Bayesian statistical analysis of hydrogeochemical data using point processes: a new tool for source detection in multicomponent fluid mixtures
Christophe Reype and Antonin Richard and Madalina Deaconu and Radu-Stefan Stoica. ( 2020 )
in: 2020 RING Meeting, ASGA
Abstract
Hydrogeochemical data may be seen as a point cloud in a multi-dimensional space. Each dimension of this space represents a hydrogeochemical parameter ( i.e. salinity", solute concentration, concentration ratio, isotopic composition...). While the composition of many geological fluids is controlled by mixing between multiple sources, a key question related to hydrogeochemical dataset is the detection of the sources. By looking at the hydrogeochemical data as spatial data," this paper presents a new solution to the source detection problem that is based on point processes. Results are shown on simulated and real data from geothermal fluids.
Download / Links
BibTeX Reference
@inproceedings{REYPE_RM2020, abstract = { Hydrogeochemical data may be seen as a point cloud in a multi-dimensional space. Each dimension of this space represents a hydrogeochemical parameter ( i.e. salinity", solute concentration, concentration ratio, isotopic composition...). While the composition of many geological fluids is controlled by mixing between multiple sources, a key question related to hydrogeochemical dataset is the detection of the sources. By looking at the hydrogeochemical data as spatial data," this paper presents a new solution to the source detection problem that is based on point processes. Results are shown on simulated and real data from geothermal fluids. }, author = { Reype, Christophe AND Richard, Antonin AND Deaconu, Madalina AND Stoica, Radu-Stefan }, booktitle = { 2020 RING Meeting }, publisher = { ASGA }, title = { Bayesian statistical analysis of hydrogeochemical data using point processes: a new tool for source detection in multicomponent fluid mixtures }, year = { 2020 } }