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SAMPLE PREPARATION SYSTEM FOR CARBONATE AND DIC IN WATER AT THE GXNU-AMS LABORATORY

RADIOCARBON(2024)

Guangxi Normal Univ

Cited 0|Views14
Abstract
A new vacuum line to extract CO2 from carbonate and dissolved inorganic carbon (DIC) in water was established at Guangxi Normal University. The vacuum line consisted of two main components: a CO2 bubble circulation region and a CO2 purification collection region, both of which were made of quartz glass and metal pipelines. To validate its reliability, a series of carbonate samples were prepared using this system. The total recovery rate of CO2 extraction and graphitization exceeded 80%. Furthermore, the carbon content in calcium carbonate exhibited a linear relationship with the CO2 pressure within the system, demonstrating its stability and reliability. The system was also employed to prepare and analyze various samples, including calcium carbonate blanks, foraminiferal, shell, groundwater, and subsurface oil-water samples. The accelerator mass spectrometry (AMS) results indicated that the average beam current for 12C- in the samples exceeded 40 mu A. Additionally, the contamination introduced during the liquid sample preparation process was approximately (1.77 +/- 0.57) x 10-14. Overall, the graphitized preparation system for carbonate and DIC in water exhibited high efficiency and recovery, meeting the requirements for samples dating back to approximately 30,000 years.
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accelerator mass spectrometry,carbonate,sample preparation
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