Using Remote Sensing and Machine Learning to Locate Groundwater Discharge to Salmon-Bearing Streams

dc.contributor.authorGerlach, Mary E.
dc.contributor.authorRains, Kai C.
dc.contributor.authorGuerrón-Orejuela, Edgar J.
dc.contributor.authorKleindl, William J.
dc.contributor.authorDowns, Joni
dc.contributor.authorLandry, Shawn M.
dc.contributor.authorRains, Mark C.
dc.date.accessioned2022-09-09T20:54:51Z
dc.date.available2022-09-09T20:54:51Z
dc.date.issued2021-12
dc.description.abstractWe hypothesized topographic features alone could be used to locate groundwater discharge, but only where diagnostic topographic signatures could first be identified through the use of limited field observations and geologic data. We built a geodatabase from geologic and topographic data, with the geologic data only covering ~40% of the study area and topographic data derived from airborne LiDAR covering the entire study area. We identified two types of groundwater discharge: shallow hillslope groundwater discharge, commonly manifested as diffuse seeps, and aquifer-outcrop groundwater discharge, commonly manifested as springs. We developed multistep manual procedures that allowed us to accurately predict the locations of both types of groundwater discharge in 93% of cases, though only where geologic data were available. However, field verification suggested that both types of groundwater discharge could be identified by specific combinations of topographic variables alone. We then applied maximum entropy modeling, a machine learning technique, to predict the prevalence of both types of groundwater discharge using six topographic variables: profile curvature range, with a permutation importance of 43.2%, followed by distance to flowlines, elevation, topographic roughness index, flow-weighted slope, and planform curvature, with permutation importance of 20.8%, 18.5%, 15.2%, 1.8%, and 0.5%, respectively. The AUC values for the model were 0.95 for training data and 0.91 for testing data, indicating outstanding model performance.en_US
dc.identifier.citationGerlach, M.E.; Rains, K.C.; Guerrón-Orejuela, E.J.; Kleindl, W.J.; Downs, J.; Landry, S.M.; Rains, M.C. Using Remote Sensing and Machine Learning to Locate Groundwater Discharge to Salmon-Bearing Streams. Remote Sens. 2022, 14, 63.en_US
dc.identifier.issn2072-4292
dc.identifier.urihttps://scholarworks.montana.edu/handle/1/17112
dc.language.isoen_USen_US
dc.publisherMDPI AGen_US
dc.rightscc-byen_US
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/en_US
dc.subjectseepsen_US
dc.subjectspringsen_US
dc.subjectgeologyen_US
dc.subjecttopographyen_US
dc.subjectaquifer outcropsen_US
dc.subjectalaskaen_US
dc.subjectkanai peninsulaen_US
dc.titleUsing Remote Sensing and Machine Learning to Locate Groundwater Discharge to Salmon-Bearing Streamsen_US
dc.typeArticleen_US
mus.citation.extentfirstpage1en_US
mus.citation.extentlastpage18en_US
mus.citation.issue1en_US
mus.citation.journaltitleRemote Sensingen_US
mus.citation.volume14en_US
mus.data.thumbpage3en_US
mus.identifier.doi10.3390/rs14010063en_US
mus.relation.collegeCollege of Agricultureen_US
mus.relation.departmentLand Resources & Environmental Sciences.en_US
mus.relation.universityMontana State University - Bozemanen_US

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