Old and new ecological models can be classified into two basic categories: Those aimed at (i)
gaining more insight into ecological systems and (ii) producing predictive models of ecosystem behaviour.
Many of the models successfully applied to ecological modelling are borrowed from other disciplines such as
engineering, mathematics and in recent times from intelligent information processing systems motivated by
neuro-physiological understandings i.e. 1artificial neural networks (ANNs). The use of ANNs in ecological
modelling is becoming a popular method with considerable success in elucidating the complexity in
ecosystem processes. We critically analyse some ecological modelling applications with self-organising maps
(SOMs), within the connectionist neural computing paradigms. These are used to unravel the non-linear
relationships in highly complex and often cryptic ecosystems from northern New Zealand. A need to
accurately predict an ecosystems response to daily increasing human influences on the environment and its
biodiversity is considered to be absolutely vital to preserve natural systems. The example illustrated shows
SOM abilities to extract more knowledge from the ecological monitoring data of complex matrices with
numeric values of environmental and biological indicators, compared to the conventional data analysis
methods. Conventional methods are seen as of little use in exploring the non-linear relationships within the
data.
History
Start page
759
End page
764
Total pages
6
Outlet
Proceedings of the International Congress on Modelling and Simulation Conference (MODISM ) 2003, Volume 2- Natural Systems
Editors
D. Post
Name of conference
MODSIM 2003
Publisher
Modelling and Simulation Society of Australia and New Zealand Inc.