Critical rare earth metal adsorption onto expanded vermiculite: Accurate modeling through response surface methodology and machine learning techniques

Sustainable Chemistry and Pharmacy - Tập 31 - Trang 100938 - 2023
Giani de Vargas Brião1, Dison Stracke Pfingsten Franco2, Flávio Vasconcelos da Silva1, Meuris Gurgel Carlos da Silva1, Melissa Gurgel Adeodato Vieira1
1University of Campinas – School of Chemical Engineering, Albert Einstein Av., 500, Campinas, 13083-852, Brazil
2Department of Civil and Environmental, Universidad de la Costa, CUC, Calle 58 # 55–66, Barranquilla, Atlántico, Colombia

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