Zhao Xiaojun, Xu Huawei, Du Zhenbin, Li Yongjian, Liu Lanrong, Zhao Zhigang
Department of Electrical and Electronic Engineering, North China Electric Power University, Baoding 071003, China.
Hebei Provincial Key Laboratory of Electromagnetic & Structural Performance of Power Transmission and Transformation Equipment, Baoding 071056, China.
Materials (Basel). 2020 Jul 14;13(14):3138. doi: 10.3390/ma13143138.
To simulate the anisotropic hysteresis characteristics of soft magnetic composite (SMC) materials accurately, an improved vector hysteresis model was proposed and utilized to adjust the shape of hysteresis curves by introducing two parameters. These two parameters are correlated with the amplitude of the vector Everett function and the projection of magnetic flux density along different directions. An experimental platform was built to measure the two-dimensional (2-D) magnetic properties of the SMC material under rotational magnetizations. The scalar and vector Everett functions were constructed by the measured limiting hysteresis loops. A hybrid optimization strategy based on the particle swarm optimization (PSO) and Powell technique was proposed to identify the parameters of the improved model efficiently and precisely, which significantly improved the local optimization ability of the PSO algorithm. The simulated results strongly agree with the measured ones, and thus the effectiveness of the improved vector model and the parameter identification method proposed in this paper was verified.
为了精确模拟软磁复合材料(SMC)的各向异性磁滞特性,提出了一种改进的矢量磁滞模型,并通过引入两个参数来调整磁滞曲线的形状。这两个参数与矢量埃弗雷特函数的幅值以及磁通密度沿不同方向的投影相关。搭建了一个实验平台来测量SMC材料在旋转磁化下的二维磁性能。通过测量得到的极限磁滞回线构建了标量和矢量埃弗雷特函数。提出了一种基于粒子群优化(PSO)和鲍威尔技术的混合优化策略,以高效、精确地识别改进模型的参数,显著提高了PSO算法的局部优化能力。模拟结果与测量结果高度吻合,从而验证了本文提出的改进矢量模型和参数识别方法的有效性。