Environmental predictors of deep-sea polymetallic nodule occurrence in the global ocean

06/03/2020
by   rdietmarmuller, et al.
0

Polymetallic nodules found on the abyssal plains of the oceans represent one of the slowest known geological processes, and are a source of critical and rare metals for frontier tech- nologies. A quantitative assessment of their occurrence worldwide has been hampered by a research focus on the northeastern Pacific Ocean and the lack of a global open-access data set of nodules. We have compiled a global data set of >10,000 seabed nodule and control samples, and combine it with digital grids of key environmental parameters to generate a predictive machine-learning model of nodule occurrence. In order of decreasing parameter ranking, we find that nodules are associated with very low sedimentation rates (< 0.5 cm/k.y.), moderately high oxygen values (150 and 210 mmol/m3), lithologies of clay followed by calcareous ooze, low summer surface productivity (<300 mgC/m2/day), low benthic biomass concentration (<1 log mgC/m2), water depths >4500 m, and low total organic carbon content (0.3–0.5 wt%). Com- peting hypotheses for nodule sustention and thus continued growth on the seafloor are the removal of sediment by bottom-water currents and biological activity. Using a high-resolution eddy-resolving ocean circulation model, we find that the bottom-current speeds over nodule fields are too low (<5 cm/s) to remove sediment, implicating the activity of epibenthic mega- fauna as the most likely mechanism. Our global nodule probability map combined with the assessment of a range of environmental drivers provides an improved basis for decision and policy making in the controversial area of deep-sea exploration.

READ FULL TEXT

page 13

page 16

research
06/03/2020

Census of seafloor sediments in the world’s ocean

Knowing the patterns of distribution of sediments in the global ocean is...
research
06/03/2020

Controls on the distribution of deep-sea sediments

Deep-sea sediments represent the largest geological deposit on Earth and...
research
07/17/2019

AquaSight: Automatic Water Impurity Detection Utilizing Convolutional Neural Networks

According to the United Nations World Water Assessment Programme, every ...
research
08/29/2019

Targeted Source Detection for Environmental Data

In the face of growing needs for water and energy, a fundamental underst...
research
02/22/2021

Modeling Chromate Removal Using Ion Exchangers in Drinking Water Applications

Chromates are widely used for their anticorrosive properties. Unfortunat...
research
02/07/2022

The Biosensor based on electrochemical dynamics of fermentation in yeast Saccharomyces Cerevisiae

The zymase activity of the yeast Saccharomyces Cerevisiae is sensitive t...
research
05/31/2023

Analysing high resolution digital Mars images using machine learning

The search for ephemeral liquid water on Mars is an ongoing activity. Af...

Please sign up or login with your details

Forgot password? Click here to reset