Title :
Fuzzy modeling of measurement data acquired from physical sensors
Author :
Mauris, Gilles ; Lasserre, Virginie ; Foulloy, Laurent
Author_Institution :
Savoie Univ., Chambery, France
fDate :
12/1/2000 12:00:00 AM
Abstract :
The measurement uncertainty in physical sensors is often represented by a probabilistic approach, but such a representation is not always adapted to new intelligent systems. Therefore, a fuzzy representation, based on the possibility theory, can sometimes be preferred. We previously proposed a truncated triangular probability-possibility transformation to be applied to any unimodal and symmetric probability distribution which can be assimilated to one of the four most encountered probability laws (Gaussian, double-exponential, triangular, uniform). In this paper, we propose to build a fuzzy model of data acquired from physical sensors by applying this transformation. For this purpose, a minimum of knowledge about the probabilistic modeling of sensors is required. Three main situations are considered and for each situation, an adapted fuzzy modeling is proposed. Examples of these three situations are based on FM-chirped ultrasonic sensors
Keywords :
fuzzy set theory; intelligent sensors; measurement uncertainty; modelling; possibility theory; probability; sensor fusion; FM-chirped ultrasonic sensors; confidence intervals; fuzzy modelling; fuzzy representation; intelligent sensors; measurement uncertainty; physical sensors; possibility theory; probability-possibility transformation; truncated triangular transformation; Intelligent sensors; Intelligent systems; Measurement uncertainty; Possibility theory; Probability distribution; Pulse measurements; Sensor systems; Statistical distributions; Statistics; Ultrasonic variables measurement;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on