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Lai et al., 2016 - Google Patents

Modeling electrostatic separation process using artificial neural network (ANN)

Lai et al., 2016

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Document ID
11167465856394680256
Author
Lai K
Lim S
Teh P
Yeap K
Publication year
Publication venue
Procedia Computer Science

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In this paper, the characteristics of an electrostatic separator were modeled using artificial neural network (ANN). The model was constructed by considering the misclassified middling product during separation, where system parameters (voltage level, rotation speed …
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