• Corpus ID: 248426861

On the Use of Dimension Reduction or Signal Separation Methods for Nitrogen River Pollution Source Identification

@inproceedings{Hatipouglu2022OnTU,
  title={On the Use of Dimension Reduction or Signal Separation Methods for Nitrogen River Pollution Source Identification},
  author={Guray Hatipouglu},
  year={2022}
}
Identification of the current and expected future pollution sources to rivers is crucial for sound environmental management. For this purpose numerous approaches were proposed that can be clustered under physical based models, stable isotope analysis and mixing methods, mass balance methods, time series analysis, land cover analysis, and spatial statistics. Another extremely common method is Principal Component Analysis, as well as its modifications, such as Absolute Principal Component Score… 

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