Range Queries, retrieving around 50 tuples, and k was
set to 50 for the kNN Queries. The results, which rep-
resent the average time to perform each task once, in-
dicate that our proposal is feasible in a real-time crisis
management application.
6 CONCLUSIONS
Fast and precise responses are essential characteris-
tics of computational solutions. In this paper, we pro-
posed the architecture of a solution that can achieve
these characteristics in crisis management tasks. In
the course of our work, we described the use of a
similarity-enabled RDBMS in tasks that could assist a
command center in guiding rescue missions. To make
it possible, we implemented similarity-based opera-
tions within one popular, open-source RDBMS.
The core of our work is related to an innovation
project led by the European Union; accordingly, we
applied similarity retrieval concepts in an innovative
manner, putting together relational and retrieval tech-
nologies. To demonstrate our claims, we carried out
experiments to evaluate both the efficacy and the ef-
ficiency of our proposal. More specifically, we intro-
duced the following functionalities:
• Classification of Incoming Data. We proposed
to employ kNN classification to classify incoming
data, aiming at identifying and characterizing cri-
sis situations faster;
• Filtering of Incoming Data. We proposed to em-
ploy Range Queries to filter out redundant infor-
mation, aiming at reducing the data load over the
system and over a command center;
• Retrieval of Historical Data. We proposed to
employ Range and kNN Queries to retrieve data
from past crises that are similar to the current one.
The results we obtained for each of these tasks al-
lowed us to claim that a similarity-enabled RDBMS is
able to assist in the decision support of command cen-
ters when a crisis situation strikes. We conclude by
stating that our work demonstrated the use of cutting-
edge methods and technologies in a critical scenario,
paving the way for similar systems to flourish based
on the experiences that we reported.
ACKNOWLEDGEMENTS
This research has been supported, in part, by FAPESP,
CAPES, CNPq and the RESCUER project, funded by
the European Commission (Grant: 614154).
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