Abstract:
This article presents an optimization design method for a double-stator hybrid excited permanent magnet arc motor (DS-HE-PMAM). The proposed optimization method combining...Show MoreMetadata
Abstract:
This article presents an optimization design method for a double-stator hybrid excited permanent magnet arc motor (DS-HE-PMAM). The proposed optimization method combining the machine learning algorithm random forest (RF) and the nondominated sorting genetic algorithm-II (NSGA-II) contributes to achieving high average torque, low torque ripple, high back electromotive force (EMF), and low total harmonic distortion of the back EMF. First, the motor structure and working principle of the DS-HE-PMAM are illustrated. The selection of parameters to be optimized is determined based on an analytical model. Then, a variable importance measure-based new sensitivity analysis method is implemented to evaluate the influence of each structural parameter on the selected design objectives. The finite-element analysis (FEA)-based DS-HE-PMAM model is developed to obtain the sample data regarding input structural parameters and output design objectives. Based on the sample data, a powerful machine learning algorithm called RF is employed to fit the function relationship between output design objectives and input structural parameters. After that, an intelligent search algorithm named NSGA-II is introduced to search for the optimal solution to the structural parameters combination and obtain the optimal motor performances. Finally, the electromagnetic characteristics of the initial and optimized models of the DS-HE-PMAM are compared and analyzed, and both FEA and prototype experiments verify the feasibility and superiority of the proposed optimization method.
Published in: IEEE Journal of Emerging and Selected Topics in Power Electronics ( Volume: 10, Issue: 2, April 2022)
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- IEEE Keywords
- Index Terms
- NSGA-II ,
- Permanent Motor ,
- Model Analysis ,
- Sensitivity Analysis ,
- Learning Algorithms ,
- Optimization Method ,
- Functional Relationship ,
- Optimal Model ,
- Structural Parameters ,
- Parameter Selection ,
- Input Output ,
- Finite Element Analysis ,
- Design Optimization ,
- Powerful Learning ,
- Design Objectives ,
- High Torque ,
- Experimental Prototype ,
- Total Harmonic Distortion ,
- Electromotive Force ,
- Back Electromotive Force ,
- Least Squares Support Vector Machine ,
- Random Forest Method ,
- Alternative Models ,
- Multi-objective Optimization ,
- Magnetomotive Force ,
- Output Torque ,
- Air-gap Flux ,
- Wind Field ,
- General Parameters ,
- Hidden Layer
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- NSGA-II ,
- Permanent Motor ,
- Model Analysis ,
- Sensitivity Analysis ,
- Learning Algorithms ,
- Optimization Method ,
- Functional Relationship ,
- Optimal Model ,
- Structural Parameters ,
- Parameter Selection ,
- Input Output ,
- Finite Element Analysis ,
- Design Optimization ,
- Powerful Learning ,
- Design Objectives ,
- High Torque ,
- Experimental Prototype ,
- Total Harmonic Distortion ,
- Electromotive Force ,
- Back Electromotive Force ,
- Least Squares Support Vector Machine ,
- Random Forest Method ,
- Alternative Models ,
- Multi-objective Optimization ,
- Magnetomotive Force ,
- Output Torque ,
- Air-gap Flux ,
- Wind Field ,
- General Parameters ,
- Hidden Layer
- Author Keywords