Predicting Mixing: A Strategy for Integrating Machine Learning and Discrete Element Method
Sunil Kumar,
Yavnika Garg,
Salma Khatoon
et al.
Abstract:Segregation, the opposite of mixing, poses a common challenge in granular systems. Using a rotating drum as the basic mixing equipment, the fundamental focus of this study is to quantify undesirable segregation. The impact of particle level parameters (size, density, their combination, mass fraction) and system parameters (filling %, rotational speed, and baffle) on the segregation index within the rotating drum is first assessed using the discrete element method (DEM). Later, the machine learning (ML) model i… Show more
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