Distributed and Asynchronous Population-Based Optimization Applied to the Optimal Design of Fuzzy Controllers
Metadatos
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MDPI
Materia
Fuzzy control Bio-inspired algorithms Distributed algorithms
Date
2023-02-09Referencia bibliográfica
García-Valdez, M.; Mancilla, A.; Castillo, O.; Merelo-Guervós, J.J. Distributed and Asynchronous Population-Based Optimization Applied to the Optimal Design of Fuzzy Controllers. Symmetry 2023, 15, 467. [https://doi.org/10.3390/sym15020467]
Patrocinador
TecNM-15340.22-P; DemocratAI PID2020- 115570GB-C22Résumé
Designing a controller is typically an iterative process during which engineers must
assess the performance of a design through time-consuming simulations; this becomes even more
burdensome when using a population-based metaheuristic that evaluates every member of the
population. Distributed algorithms can mitigate this issue, but these come with their own challenges.
This is why, in this work, we propose a distributed and asynchronous bio-inspired algorithm to
execute the simulations in parallel, using a multi-population multi-algorithmic approach. Following a
cloud-native pattern, isolated populations interact asynchronously using a distributed message queue,
which avoids idle cycles when waiting for other nodes to synchronize. The proposed algorithm
can mix different metaheuristics, one for each population, first because it is possible and second
because it can help keep total diversity high. To validate the speedup benefit of our proposal, we
optimize the membership functions of a fuzzy controller for the trajectory tracking of a mobile
autonomous robot using distributed versions of genetic algorithms, particle swarm optimization, and
a mixed-metaheuristic configuration. We compare sequential versus distributed implementations
and demonstrate the benefits of mixing the populations with distinct metaheuristics. We also propose
a simple migration strategy that delivers satisfactory results. Moreover, we compare homogeneous
and heterogenous configurations for the populations’ parameters. The results show that even when
we use random heterogeneous parameter configuration in the distributed populations, we obtain an
error similar to that in other work while significantly reducing the execution time.