In this chapter, an analytical parameter tuning for the Archive Multi-Objective Simulated Annealing (AMOSA) with a fuzzy logic controller is proposed. The analytical tuning is used to compute the initial and final temperature, as well as the maximum metropolis length. The fuzzy logic controller is used to adjust the metropolis length for each temperature. These algorithms are used to solve the Heterogeneous Computing Scheduling Problem. The tuned AMOSA with a fuzzy logic controller is compared against an AMOSA without tuning. Three quality indicators are used to compare the performance of the algorithms, these quality indicators are hypervolume, generational distance, and generalized spread. The experimental results show that the tuned AMOSA with fuzzy logic controller achieves the best performance.
CITATION STYLE
Fraire Huacuja, H. J., Soto, C., Dorronsoro, B., Santillán, C. G., Valdez, N. R., & Balderas-Jaramillo, F. (2020). AMOSA with Analytical Tuning Parameters and Fuzzy Logic Controller for Heterogeneous Computing Scheduling Problem. In Studies in Computational Intelligence (Vol. 862, pp. 195–208). Springer. https://doi.org/10.1007/978-3-030-35445-9_17
Mendeley helps you to discover research relevant for your work.