the specialized configuration stage starts, all elements
have already been identified, all routes have already
been calculated and all generic configurations have
been carried out, so that SONAr already has full
knowledge of the network structure. There is, of
course, an increase in the time involved in the calcu-
lation of the specific flow rules (the greater the num-
ber of elements, the longer the time of this calcu-
lation), however the duration of this process is very
short when compared to the total self-configuration
time, remaining at tens of milliseconds.
In discovery and generic network configuration,
this relationship is much more obvious. In both cases,
discovery and the configuration are done element by
element in sequence, that is, it is necessary that one
is done for another to start. This means that there is
a direct and visually evident relationship between the
convergence time of both stages and the number of
elements in the path between the beginning and the
end of the network.
In general, the time for the specialized configura-
tion process – which is the one being evaluated in this
study – was between 4 and 7 seconds for all samples
obtained. It is noticeable that SONAr’s response to an
edge element addition in the network is fast enough
for use in practice, exceeding by several orders of
magnitude the time of manual configuration of a net-
work even using semi-automated processes.
6 CONCLUSIONS
The Specialized Self-Configuration Module (SSCM),
was proposed as a solution for the demand of net-
work configuration automation. The main objective
of the research was to investigate the alternatives for
a network self-configuration system for elements with
specific requirements, together with a model to de-
scribe these requirements. During the investigation,
several approaches to this problem were studied, and
the SONAr framework was well suited to the purpose.
Within this architecture, a new module was designed
and implemented (the SSCM) and a way to describe
the specifics of the network configuration was pro-
posed (the SSCD format).
In the experiments carried out, it was visible
that the SSCM’s performance far exceeds the esti-
mated time for manual configuration, being a suit-
able approach to real life applications, specially in the
telecommunications industry.
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