Publication:
An SSM-PSO Based MPPT Scheme for Wind Driven DFIG System

Date
2022
Authors
Sai B.S.V.
Chatterjee D.
Mekhilef S.
Wahyudie A.
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Institute of Electrical and Electronics Engineers Inc.
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Abstract
In this work, a searching space minimization-based particle swarm optimization (SSM-PSO) scheme has been proposed for maximum power point tracking (MPPT) in a doubly fed induction generator (DFIG) based wind energy conversion system (WECS). DFIG displays non-linearity in P-? characteristics. So different types of conventional and optimization-based schemes are developed for MPPT. The drawbacks in the conventional perturb and observe (P&O) scheme has been successfully abolished by the proposed SSM-PSO method. Because of its weather-insensitive nature, the conventional P&O MPP tracking scheme results in the fluctuation of DFIG output under a sudden change in wind speed. To avoid this problem, maximum and minimum limits for the optimal rotor speed have been determined in the proposed SSM-PSO scheme. Further, the obtained limits for rotor speed are employed to improve the searching space within the non-linear P-? curve. This initial confinement of particles to a limited searching space in SSM-PSO results in a faster response of the system. Since the proposed SSM-PSO is atmosphere sensitive, it avoids fluctuations under an abrupt variation in wind velocity. The improved initialization part of SSM-PSO leads to better dynamic characteristics compared to existing P&O and optimization-based schemes. The proposed SSM-PSO scheme is implemented for a 2MW DFIG system in MATLAB Simulink atmosphere and showed satisfactory results. � 2013 IEEE.
Description
Asynchronous generators; Electric fault currents; Energy conversion; Maximum power point trackers; Particle swarm optimization (PSO); Wind power; Wind speed; Doubly fed induction generators; Doubly feed induction generator and maximum power point tracking; Maximum Power Point Tracking; Optimization scheme; Particle swarm; Perturb and observe; Searching spaces; Space minimization; Swarm optimization; Tracking scheme; Wind turbines
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