Article
Mobile robot path planning using membrane evolutionary artificial potential field
Fecha
2019-01-31Registro en:
1568-4946
Scopus
Autor
Orozco Rosas, Ulises
Montiel, Oscar
Sepúlveda, Roberto
Institución
Resumen
In this paper, a membrane evolutionary artificial potential field (memEAPF) approach for solving the
mobile robot path planning problem is proposed, which combines membrane computing with a genetic
algorithm (membrane-inspired evolutionary algorithm with one-level membrane structure) and the
artificial potential field method to find the parameters to generate a feasible and safe path. The memEAPF
proposal consists of delimited compartments where multisets of parameters evolve according to rules of
biochemical inspiration to minimize the path length. The proposed approach is compared with artificial
potential field based path planning methods concerning to their planning performance on a set of twelve
benchmark test environments, and it exhibits a better performance regarding path length. Experiments to
demonstrate the statistical significance of the improvements achieved by the proposed approach in static
and dynamic environments are shown. Moreover, the implementation results using parallel architectures
proved the effectiveness and practicality of the proposal to obtain solutions in considerably less time.