In this paper, two algorithms are presented to estimate reaction rate const
ants from on-line short-wavelength near-infrared (SW-NIR) measurements. The
se can be applied in cases where the contribution of the different species
in the mixture spectra is of exponentially decaying character. From a singl
e two-dimensional dataset two two-way datasets are formed by splitting the
original dataset such that there is a constant time lag between the two two
-way datasets. Next, a trilinear structure is formed by stacking these two
two-way datasets into a three-way array. In the first algorithm, based on t
he generalized rank annihilation method (GRAM), the trilinear structure is
decomposed by solving a generalized eigenvalue problem (GEP). Because GRAM
is sensitive to noise it leads to rough estimations of reaction rate consta
nts. The second algorithm (LM-PAR) is an iterative algorithm, which consist
s of a combination of the Levenberg-Marquardt algorithm and alternating lea
st squares steps of the parallel factor analysis (PARAFAC) model using the
CRAM results as initial values. Simulations and an application to a real da
taset showed that both algorithms can be applied to estimate reaction rate
constants in case of extreme spectral overlap of different species involved
in the reacting system. (C) 1998 Elsevier Science B.V. All rights reserved
.