Structure-modified Polymeric Carbon-Dots with Lowered Retention and Enhanced Colloidal Stability in Porous Media for Tracer Application at Extreme Reservoir Condition
Materials Today Physics(2023)SCI 2区
Aramco Amer
Abstract
Tracer technology has been increasingly used in inter-well tests to investigate reservoir performance, reservoir connectivity and residual oil saturation for providing useful information to improve decision making in reservoir management. Stable nanoparticle tracers with high-sensitive real-time detectability are highly desired, and as one of the nanoparticles tracers, carbon dots (C-dots) have been studied and tested in field trial for reservoir monitoring. In this research, we report a modified method to synthesize fluorescent C-dots which fluorinated, sulfonated or zwitterionic functional groups were incorporated into the C-dots. The synthesis reactions occurred at hydrothermal conditions with inexpensive starting materials and are readily to scale up for industrial application. The synthesized C-dots are readily dispersible in brines and exhibit improved colloidal stability in high salinity and at high temperature and lowered retention in reservoir rock. Optical properties of the synthesized colloidal C-dots were studied by UV-visible and fluorescence spectroscopies, and the difference in fluorescence between the C-dots hydrothermally treated at different temperatures enables them to be used as multicolor tracers with fluorescence barcodes. Retentions of the C-dots in porous rocks were evaluated by adsorption in crushed calcite and core flooding tests with limestone, and near zero retention of the modified C-dots in reservoir rock were revealed. In molecular dynamics (MD) simulations, results show the C-dot adhesions on calcite surface follow the decreasing order: plain > sulfonated > zwitterionic > fluorinated C-dots, consistent well with experiments that the functionalized C-dots all have lowered adsorption on limestone. In comparison with those Cdots reported in literature, our results suggest that the synthesized C-dots using the modified procedure have excellent fluorescence properties, improved thermal stability, photostability, and water dispersibility, enabling their use as optically detectable nano-agent tracers for oilfield application.
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Key words
Carbon dots,Water tracer,Fluorescence,Retention,Core flooding,Molecular dynamics simulation
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