TY - JOUR
T1 - Modeling groundwater redox conditions at national scale through integration of sediment color and water chemistry in a machine learning framework
AU - Koch, Julian
AU - Kim, Hyojin
AU - Tirado-Conde, Joel
AU - Hansen, Birgitte
AU - Møller, Ingelise
AU - Thorling, Lærke
AU - Troldborg, Lars
AU - Voutchkova, Denitza
AU - Højberg, Anker Lajer
N1 - Publisher Copyright:
© 2024
PY - 2024/10/15
Y1 - 2024/10/15
N2 - Redox conditions play a crucial role in determining the fate of many contaminants in groundwater, impacting ecosystem services vital for both the aquatic environment and human water supply. Geospatial machine learning has previously successfully modelled large-scale redox conditions. This study is the first to consolidate the complementary information provided by sediment color and water chemistry to enhance our understanding of redox conditions in Denmark. In the first step, the depth to the first redox interface is modelled using sediment color from 27,042 boreholes. In the second step, the depth of the first redox interface is compared against water chemistry data at 22,198 wells to classify redox complexity. The absence of nitrate containing water below the first redox interface is referred to as continuous redox conditions. In contrast, discontinuous redox conditions are identified by the presence of nitrate below the first redox interface. Both models are built using 20 covariate maps, encompassing diverse hydrologically relevant information. The first redox interface is modelled with a mean error of 0.0 m and a root-mean-squared error of 8.0 m. The redox complexity model attains an accuracy of 69.8 %. Results indicate a mean depth to the first redox interface of 8.6 m and a standard deviation of 6.5 m. 60 % of Denmark is classified as discontinuous, indicating complex redox conditions, predominantly collocated in clay rich glacial landscapes. Both maps, i.e., first redox interface and redox complexity are largely driven by the water table and hydrogeology. The developed maps contribute to our understanding of subsurface redox processes, supporting national-scale land-use and water management.
AB - Redox conditions play a crucial role in determining the fate of many contaminants in groundwater, impacting ecosystem services vital for both the aquatic environment and human water supply. Geospatial machine learning has previously successfully modelled large-scale redox conditions. This study is the first to consolidate the complementary information provided by sediment color and water chemistry to enhance our understanding of redox conditions in Denmark. In the first step, the depth to the first redox interface is modelled using sediment color from 27,042 boreholes. In the second step, the depth of the first redox interface is compared against water chemistry data at 22,198 wells to classify redox complexity. The absence of nitrate containing water below the first redox interface is referred to as continuous redox conditions. In contrast, discontinuous redox conditions are identified by the presence of nitrate below the first redox interface. Both models are built using 20 covariate maps, encompassing diverse hydrologically relevant information. The first redox interface is modelled with a mean error of 0.0 m and a root-mean-squared error of 8.0 m. The redox complexity model attains an accuracy of 69.8 %. Results indicate a mean depth to the first redox interface of 8.6 m and a standard deviation of 6.5 m. 60 % of Denmark is classified as discontinuous, indicating complex redox conditions, predominantly collocated in clay rich glacial landscapes. Both maps, i.e., first redox interface and redox complexity are largely driven by the water table and hydrogeology. The developed maps contribute to our understanding of subsurface redox processes, supporting national-scale land-use and water management.
KW - Geochemistry
KW - Gradient boosting with decision trees
KW - Groundwater
KW - Machine learning
KW - Nitrate
KW - Redox conditions
UR - http://www.scopus.com/inward/record.url?scp=85198073735&partnerID=8YFLogxK
U2 - 10.1016/j.scitotenv.2024.174533
DO - 10.1016/j.scitotenv.2024.174533
M3 - Article
C2 - 38972412
AN - SCOPUS:85198073735
SN - 0048-9697
VL - 947
JO - Science of the Total Environment
JF - Science of the Total Environment
M1 - 174533
ER -