cross attention deep learning prediction | ST-21 | 33 | |
Break | |||||
H119 | Development of mechanistic cell cultivation models in monoclonal antibody production using data-driven insights | Biopharmaceuticals Lactate consumption Glutamine | ST-21 | 728 | |
(15:20–17:00) (Chair: | |||||
H120 | Development of microbial production process by model based metabolic design and directed evolution | Model based metabolic pathway design Directed evolution Metabolic engineering | ST-21 | 225 | |
H121 | Machine learning guided enzyme’s molecular recognition specificity conversion | enzyme design machine learning | ST-21 | 235 | |
H122 | High accuracy prediction of edible oil oxidation stability by multivariate analysis incorporating chemiluminescence information | multivariate analysis oxidative stability edible oil | ST-21 | 686 | |
H123 | Application of reaction mechanism search method using chemical reaction neural network to glycerol oxidation reaction | physics informed neural network kinetics model data-driven | ST-21 | 480 | |
H124 | Applicational study of symbolic regression to exploring new materials and constructing kinetics models | Machine learning Materials Informatics Reaction Kinetics | ST-21 | 948 | |
Hall H, Day 2 | |||||
(9:00–10:20) (Chair: | |||||
H201 | Elucidation of appropriate data acquisition conditions for API concentration prediction by NIR | NIR Spectrum diffuse reflectance measurement API concentration prediction | ST-21 | 741 | |
H202 | Development of a soft sensor and a controller system of hydrogen concentration in the exhaust gas in fuel cell systems | PEFC Hydrogen control soft sensor | ST-21 | 203 | |
H203 | Novel encoding method for high dimensional power consumption data in distributed energy system for short-term electricity demand forecasting | electricity demand prediction distributed energy system big data | ST-21 | 550 | |
H204 | Calculation of Tokyo's Photovoltaic Potential and Study of the Effects of Reducing Daily Power Fluctuations from Facade Installations | Facade installation Photovoltaic power potential Power fluctuation | ST-21 | 646 | |
(10:20–12:00) (Chair: | |||||
H205 | Gaussian Process Regression Approaches for Process Optimization: A Case Study of Interface State Density Prediction between Insulator and Semiconductor | Gaussian process regression length-scale Metal-oxide-semiconductor | ST-21 | 204 | |
H206 | Design of integrated upstream and downstream monoclonal antibody production processes using surrogate models | Surrogate model Machine learning Bayesian optimization | ST-21 | 816 | |
H207 | Utilization of Bayesian optimization in the process development of drug substance | DX Bayesian optimization Simulation | ST-21 | 167 | |
H208 | Batch Bayesian optimization method for goal-oriented multi-objective functional materials design | Bayesian Optimization | ST-21 | 385 | |
H209 | Bayesian Optimization Framework for Polymer Composites Design Using High Dimensional Past Materials Data | Bayesian optimization DX Materials informatics | ST-21 | 187 |
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SCEJ 54th Autumn Meeting (Fukuoka, 2023)