Title :
Fitting transducer characteristics to measured data
Author :
Dias Pereira, J.M. ; Silva Girão, P. M B ; Postolache, Octavian
fDate :
12/1/2001 12:00:00 AM
Abstract :
There are no rules to select the best curve-fitting method for a given set of data. This problem is of great importance in measurement applications. Optimizing analog and digital methods for a transducer´s characteristic interpolation or linearization is a field where constant research is being done, particularly since auto-calibration and self-test of intelligent transducers is a topic of major interest. We present an overview of classical methods for data interpolation and least mean squares regression. We make a comparative evaluation of the relative performance of polynomial and artificial neural networks approximations to measurement data with particular attention paid to the reduction of the required calibration set dimension to obtain a given accuracy
Keywords :
Newton method; calibration; curve fitting; function approximation; intelligent sensors; interpolation; least mean squares methods; neural nets; polynomial approximation; splines (mathematics); transducers; virtual instrumentation; Lagrange interpolation; Newton interpolation; artificial neural networks; calibration set dimension; curve-fitting method; data accuracy; data interpolation; function approximation; global interpolators; gradient methods; intelligent transducers; least mean squares regression; local interpolators; measurement data; nonlinear optical displacement sensor; polynomial approximations; relative performance; splines; Artificial intelligence; Artificial neural networks; Built-in self-test; Curve fitting; Interpolation; Least squares approximation; Optimization methods; Particle measurements; Polynomials; Transducers;
Journal_Title :
Instrumentation & Measurement Magazine, IEEE
DOI :
10.1109/5289.975463