On the Selection of Variables for Qualitative Modelling
of Dynamical Systems
Keywords
- Fuzzy Inductive Reasoning
- Variable Selection
- Behavioral Modeling
- Inductive Modeling
- Qualitative Modeling
- Input/Output Modeling
Abstract
Behavioral modeling of physical systems from observations of their input/output
behavior is an important task in engineering. Such models are needed for fault
monitoring as well as intelligent control of these systems. The paper addresses
one subtask of behavioral modeling, namely the selection of input variables to
be used in predicting the behavior of an output variable. A technique that is well
suited for qualitative behavioral modeling and simulation of physical systems is
Fuzzy Inductive Reasoning (FIR), a methodology based on General System
Theory. Yet, the FIR modelling methodology is of exponential computational
complexity, and therefore, it may be useful to consider other approaches as booster
techniques for FIR. Different variable selection algorithms: the method of the
unreconstructed variance for the best reconstruction, methods based on regression
coefficients (OLS, PCR and PLS) and other methods as Multiple Correlation
Coefficients (MCC), Principal Components Analysis (PCA) and Cluster analysis are
discussed and compared to each other for use in predicting the behaviour of a steam
generator. The different variable selection algorithms previously named are then
used as booster techniques for FIR. Some of the used linear techniques have been
found to be non-effective in the task of selecting variables in order to compute
a posterior FIR model. Methods based on clustering seem particularly well suited
for pre-selecting subsets of variables to be used in a FIR modelling and simulation
effort.
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Last modified: June 15, 2005 -- © François Cellier