CARVALHO FILHO, D. M.; http://lattes.cnpq.br/8550727408970303; CARVALHO FILHO, Djalma de Melo.
Résumé:
This work describes base station deployment as a multi-objective problem (MOP). Base
station deployment and configuration involve a large number of variables and design constraints,
and heuristic algorithms seem to be a suitable alternative to solve MOPs. A new
class of evolutionary algorithms, the so-called multi-objective optimisation algorithms
based on artificial immune systems, are the basis of an innovative approach to base station
placement. The Binary-coded Multi-objective Optimisation Algorithm (BRMOA) is
presented. Two different scenarios are considered. In the first scenario, candidate sites
have equal deployment costs and three network simulation environments are used for analysis.
In the second scenario, cost-effective base station deployment is considered. The cost
of deployment of a site is estimated based on its location and the Brazilian environmental
legislation. The model allows some experience to be added in order to guide the process
and lead the search to previously selected sites. Two different case studies are examined.
Results are compared to the literature and indicate the feasibility of the optimisation
strategy in solving a base station deployment problem.