Brushless Motor Performance Optimization by Eagle Strategy with Firefly and PSO
This work addresses performance optimization for brushless motors, which are critical in applications like robotics and electric vehicles, but it appears incremental as it combines existing algorithms without introducing a fundamentally new approach.
The paper tackles the problem of optimizing brushless motor performance by applying a hybrid optimization technique combining Eagle Strategy with Particle Swarm Optimization and Firefly Algorithm, resulting in improved stability and convenience in parameter tracking as demonstrated through MATLAB Simulink simulations.
Brushless motors has special place though different motors are available because of its special features like absence in commutation, reduced noise and longer lifetime etc., The experimental parameter tracking of BLDC Motor can be achieved by developing a Reference system and their stability is guaranteed by adopting Lyapunov Stability theorems. But the stability is guaranteed only if the adaptive system is incorporated with the powerful and efficient optimization techniques. In this paper the powerful eagle strategy with Particle Swarm optimization and Firefly algorithms are applied to evaluate the performance of brushless motor Where, Eagle Strategy(ES) with the use of Levys walk distribution function performs diversified global search and the Particle Swarm Optimization (PSO) and Firefly Algorithm(FFA) performs the efficient intensive local search. The combined operation makes the overall optimization technique as much convenient The simulation results are obtained by using MATLAB Simulink software