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Erschienen in: Hydrogeology Journal 5/2017

30.03.2017 | Technical Note

A subagging regression method for estimating the qualitative and quantitative state of groundwater

verfasst von: Jina Jeong, Eungyu Park, Weon Shik Han, Kue-Young Kim

Erschienen in: Hydrogeology Journal | Ausgabe 5/2017

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Abstract

A subsample aggregating (subagging) regression (SBR) method for the analysis of groundwater data pertaining to trend-estimation-associated uncertainty is proposed. The SBR method is validated against synthetic data competitively with other conventional robust and non-robust methods. From the results, it is verified that the estimation accuracies of the SBR method are consistent and superior to those of other methods, and the uncertainties are reasonably estimated; the others have no uncertainty analysis option. To validate further, actual groundwater data are employed and analyzed comparatively with Gaussian process regression (GPR). For all cases, the trend and the associated uncertainties are reasonably estimated by both SBR and GPR regardless of Gaussian or non-Gaussian skewed data. However, it is expected that GPR has a limitation in applications to severely corrupted data by outliers owing to its non-robustness. From the implementations, it is determined that the SBR method has the potential to be further developed as an effective tool of anomaly detection or outlier identification in groundwater state data such as the groundwater level and contaminant concentration.

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Metadaten
Titel
A subagging regression method for estimating the qualitative and quantitative state of groundwater
verfasst von
Jina Jeong
Eungyu Park
Weon Shik Han
Kue-Young Kim
Publikationsdatum
30.03.2017
Verlag
Springer Berlin Heidelberg
Erschienen in
Hydrogeology Journal / Ausgabe 5/2017
Print ISSN: 1431-2174
Elektronische ISSN: 1435-0157
DOI
https://doi.org/10.1007/s10040-017-1561-9

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