Automated interpretation of experimental data is a necessary component in automated model building environments, i.e. tools capable to select a model which explains the observed behavior of a physical system. This paper describes an algorithm for the qualitative interpretation of experimental data whose goal is to single out the qualitative properties which characterize the behavior of a real physical system, and, consequently, to make a guess for a set of plausible candidate models of the phenomenon under study. We consider observations which are gathered from creep and relaxation experiments on visco-elastic materials. In this specific context, the interpretation problem consists in determining rules for the conversion of the numerical data into the specific qualitative properties which characterize the creep and relaxation response of the material. Such properties allow us to select within a library of mathematical models [4] of ideal materials a set of candidate models which describe, at least qualitatively, the behavior of the material.

Qualitative interpretation of creep and relaxation experimental data

L Ironi;S Tentoni
1995

Abstract

Automated interpretation of experimental data is a necessary component in automated model building environments, i.e. tools capable to select a model which explains the observed behavior of a physical system. This paper describes an algorithm for the qualitative interpretation of experimental data whose goal is to single out the qualitative properties which characterize the behavior of a real physical system, and, consequently, to make a guess for a set of plausible candidate models of the phenomenon under study. We consider observations which are gathered from creep and relaxation experiments on visco-elastic materials. In this specific context, the interpretation problem consists in determining rules for the conversion of the numerical data into the specific qualitative properties which characterize the creep and relaxation response of the material. Such properties allow us to select within a library of mathematical models [4] of ideal materials a set of candidate models which describe, at least qualitatively, the behavior of the material.
1995
Istituto di Matematica Applicata e Tecnologie Informatiche - IMATI -
Inglese
R.A. Adey, G. Rzevski, C. Tasso
Applications of Artificial Intelligence in Engineering X
10th International Conference on Applications of Artificial Intelligence in Engineering AIENG'95
129
136
8
1 85312 316 1
Computational Mechanics Publications
Southampton
REGNO UNITO DI GRAN BRETAGNA
Sì, ma tipo non specificato
1 july 1995
Udine, Italy
N/A
Proceedings of the 1995 10th International Conference on Applications of Artificial Intelligence in Engineering,
2
none
A.C. Capelo; L. Ironi;S. Tentoni
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/220587
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