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Prediction of Particle Agglomeration During Nanocolloid Drying Using Machine Learning and Reduced-Order Modeling

Kyoko Kameya, Hiroyuki Ogata, Kentaro Sakoda, Masahiro Takeda,Yuki Kameya

CHEMICAL ENGINEERING SCIENCE(2024)

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摘要
Our previous studies, which employed Kinetic Monte Carlo (KMC) simulation to model nanoparticle agglomeration during nanocolloid drying, revealed a discernible relationship between agglomeration and the relative Peclet number (Pe*). Pe* ). This study addressed the inverse problem by applying machine learning to predict Pe* for nanoparticle agglomeration. To compensate for the small training dataset used during learning, we combined an artificial neural network with various reduced-order modeling (ROM) techniques. We compared the accuracy of the different ROM techniques based on numerical data and images obtained through KMC simulations, finding that the most accurate Pe* estimations along all Monte Carlo steps were obtained with a clustering decomposition technique leveraging image training data. Our findings facilitate the establishment of relationships between particle agglomeration and specific parameters (e.g., material strength or thermal conductivity) via Pe*, , which, in turn, can guide experimental interventions, such as the addition of dispersants, to modulate material properties.
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关键词
Machine learning,Reduced-order modeling technique,Kinetic Monte Carlo simulation,Particle agglomeration,Peclet number
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