Figure 6: Product ranking for each operator.
5 CONCLUSIONS
In this article, we present a way to determine the prod-
uct quality in the wood industry. We decided to base
the product quality evaluation on the singularities im-
pact. As the information used to determine the sin-
gularity impact and the quality product are uncertain,
imprecise, imperfect, we have to use operators which
take into account of them.
The singularity impact is evaluated on criteria
which are linked by interaction. Moreover, the poor-
ness of the sample and the knowledge on the process
decision, lead us to use the Choquet integral to de-
termine impact. The quality determination is done by
merging the singularity impact and the number of sin-
gularities. The use of different operators allows us
to cover the majority of cases concerning the prod-
uct quality determination. The comparison with the
expert ranking and classification allows to conclude
OWA operator with α = 0.8 reflects his choice.
This quality have a virtual nature. Moreover it is
expressed with a regression value while Experts use
linguistics quality classes. To take into account the
virtual nature and the linguistics class representation,
a fuzzyfication step may be used to obtain the belong-
ing to quality classes as expressed by Expert.
All of that allows to conclude to the pertinence of
our proposition. In perspective, other decision ways
will be used and in particular the evaluation of the
quality from the singularity characteristics (only one
step). To do so, other fusion operators will be used as
the Fuzzy Rule Classifier or classification operators.
ACKNOWLEDGEMENTS
The authors gratefully acknowledge the financial sup-
port of the CPER 2007-2013 Structuration du P
ˆ
ole de
Comp
´
etitivit
´
e Fibres GrandEst (Competitiveness Fi-
bre Cluster), through local (Conseil G
´
en
´
eral des Vos-
ges), regional (R
´
egion Lorraine), national (DRRT and
FNADT) and European (FEDER) funds.
REFERENCES
Almecija, B., Bombardier, V., and Charpentier, P. (2012).
Modeling quality knowledge to design log sorting sys-
tem by x rays tomography. In Information Control
Problems in Manufacturing, volume 14, pages 1190–
1195.
Bloch, I. (1996). Information combination operators for
data fusion: A comparative review with classification.
Systems, Man and Cybernetics, Part A: Systems and
Humans, IEEE Transactions on, 26(1):52–67.
Bombardier, V., Mazaud, C., Lhoste, P., and Vogrig, R.
(2007). Contribution of fuzzy reasoning method to
knowledge integration in a defect recognition system.
Computers in industry, 58(4):355–366.
Bucur, V. (2003). Techniques for high resolution imaging of
wood structure: a review. Measurement Science and
Technology, 14(12):R91.
Choquet, G. (1953). Theory of capacities. In Annales de
l’institut Fourier, volume 5, page 87.
Dupuy, C. (2004). Analyse et conception d’outils
pour la trac¸abilit
´
e de produits agroalimentaire afin
d’optimiser la dispersion des lots de fabrication. PhD
thesis, Institue National des Sciences Appliqu
´
ees de
lyon.
Grabisch, M., Kojadinovic, I., and Meyer, P. (2008). A re-
view of methods for capacity identification in choquet
integral based multi-attribute utility theory: Applica-
tions of the kappalab r package. European journal of
operational research, 186(2):766–785.
Grabisch, M. and Labreuche, C. (2008). A decade of ap-
plication of the choquet and sugeno integrals in multi-
criteria decision aid. 4OR: A Quarterly Journal of Op-
erations Research, 6(1):1–44.
Guillot, J., Lanvin, J., and Sandoz, J. (1996). Classement
structure du sapin/
´
epic
´
ea par r
´
eseaux neuronaux
`
a par-
tir des mesures sylvatest. In Sciences et industries du
bois. Colloque, pages 377–384.
Jover, J., Thomas, A., and Bombardier, V. (2011). Mar-
quage du bois dans la masse : int
´
er
ˆ
ets et perspectives.
In 9e Congr
`
es International de G
´
enie Industriel, CIGI
2011, St Sauveur, Canada.
Marichal, J.-L. and Roubens, M. (2000). Determina-
tion of weights of interacting criteria from a refer-
ence set. European journal of operational Research,
124(3):641–650.
PEFC1 (2010). Pefc st 1003:2010: Sustainable forest man-
agement.
Perez Oramas, O. (2000). Contribution une m
´
ethodologie
d’int
´
egration de connaissances pour le traitement
d’images. Application
`
a la d
´
etection de contours par
r
´
egles linguistiques floues. PhD thesis, universit
´
e
Henry Poincar
´
e.
Todoroki, C. and R
¨
onnqvist, M. (2002). Dynamic control
of timber production at a sawmill with log sawing op-
timization. Scandinavian Journal of Forest Research,
17(1):79–89.
IJCCI2013-InternationalJointConferenceonComputationalIntelligence
256