4.5 Article

Selective Flotation of Pyrite from Galena Using Chitosan with Different Molecular Weights

期刊

MINERALS
卷 9, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/min9090549

关键词

chitosan; molecular weight; selective depression; reverse flotation; pyrite; galena

资金

  1. National Natural Science Foundation of China [51774328, 51404300]
  2. Young Elite Scientists Sponsorship Program by CAST [2017QNRC001]
  3. Young Elite Scientists Sponsorship Program by Hunan province of China [2018RS3011]
  4. Natural Science Foundation of Hunan Province of China [2018JJ2520]
  5. Open-End Fund for the Valuable and Precision Instruments of Central South University [CSUZC201806]
  6. Open Fund of Guangdong Provincial Key Laboratory of Development and Comprehensive Utilization of Mineral Resources [2017B030314046]
  7. National 111 Project [B14034]

向作者/读者索取更多资源

Pyrite is a major gangue mineral associated with galena and other valuable minerals, and it is necessary to selectively remove pyrite to upgrade the lead concentrate by froth flotation. In this study, the flotation experiments of a single mineral and mixed minerals were performed using chitosan with different molecular weights (MW = 2-3, 3-6, 10 and 100 kDa) as a depressant, ethyl xanthate as a collector, and terpineol as a frother, in a bid to testify the separation of pyrite from galena. Flotation results showed that the selective flotation of pyrite from galena can be achieved under the preferred reagent scheme, i.e., 400 g/t chitosan (10 kDa), 1600 g/t ethyl xanthate, and 100 g/t terpineol, while chitosan with other molecular weights cannot. Furthermore, the results of the zeta potential and contact angle measurements revealed that chitosan (10 kDa) has a strong adsorption on galena yet a very weak adsorption on pyrite at the dosage of 400 g/t. This study showed that chitosan (10 kDa) has great potential in the industrial flotation separation of pyrite from lead concentrates.

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