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Study on Lithium Extraction from Salt Lake Brines

Author name : Anissa Somrani
Publication Date : 2023-01-27
Journal Name : Theoretical Foundations of Chemical Engineering

Abstract

The purpose of the present study is to investigate the extraction of lithium from southern Tunisian
brines. Density and concentration of Lithium in those brines were reported. Also, pondered rates of Lithium
and the major elements in brines were investigated. Obtained results indicate that Lithium exist in those
brines as traces. The optimization of certain parameters is required in this study. To extract Lithium from natural brines two steps were investigated. Firstly, we have used Ammonium Oxalate ((NH4
)
2(C
2O4)⋅2H
2O) to
precipitate only Magnesium ion: in this procedure,three parameters were investigated (Mg/Oxalate, T(°C)
and t
stirring
). The maximum values were found to be Mg/Ox = 0.66, T= Treflux= 100°C and t
stirring≥30 min.
Secondly, we have used Aluminum Chloride (AlCl3⋅6H
2O) in order to adsorbing lithium ions by Aluminum
hydroxide. In this procedure, four parameters were investigated (pH, Al/Li, t
stirring
and T (°C)). Maximum
values of these parameters are 7.2, 4.7, 3 h and 25°C respectively. Finally, to separate Lithium from Aluminum
solution, we have used an exchange ion resin. This solution including two ions under cationic form (Al
3+
and
Li
+
). Al
3+
was complexed into [Al(C2O4
)
3
]
3–using Ammonium Oxalate ions ( ) and removed from
solution using an anion exchange resin (Amberlite IRA-402). Thus, a theoretical study was carried out to
determine the appropriate pH for separation. After Aluminum ions complexation by ammonium oxalate,
Ox/Al molar ratio and pH was studied. Optimal values of these parameters are 3 and 4 respectively and the
recovery of Li
+
is set to be 98.5%.

Keywords

natural brine, lithium, extraction, ammonium oxalate, aluminum chloride, amberlite IRA-402

Publication Link

https://doi.org/10.1134/S0040579522060252

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