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Research Article

Multi-Phase Permanent Magnet Generator with Halbach Array for Direct Driven Wind Turbine: A Hybrid Technique

ORCID Icon &
Pages 5699-5717 | Received 29 Sep 2021, Accepted 19 May 2022, Published online: 30 Jun 2022
 

ABSTRACT

In this paper, a hybrid approach is proposed for Multiphase Halbach Array Permanent Magnet Generator (MHAPMG) in the direct driven wind turbine. The proposed approach is the consolidation of Archimedes optimization algorithm (AOA) and Radial Basis Function Neural Network (RBFNN) named AOA-RBFNN approach. The proposed approach achieves higher efficiency at low speed and it is utilized to improve the lesser Cogging torque with torque ripple and fault tolerance. The proposed generator is compared with Multiphase Surface Mount conventional Permanent Magnet Generator (MSMPMG) for its improved outputs. The proposed generator is used to chose the turbine design and to estimate the output of 1000 W with a speed of 440 RPM and the wind speed of 9 m/s. The proposed approach optimizes the electromagnetic performance of Cogging and back electromotive force. The performance of the proposed Halbach array is analyzed with the regular sequence with multiphase topology based on the induced electromotive force, Cogging Torque, Air gap Flux density, and Harmonic Components. The proposed generator is investigated by finite element analysis (FEA). By then, the performance of the proposed system is activated on MATLAB/Simulink platform. The efficiency of WT using proposed technique, HS, TS, and PSO becomes 98%, 80%, 77%, and 82%, respectively.

Nomenclature

θ=

Rotor angular position

β=

Position along Rotor Circumference

L=

Stack Length

hsb=

Stator Back Iron Height

μr=

Relative permeability of Magnet

S=

No of Stator Slots

P=

No of Rotor Poles

DSO=

Stator Outer Diameter

Bg0=

No load Air Gap Flux Density

Bt=

Flux Density of Stator Tooth

kf=

Filling Factor

Sca=

Stator Conductor Area

MHAPMG=

Multiphase Halbach Array Permanent Magnet Generator

AOA=

Archimedes optimization algorithm

FEA=

Finite Element Analysis

α=

Position along Stator Circumference

hg=

Air Gap Length

hm=

Height of the Magnet

Ws=

Stator Tooth Width

μ0=

Permeability of Air

Br=

Magnetic remanence

DSI=

Stator Inner Diameter

Bg=

Air Gap Flux Density

By=

Flux Density of Stator Yoke

ks=

Stacking Factor

Hnth=

nth Harmonic order

NT=

Number of Turns

RBFNN=

Radial Basis Function Neural Network

MSMPMG=

Multiphase Surface Mount conventional Permanent Magnet Generator

CLF=

control Lyapunov function

Disclosure statement

No potential conflict of interest was reported by the author(s).

Data availability statement

Data sharing is not appropriate to this article as no novel data were generated or analyzed in this study.

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