Parameter optimization method for antimisalignment of inductive power transfer system based on genetic algorithm

被引:0
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作者
Jin Cai
Xu-Sheng Wu
Pan Sun
Jun Sun
Qi-jun Deng
机构
[1] Naval University of Engineering,College of Electrical Engineering
[2] Wuhan University,undefined
来源
关键词
Genetic algorithm; Inductive power transfer; Misalignment resistance; Nonlinear programming;
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学科分类号
摘要
The mutual inductance parameters change from time to time. When conducting dynamic wireless power transfer using an inductive power transfer system, it results in larger fluctuation of output power. Therefore, a parameter optimization method is necessary to improve the stability of inductive power transfer system during dynamic misalignment. In this study, a nonlinear programing model with objective function of minimum voltage gain difference was established by taking S-LCC topology as an example. Genetic algorithm and nonlinear programming were combined to optimize the compensating parameters of the system and to realize minimum fluctuation of output voltage gain of the system within any given range of mutual inductance parameters. Optimization results show that output stability can be realized by adjusting the compensation capacitance in the primary side. The feasibility of the theory was verified through stimulation and test prototype. Test results show that when the mutual induction range is from 29.3 μH to 84.3 μH, the voltage gain of the system varies from 0.67 to 0.77. The fluctuation ratio of voltage gain is 6.7%, and the fluctuation ratio of voltage gain under the circumstance of resonance parameters is 40.2%.
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页码:1888 / 1899
页数:11
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