2021
DOI: 10.3389/frwa.2021.740044
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Deep Learning for Isotope Hydrology: The Application of Long Short-Term Memory to Estimate High Temporal Resolution of the Stable Isotope Concentrations in Stream and Groundwater

Abstract: Recent advances in laser spectroscopy has made it feasible to measure stable isotopes of water in high temporal resolution (i.e., sub-daily). High-resolution data allow the identification of fine-scale, short-term transport and mixing processes that are not detectable at coarser resolutions. Despite such advantages, operational routine and long-term sampling of stream and groundwater sources in high temporal resolution is still far from being common. Methods that can be used to interpolate infrequently measure… Show more

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Cited by 8 publications
(3 citation statements)
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“…Bedrock geology consists mainly of argillaceous shale, greywacke, and loess (Orlowski et al., 2016). The climate is temperate oceanic (Cfb, Köppen climate classification) with mean annual precipitation and temperature of 623 mm and 9.6°C, respectively, for the period 1969–2019 (Sahraei et al., 2021). Crops are mainly barley, wheat, and rapeseed (Houska et al., 2017).…”
Section: Methodsmentioning
confidence: 99%
“…Bedrock geology consists mainly of argillaceous shale, greywacke, and loess (Orlowski et al., 2016). The climate is temperate oceanic (Cfb, Köppen climate classification) with mean annual precipitation and temperature of 623 mm and 9.6°C, respectively, for the period 1969–2019 (Sahraei et al., 2021). Crops are mainly barley, wheat, and rapeseed (Houska et al., 2017).…”
Section: Methodsmentioning
confidence: 99%
“…Cemek et al (2022) used different AI techniques to predict the isotopic composition (δ 18 O and δ 2 H) in groundwater, whereas, more recently, Erdélyi et al (2023) combined conventional regression techniques with Random Forest to predict the water stable isotope composition of precipitation in areas with large spatial data variability. Sahraei et al (2021) used AI techniques and physical and hydrological variables (e.g., meteorological data, catchment wetness, water temperature, pH) to predict water stable isotopes in streams and groundwater. In relation to nitrate isotopes, Yang et al (2021) developed an AI model to predict the δ 15 N-NO 3 − values in surface waters by using conventional hydrochemical variables, that could enhance the interpretation of δ 15 N-NO 3 − data and potentially improve water quality management.…”
Section: Artificial Intelligence Modelsmentioning
confidence: 99%
“…The landscape has an average slope of 5% with an elevation range of 233 -415 m a.s.l. The region has a temperate oceanic climate (Cfb, Köppen climate classification) with annual average precipitation and temperature of 623 mm and 9.6°C based on long-term data (1969 -2019) (Sahraei et al, 2021).…”
Section: Study Areamentioning
confidence: 99%