Parameter estimation based on novel enhanced self-learning particle
swarm optimization algorithm with Levy flight for PMSG
Abstract
A novel parameter estimation method is proposed for the permanent magnet
synchronous generator (PMSG), which is implemented by an enhanced
self-learning particle swarm optimization algorithm with Levy flight
(SLPSO), and the problem of lower parameter estimation precision of
standard PSO is obviated. This method injects currents of different
intensities into the d-axis in a time-sharing manner to solve the
problem of equation under-ranking, and the mathematical model for
full-rank parameter estimation is developed. The speed term of PSO is
simplified to expedite the convergence of PSO, and a strategy with
Chaotic decline for the inertia weight of PSO is adopted to strengthen
its ability to jump out of the local optimum. Moreover, the
self-learning dense fleeing strategy (SLDF) is proposed where particles
perform diffusion learning based on population density information and
Levy flight, the evolutionary unitary problem and human intervention in
the evolutionary process is averted. Furthermore, the memory tempering
annealing algorithm (MTA) and greedy algorithm (GA) is integrated into
the algorithm, MTA can facilitate the exploration of potentially better
regions, and GA for local optimization enhances the convergence speed
and accuracy in late stage of the algorithm. Comparing the proposed
method with several existing PSO algorithms through simulation and
experiments, the experimental data show that the proposed method can
effectively track variable parameters under different working conditions
and has better robustness.