interesting features of this approach is the notion of
discrete event class. This notion is used to define a
process phase concept and discrete event classes of
equivalence that are required for large scale manu-
facturing processes. The definition of these concepts
leads to a global algorithm that has been applied to
modeling STMicroelectronics’ (Rousset) manufactur-
ing processes. This concrete application shows the
operational flavor of the extensions of the TOM4L
Approach Framework. The construction of these
models will be a valuable tool for STMicroelectron-
ics to control production and to alarm experts when
the real activity of the Company does not follow their
theoretical definitions.
7 CURRENT WORKS
Current works are devoted to finding an adaptation of
sequences alignment algorithms used in the genetic
field (Notredame et al., 2000). The objective is to find
an analogy of the work presented in (Gauthier et al.,
2008), works done on the social science field. Our
idea is to find a way to calculate the similarity val-
ues between different events classes in any kind of se-
quence, without introducing experts knowledge about
their contents.
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