Model Robust Calibration: Method and Application to Electronically-Scanned Pressure Transducers
Author(s) -
Eric Walker,
B. Alden Starnes,
Jeffery B. Birch,
James E. Mays
Publication year - 2010
Publication title -
vtechworks (virginia tech)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.2010-4923
Subject(s) - calibration , transducer , computer science , pressure sensor , acoustics , engineering , physics , mechanical engineering , quantum mechanics
This article presents the application of a recently developed statistical regression method to the controlled instrument calibration problem. The statistical method of Model Robust Regression (MRR), developed by Mays, Birch, and Starnes, is shown to improve instrument calibration by reducing the reliance of the calibration on a predetermined parametric (e.g. polynomial, exponential, logarithmic) model. This is accomplished by allowing fits from the predetermined parametric model to be augmented by a certain portion of a fit to the residuals from the initial regression using a nonparametric (locally parametric) regression technique. The method is demonstrated for the absolute scale calibration of silicon-based pressure transducers.
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