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Compact Wireless Power Transfer with Enhanced Misalignment Tolerance Via Independent Secondary PWM Control

Xingpeng Yu, Ronghuan Xie, Yixian Tu,Yizhan Zhuang, Xiangpeng Cheng, Fanghui Yin,Yiming Zhang

IEEE Transactions on Power Electronics(2025)

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Abstract
Improving power density and system integration is a pivotal focus for wireless power transfer (WPT) in portable devices. However, challenges such as misalignment tolerance and power fluctuation persist. This letter introduces a robust solution utilizing secondary independent PWM control. A coil structure combining solenoids and reverse windings ensures passive misalignment tolerance, while a grooved magnetic core integrates the converter, optimizing compactness. Additionally, the secondary PWM control achieves precise output voltage regulation without communication. A high-power-density WPT prototype validates the proposed coupler and control method, demonstrating less than 1% output voltage fluctuation under a 50% misalignment and maintaining over 89% efficiency at 100 W. The secondary device is highly compact, measuring only 60 mm × 30 mm × 7.5 mm and achieving power density of 7.41 W/cm3.
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Key words
Receiver control,wireless power transfer (WPT),misalignment tolerance,high power density
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