Machine Learning Based Metal Object Detection for Wireless Power Transfer Using Differential Coils

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
Yunyi Gong, Yoshitsugu Otomo, H. Igarashi
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Abstract

. This paper presents the machine learning-based detection of foreign metal object for the wireless power transfer device including differential coils. To test the proposed method, the differential voltages are computed using finite element method for about 1500 cases with and without an aluminum cylinder at driving frequency of 85 kHz considering misalignment between the primal and secondary coils. It has been shown that gradient boosting decision tree and random forests classifier have the accuracy over 90% when input voltages and differential voltages are inputted together.
基于机器学习的差分线圈无线输电金属物体检测
. 提出了一种基于机器学习的含差动线圈无线电力传输设备异物检测方法。为了验证所提出的方法,在驱动频率为85 kHz的情况下,采用有限元法计算了约1500个有铝圆柱和不含铝圆柱的情况下的差分电压。研究表明,梯度增强决策树和随机森林分类器在输入电压和差分电压同时输入时,准确率达到90%以上。
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