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dc.contributor.authorKaniu, M I
dc.contributor.authorAngeyo, K H
dc.contributor.authorMwala, A K
dc.contributor.authorMwangi, F K
dc.date.accessioned2013-06-25T11:50:27Z
dc.date.available2013-06-25T11:50:27Z
dc.date.issued2012-08
dc.identifier.citationKaniu, M. I et al(2012). Energy dispersive X-ray fluorescence and scattering assessment of soil quality via partial least squares and artificial neural networks analytical modeling approaches. Talanta; 98: 236-240en
dc.identifier.urihttp://www.sciencedirect.com/science/article/pii/S0039914012005486
dc.identifier.urihttp://erepository.uonbi.ac.ke:8080/xmlui/handle/123456789/39697
dc.descriptionJournal articleen
dc.description.abstractSoil quality assessment (SQA) calls for rapid, simple and affordable but accurate analysis of soil quality indicators (SQIs). Routine methods of soil analysis are tedious and expensive. Energy dispersive X-ray fluorescence and scattering (EDXRFS) spectrometry in conjunction with chemometrics is a potentially powerful method for rapid SQA. In this study, a 25 m Ci 109Cd isotope source XRF spectrometer was used to realize EDXRFS spectrometry of soils. Glycerol (a simulate of “organic” soil solution) and kaolin (a model clay soil) doped with soil micro (Fe, Cu, Zn) and macro (NO3−, SO42−, H2PO4−) nutrients were used to train multivariate chemometric calibration models for direct (non-invasive) analysis of SQIs based on partial least squares (PLS) and artificial neural networks (ANN). The techniques were compared for each SQI with respect to speed, robustness, correction ability for matrix effects, and resolution of spectral overlap. The method was then applied to perform direct rapid analysis of SQIs in field soils. A one-way ANOVA test showed no statistical difference at 95% confidence interval between PLS and ANN results compared to reference soil nutrients. PLS was more accurate analyzing C, N, Na, P and Zn (R2>0.9) and low SEP of (0.05%, 0.01%, 0.01%, and 1.98 μg g−1respectively), while ANN was better suited for analysis of Mg, Cu and Fe (R2>0.9 and SEP of 0.08%, 4.02 μg g−1, and 0.88 μg g−1 respectively).en
dc.language.isoenen
dc.subjectArtificial neural networksen
dc.subjectEnergy dispersive X-ray fluorescence and scatteringen
dc.subjectPartial least squaresen
dc.subjectSoil quality assessmenten
dc.subjectSpectra modelingen
dc.titleEnergy dispersive X-ray fluorescence and scattering assessment of soil quality via partial least squares and artificial neural networks analytical modeling approachesen
dc.typeArticleen
local.publisherDepartment of Land Resource Management and Agricultural Technology, University of Nairobien
local.publisherDepartment of physics, University of Nairobien
local.publisherInstitute of Nuclear Science, University of Nairobien


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