Issue 1, 2000

Discrimination of chemically similar organic vapours and vapour mixtures using the Kohonen networkPresented at SAC 99, Dublin, Ireland, July 25–30, 1999.

Abstract

A Kohonen network was employed to discriminate between a series of chemically similar alcohols and mixtures of organic solvents. The input data for the Kohonen analysis was generated using an optimized eight-sensor array designed to sample the headspace of the solvents. Different sizes of output grid were investigated to devise a network that gave optimum discrimination and maintained relationships within the data set. When the output grid was large compared to the number of classes in the sample set, discrimination was shown to be enhanced compared to a small output grid. An advantage of the small output grid is that it was shown to maintain information within the original data set. The Kohonen network generated easily distinguishable output patterns, which could be used as an alternative to pattern recognition or in conjunction with output grid maps.

Article information

Article type
Paper
Submitted
03 Aug 1999
Accepted
05 Nov 1999
First published
07 Jan 2000

Analyst, 2000,125, 65-70

Discrimination of chemically similar organic vapours and vapour mixtures using the Kohonen network

K. Lau, P. McAlernon and J. M. Slater, Analyst, 2000, 125, 65 DOI: 10.1039/A906319F

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