Ternary
mixtures of methanol, ethanol and 1-propanol measured by the RIfS array setup
and by the 4l setup could be successfully quantified. The application
of the growing neural network framework instead of the non-optimized neural
networks resulted in significantly improved calibrations again. The variable
selection of the framework for the array setup is quite astonishing, since only
the sensor signals of 2 sensors out of 4 sensors are used. As the framework
selects the most predictive variables, it can be concluded that the time domain
of 2 sensors contains more information than the parallel (static) information
of all 4 sensors together. This is an impressive demonstration, how the
time-resolved measurements of few sensors can render the application of many
parallel sensors with different sensitivities redundant. The static evaluation
of the 4 sensors, which corresponds to the sensor signals at the end of
exposure to analytes, shows that the time-resolved evaluation of the sensor
signals is highly superior even though the static sensor evaluation is not a
mathematically underdetermined system. It was demonstrated that smoothing
improves the calibration of measurements performed by thin sensitive layers
whereas the calibration deteriorates for measurements performed by thick
sensitive layers when smoothing the sensor signals. Furthermore, the 4l setup can be used
as single sensor device for a multicomponent quantification. Compared with the
array setup, the price of miniaturization and cost reduction has to be paid in
terms of extended measurement times respectively higher prediction errors.