https://doi.org/10.25678/000CT3
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Data for: Machine learning reveals that sodium concentration and temperature influence alkenone occurrence in Swiss and worldwide freshwater lakes
Dataset extent
Data and Resources
Citation
Martin, C., Richter, N., Lloren, R., Amaral-Zettler, L., & Dubois, N. (2024). Data for: Machine learning reveals that sodium concentration and temperature influence alkenone occurrence in Swiss and worldwide freshwater lakes (Version 1.0). Eawag: Swiss Federal Institute of Aquatic Science and Technology. https://doi.org/10.25678/000CT3
Metadata
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| Keywords | Alkenones,Isochrysidales,Freshwater lakes,Machine learning,Switzerland,Paleotemperature proxy,chloride concentration,sodium concentration,potassium concentration,sulfate concentration,magnesium concentration,calcium concentration |
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| Timerange |
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| Review Level | domain specific |
| Curator | Martin, Celine |
| Contact | Dubois, Nathalie <Nathalie.Dubois@eawag.ch> |
| DOI | 10.25678/000CT3 |
Open Data
Long-term data