4.7 Evaluation
The interpretation of the model is that floods are pro-
duced by a high level of water discharge or isolated
events like bridge occlusion and embankment breaks.
The discharge may be produced as well by rainfall, ar-
tificial water like canals, superficial waters like rivers
or bad water regulation but it also is affected by the
catchment area. The rainfall, which is usually the
main cause of high discharge, is usually character-
ized by statistical analysis and design hyetograph. Fi-
nally, flood management is the union of the preven-
tive, mitigating and recovery actions that must be ac-
complished. However, the management also involves
some processes like forecasting, economic evalua-
tion, etc. (different agents like the municipality are
in charge for each process).
The detailed ontology contains 2054 named
classes and this number has been reduced to 91 in
the brief ontology. Therefore, the brief ontology for
floods only includes the relevant knowledge for this
case of study.
As (Stuckenschmidt and Schlicht, 2009) says,
there is not golden standard to compare the results
with and the goodness of the brief ontology depends
on the application that will use the ontology. For this
reason, the resulting brief ontology has been posi-
tively evaluated by several experts in the targeted do-
main (floods). Nonetheless, the quality of the brief
ontology depends totally on the quality of the detailed
ontology.
5 CONCLUSIONS
In general, brief ontologies have a wide range of ad-
vantages when, for some reason, the user or applica-
tion does not wish to deal with the whole original on-
tology. Sometimes, the user is no interested in using
all the information or the application is not capable of
dealing with such a huge resources.
Moreover, reusing a large ontology when only a
small portion is useful and relevant for our applica-
tions may involve unfavourable consequences i.e. the
reasoning time increases with the size of the knowl-
edge base and this issue may be essential in real-time
applications. For this reason, the efficiency of our
knowledge base is improved by isolating portions of
knowledge from large ontologies in form of brief on-
tologies.
As an example, a case of study in flood manage-
ment has been presented. A brief ontology is created
specifying the initiator concept (flood) for the traver-
sal algorithm and the set of relevant properties to de-
cide which concepts on the ontology are relevant. The
result has been an ontology where the number of con-
cepts has been dramatically reduced and thus it con-
tains only concepts related to flood.
As future work, it is planned to develop metrics to
compare the detailed and brief ontologies. For exam-
ple, the abstraction degree of equivalent concepts in
both ontologies or the representativeness of the brief
ontology.
ACKNOWLEDGEMENTS
This work has been partially supported by re-
search projects (CICE) P07-TIC-02913 and P08-
RNM-03584 funded by the Andalusian Regional
Governments.
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