
doi: 10.1002/int.20423
Summary: The tuning of a fuzzy model is discussed in the context of choices made between different t-norms. The effects of the choice is illustrated by looking at two fuzzy models initially generated, respectively, by grid partition and a novel variant of subtractive clustering. The new variant of subtractive clustering introduced in the paper is based on the standard method of subtractive clustering, where in this new method, the measure of similarity and thus also cluster shapes depend on a choice of t-norm \(T\).
subtractive clustering, Fuzzy control/observation systems, t-norms, fuzzy model, grid partition
subtractive clustering, Fuzzy control/observation systems, t-norms, fuzzy model, grid partition
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