Model-Based Clustering of Trends and Cycles of Nitrate Concentrations in Rivers Across France
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Nitrate contamination of rivers from agricultural sources, is a challenging problem for water quality management. The relationship between solute concentrations and streamflow rates (C-Q) observed at catchment outlets provide useful information on hydrolog ...
2022
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