STS415A Toward The New Materials Science Integrating with Computational and Deep Learning Technologies I
Mr. Tohru Hirano (Daikin Industries, Ltd. , Japan) , Dr. Susumu Minami (Kyoto University , Japan)
The rapid advancement of computational materials science and the emergence of deep learning technologies are transforming the landscape of materials discovery, design, and optimization. This session focuses on the integration of physics-based simulations, high-throughput computations, and data-driven approaches to accelerate innovation in materials research. A particular emphasis will be placed on modeling of materials microstructures, including their generation, evolution, and optimization, as well as the theoretical modeling of diverse functional materials beyond structural mechanics. These include functionally graded materials (FGMs), thermoelectric materials, metal-organic frameworks (MOFs), and piezoelectric materials, where the interplay between structure and electronic functionality is critical. The related crystal structures modeling and phonon engineering are also depicted. Topics of interest include, but are not limited to: • Theoretical modeling and design of functional materials such as functionally graded materials (FGM), thermoelectric materials, and metal-organic frameworks (MOFs). • Microstructure modeling and optimization using mathematical models and AI-assisted techniques • Applications of deep learning in microstructure-property relationships, defect prediction, and synthesis planning • Autonomous materials discovery using active learning and reinforcement learning In this session, through interdisciplinary dialogue, we aim to define the next-generation paradigm of materials research empowered by advanced computation and deep learning methodologies.
Scheduled presentations:
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Modeling and Design of Micro- and Nanostructures: Focusing on Several New Materials Concepts and Machine Learning
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Online Learning-Accelerated 3D Monte Carlo Simulation for Gate-All-Around Transistors
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Development of a Model Bridging Finite Element Analysis and Infrared Stress Measurement for Spatial Defect Estimation in Complex-Shaped CFRP
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First-principles Study of Strain Engineering for Anomalous Nernst Effect in Iron-based Binary Ferromagnets
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Analysis of Low-Energy Localized Phonon Mode in SiGe Alloys and its impact on Lattice Thermal Conductivity: A Molecular Dynamics Study
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Design of Tensor Prediction Models Based on Deep Learning: 2D Case
