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Schematic diagram of sample selection, H is a hydrothermal active field, and N is not a hydrothermal active field

Schematic diagram of sample selection, H is a hydrothermal active field, and N is not a hydrothermal active field

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The study of modern seafloor hydrothermal activity and its mineralization has become one of the focuses of global geoscience. Accurate prediction of possible seafloor hydrothermal active fields is the basis of all research work. The detecting method for new seafloor hydrothermal activity still is mainly dependent on marine site investigation. This...

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