Sangam: A Confluence of Knowledge Streams

Using source‐specific models to test the impact of sediment source classification on sediment fingerprinting

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dc.creator Vercruysse, Kim
dc.creator Grabowski, Robert C.
dc.date 2018-09-10T09:41:41Z
dc.date 2018-09-10T09:41:41Z
dc.date 2018-08-31
dc.date.accessioned 2022-05-25T16:38:18Z
dc.date.available 2022-05-25T16:38:18Z
dc.identifier Kim Vercruysse and Robert C. Grabowski. Using source‐specific models to test the impact of sediment source classification on sediment fingerprinting. Hydrological Processes, Volume 32, Issue 22, 30 October 2018, pp. 3402-3415
dc.identifier 0885-6087
dc.identifier https://doi.org/10.1002/hyp.13269
dc.identifier http://dspace.lib.cranfield.ac.uk/handle/1826/13463
dc.identifier.uri http://localhost:8080/xmlui/handle/CUHPOERS/182320
dc.description Sediment fingerprinting estimates sediment source contributions directly from river sediment. Despite being fundamental to the interpretation of sediment fingerprinting results, the classification of sediment sources and its impact on the accuracy of source apportionment remain under‐investigated. This study assessed the impact of source classification on sediment fingerprinting based on Diffuse Reflectance Infrared Fourier Transform Spectrometry (DRIFTS), using individual, source‐specific partial least squares regression (PLSR) models. The objectives were to (i) perform a model sensitivity analysis through systematically omitting sediment sources; and (ii) investigate how sediment source group discrimination and the importance of the groups as actual sources relate to variations in results. Within the Aire catchment (UK), five sediment sources were classified and sampled (n = 117): grassland topsoil in three lithological areas (limestone, millstone grit and coal measures), riverbanks, and street dust. Experimental mixtures (n = 54) of the sources were used to develop PLSR models between known quantities of a single source and DRIFTS spectra of the mixtures, which were applied to estimate source contributions from DRIFTS spectra of suspended (n = 200) and bed (n = 5) sediment samples. Dominant sediment sources were limestone topsoil (45 ± 12 %) and street dust (43 ± 10 %). Millstone and coals topsoil contributed on average 19 ± 13 % and 14 ± 10 %, and riverbanks 16 ± 18%. Due to the use of individual PLSR models, the sum of all contributions can deviate from 100%, thus a model sensitivity analysis assessed the impact and accuracy of source classification. Omitting less important sources (e.g. coals topsoil) did not change contributions of other sources, while omitting important, poorly‐discriminated sources (e.g. riverbank), increased contributions of all sources. In other words, variation in source classification substantially alters source apportionment depending on source discrimination and source importance. These results will guide development of procedures for evaluating the appropriate type and number of sediment sources in DRIFTS‐PLSR sediment fingerprinting.
dc.language en
dc.publisher Wiley
dc.rights Attribution-NonCommercial 4.0 International
dc.rights http://creativecommons.org/licenses/by-nc/4.0/
dc.subject Sediment tracing
dc.subject source identification
dc.subject DRIFTS
dc.subject sensitivity analysis
dc.subject discrimination
dc.subject partial least squares regression
dc.subject fine sediment
dc.subject source apportionment
dc.title Using source‐specific models to test the impact of sediment source classification on sediment fingerprinting
dc.type Article


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