Optimal Design of 20MW Double-stator Superconducting Magnetic Field Modulation Electrical Machine Based on Non-dominated Sorting Genetic Algorithm and Neural Network
ZHU Xinkai, LIU Yabin, WANG Jingxia, et al. Optimal Design of 20MW Double-stator Superconducting Magnetic Field Modulation Electrical Machine Based on Non-dominated Sorting Genetic Algorithm and Neural Network[J]. 2025, 45(15): 6103-6115.
ZHU Xinkai, LIU Yabin, WANG Jingxia, et al. Optimal Design of 20MW Double-stator Superconducting Magnetic Field Modulation Electrical Machine Based on Non-dominated Sorting Genetic Algorithm and Neural Network[J]. 2025, 45(15): 6103-6115. DOI: 10.13334/j.0258-8013.pcsee.240973.
Superconducting (SC) electrical machines have higher power density and efficiency than permanent magnet (PM) electrical machines
making them advantageous for the development of offshore wind turbine capacity beyond 20 MW. To solve the problem that the pole pair number of SC excitation cannot be increased due to the size of the modular dewar
this paper proposes a double-stator superconducting magnetic field modulation electrical machine (DSFMM) adopting integrated dewar. To explore how to achieve optimal coupling between the harmonic components generated by the modulators such as the stator teeth and rotor magnetic blocks and the harmonic components caused by the armature winding with different pole-slot combinations in the DSFMM
this paper analyzes the effects of nine sensitive parameters such as pole ratio
pole-slot combination
pole arc coefficient
and rotor magnetic block ratio of the DSFMM on electromagnetic performance
and the mathematical model based on these parameters is established. To solve the issues of slow speed and high resource consumption of the traditional optimization methods for large capacity DSFMM
this paper uses the sample library generated by the mathematical model to train the back propagation (BP) neural network and the mapping relationship is obtained between the nine sensitive parameters and performance of electrical machine. Then
the multi-objective optimization design of a 20 MW DSFMM is completed by using the improved non-dominated sorting genetic algorithm Ⅱ(NSGA-Ⅱ).