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'Pareds'-An Interactive On-Line System for the Interpretation of EDXRF Data

Published online by Cambridge University Press:  06 March 2019

Wolfhard Wegscheider
Affiliation:
Department of Chemistry, University of Denver Denver, Colorado 80208
Donald E. Leyden
Affiliation:
Department of Chemistry, University of Denver Denver, Colorado 80208
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Abstract

Multielement data as they are obtained from energy-dispersive x-ray spectrometry can only be interpreted efficiently if multivariate statistical techniques are employed. It is shown that these and pattern recognition techniques can easily be implemented on the dedicated mini-computer system that is usually supplied with the spectrometer. These algorithms are helpful in interpreting multielement data and in gaining insight in and understanding of those aspects of the data structure that are inherent to the data. Such a program was tested using ground water data. Further extensions of the concept of integrated data interpretation are discussed.

Type
Research Article
Copyright
Copyright © International Centre for Diffraction Data 1978

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