4.6 Article

Multi-Objective Optimization of Planetary Gearbox with Adaptive Hybrid Particle Swarm Differential Evolution Algorithm

Journal

APPLIED SCIENCES-BASEL
Volume 11, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/app11031107

Keywords

multi-objective optimization; planetary gear trains; gear efficiency; particle swarm optimization; differential evolution

Funding

  1. Serbian Ministry of Education and Science [TR35029]

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This research addresses the constrained multi-objective nonlinear optimization problem of planetary gearboxes using a hybrid metaheuristic algorithm. The proposed algorithm successfully obtains solutions of the non-convex Pareto set for optimizing weight, efficiency, and preventing premature gear failure. Compared to other well-known algorithms, it shows improved optimization performance in obtaining Pareto solutions.
This paper considers the problem of constrained multi-objective non-linear optimization of planetary gearbox based on hybrid metaheuristic algorithm. Optimal design of planetary gear trains requires simultaneous minimization of multiple conflicting objectives, such as gearbox volume, center distance, contact ratio, power loss, etc. In this regard, the theoretical formulation and numerical procedure for the calculation of the planetary gearbox power efficiency has been developed. To successfully solve the stated constrained multi-objective optimization problem, in this paper a hybrid algorithm between particle swarm optimization and differential evolution algorithms has been proposed and applied to considered problem. Here, the mutation operators from the differential evolution algorithm have been incorporated into the velocity update equation of the particle swarm optimization algorithm, with the adaptive population spacing parameter employed to select the appropriate mutation operator for the current optimization condition. It has been shown that the proposed algorithm successfully obtains the solutions of the non-convex Pareto set, and reveals key insights in reducing the weight, improving efficiency and preventing premature failure of gears. Compared to other well-known algorithms, the numerical simulation results indicate that the proposed algorithm shows improved optimization performance in terms of the quality of the obtained Pareto solutions.

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