solving the above-described model (3)-(9) to obtain
the optimal locations of all EMS stations and then, the
model (3)-(8) is used again to select the RLP stations.
The radial formulation makes the model simpler than
the location-allocation formulation and thus, the
optimal solution of the problem can be reached by
about three minutes using a common notebook with
standard technical parameters and basic equipment.
5 CONCLUSIONS
This paper was focused on practical usage of the
optimization method based on the weighted
p-median
problem formulation. The goal of optimization was to
achieve better access to urgent medical healthcare
provided by private or public emergency agencies.
Suggested method was based on current station
deployment analysis, which showed that there are
some station locations with multiple facilities. This
fact should be considered also in the optimization
process. Such a request may cause several difficulties
when formulating the model. The researchers could
either create a model with multiple facility locations
and apply the concept of generalized disutility or this
obstacle could be handled in a different way.
The optimization approach studied in this paper is
based on two phases. The first phase searches for such
stations, that can not change their current locations for
different reasons. After that, a simple model based on
the weighted
p-median problem is solved to obtain
the optimal location of EMS stations. All located
EMS stations become candidates for RLP, which are
searched for by solving another mathematical model.
Since the radial formulation enables us to solve real-
world sized instances, we hope that suggested method
can significantly contribute to the state-of-the-art in
the field of service system optimization approaches.
Obviously, this method is not the only possible way
to improve current stations deployment.
Based on achieved results reported in previous
section, the future research in this scientific are could
be aimed at RLP stations, which could be primarily
solved by the second phase of suggested algorithm.
Another scientific topic to be studied could be focus
on developing new algorithms, which would be able
to apply different criteria and bring better results.
ACKNOWLEDGEMENT
This work was supported by the research grant VEGA
1/0216/21 “Design of emergency systems with
conflicting criteria using artificial intelligence tools”.
This work was supported also by the Slovak Research
and Development Agency under the Contract no.
APVV-19-0441.
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