HFT)优化设计对其自身和所属系统的综合性能提升意义重大。然而,现有HFT优化设计方法通常利用简化解析公式计算磁心与绕组损耗、热点温度等电磁热参数,虽然这些解析公式的计算速度较快,但其精度较低,继而导致其所得优化设计结果的准确性与可靠性不高。为兼顾HFT优化设计的精度与速度,该文首次引入基于最小二乘支持向量机(least squares support vector machines
It is of great significance to accurately optimize the design of high-frequency transformer (HFT) to improve the comprehensive performance of itself and its system. However
the existing HFT optimization design methods usually use simplified analytical formulas to calculate electromagnetic and thermal parameters such as core
winding loss and hot-spot temperature
although the calculation speed of these analytical formulas is fast
their accuracy is low
which leads to the low accuracy and reliability of the optimized design results. In order to take both the accuracy and speed of HFT optimization design into account
this paper introduces a surrogate model of HFT electromagnetic thermal parameters based on least squares support vector machines (LS-SVM) for the first time
and proposes a new HFT optimization design method based on non-dominated sorting genetic algorithm Ⅱ (NSGA-Ⅱ). In order to verify the superiority of the LS-SVM surrogate model proposed in this paper
the results show that the LS-SVM has higher accuracy compared with the recurrent neural network and deep neural network surrogate model. Finally
based on the proposed optimization design method
a 5 kHz/10 kW HFT is optimized using multiple objectives
and the optimal design scheme is verified by finite elements method
and the results show that the proposed surrogate model of core loss
winding loss and hot-spot temperature has lower errors compared to the corresponding traditional analytical ones
with errors of 2.77%
3.03% and 0.92% respectively. Thus the accuracy and reliability of the proposed optimization design method is verified.