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Artificial neural network-based sensitivity analysis and experimental investigation of liquid-solid fluidization technique for low-grade coal upgradation

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dc.contributor.author Kumari, A.
dc.contributor.author Tripathy, A.
dc.contributor.author Mandre, N.R.
dc.date.accessioned 2023-07-28T05:01:38Z
dc.date.available 2023-07-28T05:01:38Z
dc.date.issued 2023
dc.identifier.citation Journal of Dispersion Science and Technology, 44(2), 2023: 265-277
dc.identifier.issn 0193-2691
dc.identifier.uri http://ore.immt.res.in/handle/2018/3195
dc.description.abstract Liquid-solid fluidization technique is being applied where low-grade coal or minerals enrichment is mostly density-based. Static and dynamic behavior of particles in a fluid medium has been extensively investigated over the years because of its dynamic applications across various industries. In this work, bed characterization studies and experiments have been conducted to study coal washing ability of the liquid-solid fluidized bed separator. Results have been recorded in terms of ash rejection%, combustible recovery% and separation efficiency%. Minimum fluidization velocity and pressure drop values have been predicted using existing theoretical correlations and compared with the experimental values. A three-layered (4:5:3) feedforward back-propagation (FFBP) neural network model was developed using Levenberg-Marquardt algorithm, LOGSIG and MSE as training, transfer and performance functions respectively. Garson's algorithm and connection weight approach have been employed for sensitivity analysis to interpret the neural network results physically. Coefficients of correlation, all R (including training, validation & testing datasets) obtained for outputs ash rejection (R = 0.9960), combustible recovery (R = 0.9952) and separation efficiency (R = 0.9944) suggest that predicted values are in agreement with the experimental values and the developed model is a good fit.
dc.language en
dc.publisher Taylor and Francis
dc.relation.isreferencedby SCI
dc.rights Copyright [2023]. All efforts have been made to respect the copyright to the best of our knowledge. Inadvertent omissions, if brought to our notice, stand for correction and withdrawal of document from this repository.
dc.subject Chemical Sciences
dc.title Artificial neural network-based sensitivity analysis and experimental investigation of liquid-solid fluidization technique for low-grade coal upgradation
dc.type Journal Article
dc.affiliation.author IIT Dhanbad, Dhanbad 826004, Jharkhand, India


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