Resolution of mid-infrared spectra by factor analysis using spherical projections: influence of noise, spectral similarity, wavelength resolution and mixture composition on success of the method
Abstract
A new method for the resolution and recovery of mid-infrared spectra by factor analysis is described. The key to the method is to determine a few ‘composition-one’ points in a set of mixture spectra, where one component uniquely absorbs. The method involves filtering the data using Savitzky–Golay filters, performing principal components analysis, elimination of composition-zero (noise) points, normalization of scores (projection onto the surface of a hypersphere), determining the best N composition-one points for each compound, and finally factor rotation/recovery of spectra. The method is evaluated using two criteria of success namely, the number of true composition-one points recovered and the correlation between true and recovered spectra. The influence of spectral similarity, spectral resolution, component concentration, noise levels, and cut-off threshold is investigated on two separate simulated datasets. Finally, the method is shown to work on a real dataset.