Multi-Megawatt Horizontal Axis Wind Turbine Blade Optimization Based on PSO Method

Author:

Kaviani Hamid1,Moshfeghi Mohammad2

Affiliation:

1. School of Mechanical Engineering, Malayer University, Malayer P.O. Box 14395-515, Iran

2. College of Engineering, Mathematics and Physical Sciences, University of Exeter, Exeter EX5 2FN, UK

Abstract

Blade optimization methods are crucial for wind turbine design. In this research, a new set of values for the parameters of the Particle Swarm Optimization (PSO) method is proposed, and its effects on the enhancement of the power generation of the NREL WP-Baseline 1.5 MW horizontal axis wind turbine are investigated. First, the PSO parameters are tuned, and the convergence speed and the optimal accuracy of the objective function are improved. Then, the Class/Shape Transformation (CST) method is employed, and an appropriate order of the shape function polynomial is selected. In the third step, the WP-Baseline 1.5 MW blade is optimized according to the tuned PSO parameters, and the airfoil is represented by CST algorithms. Later, a CFD model, including 37 million cells and an IDDES turbulence model, was validated and used for a comparison of the power generation of the original and optimized blades. The optimized blade produced more power for all wind speeds above 4.5 m/s, with a maximum of 13.8% at 10 m/s and +7.25% at the rated wind speed (11.5 m/s). It should be noted that since the algorithms, tunings, and techniques adopted in the present study were general, the presented method can be used as a systematic approach for the aerodynamics shape optimization of multi-megawatt HAWTs.

Publisher

MDPI AG

Subject

Aerospace Engineering

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