TitlePrediction of adsorption efficiencies of Ni (II) in aqueous solutions with perlite via artificial neural networks
Journal titleArchives of Environmental Protection
Keywordswastewater ; treatment efficiency ; adsorption ; perlite ; artificial neural network
Divisions of PASNauki Techniczne
PublisherPolish Academy of Sciences
TypeArtykuły / Articles
IdentifierISSN 2083-4772 ; eISSN 2083-4810
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