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Multicomponent analysis of electrochemical signals in the wavelet domain
Authors:Cocchi Marina  Hidalgo-Hidalgo-de-Cisneros J L  Naranjo-Rodríguez I  Palacios-Santander J M  Seeber Renato  Ulrici Alessandro
Institution:Dipartimento di Chimica, Università di Modena e Reggio Emilia, Via Campi 183, Modena, Italy. cocchi@unimore.it
Abstract:Successful applications of multivariate calibration in the field of electrochemistry have been recently reported, using various approaches such as multilinear regression (MLR), continuum regression, partial least squares regression (PLS) and artificial neural networks (ANN). Despite the good performance of these methods, it is nowadays accepted that they can benefit from data transformations aiming at removing baseline effects, reducing noise and compressing the data. In this context the wavelet transform seems a very promising tool. Here, we propose a methodology, based on the fast wavelet transform, for feature selection prior to calibration. As a benchmark, a data set consisting of lead and thallium mixtures measured by differential pulse anodic stripping voltammetry and giving seriously overlapped responses has been used. Three regression techniques are compared: MLR, PLS and ANN. Good predictive and effective models are obtained. Through inspection of the reconstructed signals, identification and interpretation of significant regions in the voltammograms are possible.
Keywords:Differential pulse anodic stripping voltammetry  Multivariate calibration  Fast wavelet transform  Variables selection
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