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Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization
Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization
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Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization
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Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization
Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization

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Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization
Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization
Journal Article

Characterization of Giant Magnetostrictive Materials Using Three Complex Material Parameters by Particle Swarm Optimization

2021
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Overview
Complex material parameters that can represent the losses of giant magnetostrictive materials (GMMs) are the key parameters for high-power transducer design and performance analysis. Since the GMMs work under pre-stress conditions and their performance is highly sensitive to pre-stress, the complex parameters of a GMM are preferably characterized in a specific pre-stress condition. In this study, an optimized characterization method for GMMs is proposed using three complex material parameters. Firstly, a lumped parameter model is improved for a longitudinal transducer by incorporating three material losses. Then, the structural damping and contact damping are experimentally measured and applied to confine the parametric variance ranges. Using the improved lumped parameter model, the real parts of the three key material parameters are characterized by fitting the experimental impedance data while the imaginary parts are separately extracted by the phase data. The global sensitivity analysis that accounts for the interaction effects of the multiple parameter variances shows that the proposed method outperforms the classical method as the sensitivities of all the six key parameters to both impedance and phase fitness functions are all high, which implies that the extracted material complex parameters are credible. In addition, the stability and credibility of the proposed parameter characterization is further corroborated by the results of ten random characterizations.