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The principle of possibility maximum specificity as a basis for measurement uncertainty expression | IEEE Conference Publication | IEEE Xplore

The principle of possibility maximum specificity as a basis for measurement uncertainty expression


Abstract:

This paper deals with the foundations of a possibility/fuzzy expression of measurement uncertainty. Indeed the notion of possibility distribution is clearly identified to...Show More

Abstract:

This paper deals with the foundations of a possibility/fuzzy expression of measurement uncertainty. Indeed the notion of possibility distribution is clearly identified to a family of probability distributions whose coverage intervals are included in the level cuts of the possibility distribution Thus the fuzzy inclusion ordering, dubbed specificity ordering, constitutes the basis of a maximal specificity principle. The latter is sounder than the maximal entropy principle to deal with cases of partial or incomplete information in a measurement context. The two approaches can be compared on some common practical measurement cases thanks to the respective coverage intervals they provide.
Date of Conference: 06-07 July 2009
Date Added to IEEE Xplore: 18 August 2009
CD:978-1-4244-3593-7
Conference Location: Bucharest, Romania
References is not available for this document.

I. Introduction

In very many cases, the obj ective of uncertainty evaluation is to determine a coverage interval (or coverage region) for the measurement result. Commonly, this coverage interval will be for a 95 % coverage probability, an interval that is expected to contain 95 % of the values that could be attributed to the output quantity. There is no compelling scientific reason for this choice. It almost certainly stems from the traditional use of 95 % in statistical hypothesis testing, although the reasons for the choice in that area are very different. The overriding reason for the use of 95 % in uncertainty evaluation is a practical one [1]. It has become so well established that for purpose of comparison with other results its use is almost mandated.

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1.
Cox M.G. and P.M. Harris, Software support for metrology best practice guide no. 6: Uncertainty evaluation, NPL Report, 2006.
2.
Guide for the expression of uncertainty in measurement, ISO, second edition, 1995.
3.
GUM Supplement 1 Propagation of probability distributions using a Monte Carlo method, JCGM, 2008, 90 pages.
4.
Jaynes E.T., "Prior probabilities", IEEE Trans. On System Science and Cybernetics, Vol. 4, 1968, pp. 227-241.
5.
D. Dubois and H. Prade, When upper probabilities are possibility measures, Fuzzy Sets and Systems 49, 1992, pp. 65-74.
6.
Mauris G., Lasserre V., Foulloy L., "Fuzzy modeling of measurement data acquired from physical sensors", IEEE Trans. on Measurement and Instrumentation, Vol. 49, No. 6, December 2000, pp. 1201-1205
7.
Mauris G., Lasserre V., Foulloy L., "A fuzzy approach for the expression of uncertainty in measurement", Int. Journal of Measurement, Vol. 29, No. 3, March 2001, pp. 165-177.
8.
Ferrero A., Salicone S., "The random-fuzzy variables: a new approach to the expression of uncertainty", IEEE Trans. On Instrumentation and Measurement, Vol. 53, No. 5, 2004, pp. 1370-1377.
9.
Uffink J., "Can the maximum entropy principle be explained as a consistency requirement?", Studies in History and Philisophy of Modern Physics Vol. 26, No. 3, 1995, pp. 223-261.
10.
Jaynes E.T., "Information theory and statistical mechanics", Physical Review, Vol. 106, 1957, pp. 620-630.
11.
W. Woeger, "Probability assignment to systematic deviations by the principle of maximum entropy", IEEE Trans. On Instrumentation and Measurement, Vol. 36, No. 2, 1987, pp. 655-658.
12.
R. Cordero, P. Roth, "Assigning probability density functions in context of information shortage", Metrologia, Vol. 41, 2004, pp. 122-125.
13.
G. Iuculano, L. Nielsen, A. Zanobini, G. Pellegrini, "The principle of maximum entropy applied in the evaluation of the measurement uncertainty", IEEE Trans. On Instrumentation and Measurement, Vol; 56, No. 3, 2007 pp. 717-722.
14.
Zadeh L.A., "Fuzzy sets as a basis for a theory of possibility", Fuzzy Sets and Systems, Vol. 1, No. 1, 1978, pp. 3-28.
15.
Dubois D., Foulloy L., Mauris G., Prade H., "Probability-possibility transformations, triangular fuzzy sets and probabilistic inequalities", Reliable Computing, Vol. 10, No. 4, 2004, pp. 273-297.
16.
Mauris G., "Fuzzy representation of incomplete knowledge about infinite support probability distributions in a measurement context," IEEE International Conference on Fuzzy Systems FUZZ-IEEE 2007, CD-ROM, London, UK, July 2007, 6 pages.
17.
Mauris G., "A comparison of possibility and probability approaches for modelling poor knowledge on measurement distribution", IEEE Instrumentation and Measurement Technology Conference IMTC'07, CD-ROM, Varsaw, Poland, May 2007, 5 pages
18.
Mauris G., Representing and approximating symmetric and asymmetric probability coverage intervals by possibility distributions, IEEE Trans. on Instrumentation and Measurement, Vol. 58, No. 1, 2009, pp. 41-45.
19.
Brockett P.L., Charnes A., Paick K., "Information theoretic approach to unimodal density estimation", IEEE Trans. on Information Theory, Vol. 41, No. 3, May 1995, pp. 824-829.
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References

References is not available for this document.