Skip to main content

Conveniently Identify Coils in Inductive Power Transfer System Using Machine Learning

Publication ,  Conference
Zhao, Y; Lu, M; Chen, T; Li, H; Gao, X; Zhang, Z; Fu, M; Goetz, SM
Published in: Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC
January 1, 2025

High-frequency inductive power transfer (IPT) has garnered significant attention in recent years due to its long transmission distance and high efficiency. The inductance values (L) and quality factors (Q) of the transmitting and receiving coils greatly influence the system's operation. Traditional methods involved impedance analyzers or network analyzers for measurement, which required bulky and costly equipment. Moreover, disassembling it for re-measurement is impractical once the product is packaged. Alternatively, simulation software such as HYSS can serve for the identification. Nevertheless, in the case of very high frequencies, the simulation process consumes a significant amount of time due to the skin and proximity effects. More importantly, obtaining parameters through simulation software becomes impractical when the coil design is more complex. This paper firstly employs a machine learning approach for the identification task. We simply input images of the coils and operating frequency into a well-trained model. This method enables rapid identification of the coil's L and Q values anytime and anywhere, without the need for expensive machinery or coil disassembly.

Duke Scholars

Published In

Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC

DOI

EISSN

2470-6647

ISSN

1048-2334

Publication Date

January 1, 2025

Start / End Page

2846 / 2850
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Zhao, Y., Lu, M., Chen, T., Li, H., Gao, X., Zhang, Z., … Goetz, S. M. (2025). Conveniently Identify Coils in Inductive Power Transfer System Using Machine Learning. In Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC (pp. 2846–2850). https://doi.org/10.1109/APEC48143.2025.10977283
Zhao, Y., M. Lu, T. Chen, H. Li, X. Gao, Z. Zhang, M. Fu, and S. M. Goetz. “Conveniently Identify Coils in Inductive Power Transfer System Using Machine Learning.” In Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC, 2846–50, 2025. https://doi.org/10.1109/APEC48143.2025.10977283.
Zhao Y, Lu M, Chen T, Li H, Gao X, Zhang Z, et al. Conveniently Identify Coils in Inductive Power Transfer System Using Machine Learning. In: Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC. 2025. p. 2846–50.
Zhao, Y., et al. “Conveniently Identify Coils in Inductive Power Transfer System Using Machine Learning.” Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC, 2025, pp. 2846–50. Scopus, doi:10.1109/APEC48143.2025.10977283.
Zhao Y, Lu M, Chen T, Li H, Gao X, Zhang Z, Fu M, Goetz SM. Conveniently Identify Coils in Inductive Power Transfer System Using Machine Learning. Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC. 2025. p. 2846–2850.

Published In

Conference Proceedings IEEE Applied Power Electronics Conference and Exposition APEC

DOI

EISSN

2470-6647

ISSN

1048-2334

Publication Date

January 1, 2025

Start / End Page

2846 / 2850