Data di Pubblicazione:
2002
Abstract:
A neural architecture, based on several self-organising maps, is presented
which counteracts the parameter drift problem for an array of conducting
polymer gas sensors when used for odour sensing. The neural architecture
is named mSom, where m is the number of odours to be recognised, and is
mainly constituted of m maps; each one approximates the statistical
distribution of a given odour. Competition occurs both within each map and
between maps for the selection of the minimum map distance in the
euclidean space. The network (mSom) is able to adapt itself to new changes
of the input probability distribution by repetitive self-training
processes based on its experience. This architecture has been tested and
compared with other neural architectures, such as RBF and Fuzzy ARTMAP.
The network shows long-term stable behaviour, and is completely autonomous
during the testing phase, where re-adaptation of the neurons is needed due
to the changes of the input probability distribution of the given data
set.
Tipologia CRIS:
01.01 Articolo in rivista
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