Abstract

Hybrid power active filter (HAPF) is an important device to suppress the harmonics of the power system. In HAPF, the parameters estimation has a great impact on ensuring the power quality in the power system. Aiming at the problem of minimizing the harmonic pollution (HP) in the power system, this paper proposes a new technology namely IEDA for parameter optimization of hybrid power active filters, which is an improved dragonfly algorithm (DA) with higher exploitation capability. DA is a global search algorithm with sufficient ability to avoid falling into local optimization, however, DA performs poorly for local search. In the IEDA, we adopt a strategy of division of labor to divide particles into exploitation population and exploration population. In the exploitation population, we introduce the information exchange mechanism of the differential evolution (DE) and set up an exemplar pool to enhance its exploitation capability. In the exploration population, we use the global search ability of the DA to prevent particles from falling into a local optimum. Through the division of labor between exploitation population and exploration population, the problems of low accuracy and slow convergence of DA are effectively solved. Experimental results show that the algorithm has greatly improved accuracy and reliability compared with seven well-established algorithms.

Highlights

  • With the development of society and technology, non-linear shock loads have been continuously connected to power systems

  • Tiwari et al presents an efficient technique for harmonic compensation using Ant Colony Optimization (ACO) algorithm based on hybrid active power filter [34]

  • Based on the two Hybrid active power filter (HAPF) topologies proposed in [39], we propose an improved dragonfly algorithm (DA) to estimate the parameters of HAPF

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Summary

INTRODUCTION

With the development of society and technology, non-linear shock loads have been continuously connected to power systems. Tiwari et al presents an efficient technique for harmonic compensation using Ant Colony Optimization (ACO) algorithm based on hybrid active power filter [34]. Under the premise of source nonlinearity, Biswas et al proposed two popular topologies of hybrid power active filters and used the L-SHADE algorithm to estimate the HAPF parameters [39].

CASE STUDIES
DIVISION OF LABOR STRATEGY
THE RESULTS AND ANALYSIS OF EXPERIMENT
THE EFFECT OF PARAMETERS ON THE ALGORITHM
CONCLUSIONS AND FUTURE WORK
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