Multiple harmonic sources identification including inverter-based
distributed generations using empirical Fourier decomposition
Abstract
This paper proposes an intelligent approach based on the empirical
Fourier decomposition (EFD) to identify harmonic sources at the point of
common coupling (PCC) when different inverter-based distributed
generations (DGs) like microturbine (MT), Battery energy storage system
(BESS), photovoltaic (PV), superconducting magnetic energy storage
(SMES), wind turbine with a permanent magnet synchronous generator
(PMSG), and doubly-fed induction generator (DFIG) wind turbine are
presented. In order to decrease memory storage and computational burden,
strife feature selection is used. Applying just voltage signals consumes
less processing time and decreases measurement devices. Moreover, the
whale optimization algorithm (WOA) as the optimizer of the parameters of
the support vector machine (SVM) classifier is used. Consequently, the
results from the proposed method can be helpful for both engineers and
researchers to plan and develop a better strategy to mitigate harmonic
distortion.