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A publicação pode ser exportada nos seguintes formatos: referência da APA (American Psychological Association), referência do IEEE (Institute of Electrical and Electronics Engineers), BibTeX e RIS.

Exportar Referência (APA)
Simões-Marques, M. J., M. Filomena Teodoro & Andrade, M. A. P. (2019). Improving an Intelligent System Design for Disaster Situations. 3rd European Conference on Electrical Engineering and Computer Science.
Exportar Referência (IEEE)
M. J. Simões-Marques et al.,  "Improving an Intelligent System Design for Disaster Situations", in 3rd European Conf. on Electrical Engineering and Computer Science, Atenas, 2019
Exportar BibTeX
@misc{simões-marques2019_1776631170385,
	author = "Simões-Marques, M. J. and M. Filomena Teodoro and Andrade, M. A. P.",
	title = "Improving an Intelligent System Design for Disaster Situations",
	year = "2019",
	url = "https://www.eecs-conf.org/"
}
Exportar RIS
TY  - CPAPER
TI  - Improving an Intelligent System Design for Disaster Situations
T2  - 3rd European Conference on Electrical Engineering and Computer Science
AU  - Simões-Marques, M. J.
AU  - M. Filomena Teodoro
AU  - Andrade, M. A. P.
PY  - 2019
CY  - Atenas
UR  - https://www.eecs-conf.org/
AB  - We are particularly interested to build and implement a Decision support system with the ability to prioritize certain teams for specific incidents, taking into account the importance of each team that acts in case of emergency. In the work described in [3, 4, 5, 6, 7, 8] we have contributed positively for such objective. 
Considering the relative importance of each team that acts in emergency context and to sort the list of tasks that should perform all possible orders to be given, a collaborative estimation or forecasting technique that combines independent analysis with the maximum use of feedback was applied to build consensus among experts who interact anonymously (Delphi forecasting) was developed in [5, 8]. The topic of interest was distributed (in a series of rounds) between the participating experts who comment on it and modify the opinion(s) until a certain degree of mutual consensus is reached.
In our case, the collection and summary of knowledge of a group of experts from a given area was done through various phases of questionnaires, accompanied by an organized feedback.
In [5], we have performed the Delphi method based on [1, 2, 9, 10], that consisted in 3 rounds of  completed questionnaires. After the consensus on all issues, could be computed and evaluated an
index allowing to associate a number in scale which evaluate the order of teams that must be called to perform a certain task. It were identified which of tasks were the most indicated for each team, and the team that shall be called to respond under a certain order of priority. It can be observed that majority of the tasks are carried out by a SAR brigade team, followed by the Reconnaissance team, the Technical brigade teams, the Logistics brigade and the Medical team respectively. The details about the analysis of results per round are available in [8]. Still in [8] the authors have detailed the tasks associated with priority to each team.
In the present work we propose a more detailed computation for the weight of experts experience using hierarchical classification, discriminant analysis and multidimensional scaling. We can classify the experience of each expert evaluating the similarity/distance between the individuals in the group of proposed experts and compare with the number of consensus presented in [8].
In this manuscript we propose an alternative way of weighting the experts experience that contributes to a decision support system capable to prioritize a set of teams for certain disaster incidents envolving maritime issues. The decision support system is still been tested but, with this work, we hope to have given an improvement to its optimization.
ER  -