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Original Articles

An efficient green microextraction method of Co and Cu in environmental samples prior to their flame atomic absorption spectrometric detection

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Pages 2728-2741 | Received 25 Jul 2019, Accepted 01 Dec 2019, Published online: 30 Jan 2020
 

ABSTRACT

A dispersive liquid-liquid microextraction procedure (DLLME) was developed and validated for the determination of cobalt and copper in environmental samples by flame atomic absorption spectrometry. The optimisation parameters of DLLME procedure including amount of chelating reagent (0.05 mg dithizone), pH (6), extraction type and volume (250 µL chloroform) and dispersive solvent (1000 µL acetone), matrix effect was investigated. Several validation variables, such as limit of detection and quantification, linearity, recovery, precision and trueness were also tested. The quantification limits of Co and Cu were found to be 9.01 and 6.14 µg L−1, respectively. The enrichment factor was 20. The trueness of the method was tested by analysis of certificated reference material (BCR-715) for Cu and calculated less than −1.11% with the relative error. The presented green microextraction method was profitably applied to real samples and the spiked recoveries calculated were more than 95% with the relative standard deviation less than 8.4%.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This project was supported by funds from the, Scientific Research Projects (SRP) Coordination Unit of Pamukkale University (project number: 2010FBE046). 

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