4.7 Article

Deep learning methods for predicting fluid forces in dense particle suspensions

Journal

POWDER TECHNOLOGY
Volume 401, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.powtec.2022.117303

Keywords

Machine learning; Multi-layer perceptron (MLP); Convolution neural network (CNN); Ellipsoidal particle suspension; Drag force

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Two deep learning methods, MLP network and CNN, were evaluated for predicting drag forces in dense suspensions of ellipsoidal particles. The CNN outperformed the MLP in most testing levels, except when testing on an unseen aspect ratio.
Two deep learning methods, Multi-Layer Perceptron (MLP) network and Convolution Neural Network (CNN) are evaluated to predict drag forces in dense suspensions of ellipsoidal particles using data from Particle Resolved Simulations (PRS). The MLP is trained on the mean flow Reynolds number, solid fraction of the suspension, the aspect ratio of the particle, and orientation to flow direction. The CNN is given an additional 3D spatial map of the particle of interest and its immediate neighborhood via a distance function. The prediction capability of the trained networks is tested at different levels of complexity: on an unseen particle arrangement (Level 1), to all arrangements of an unseen numerical experiment (Level 2), and finally to all experiments of an unseen Reynolds number, solid fraction or aspect ratio (Level 3). The CNN is shown to perform better than the MLP for all testing levels except when testing on an unseen aspect ratio.(c) 2022 Elsevier B.V. All rights reserved.

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