The temperature of a power inductor operated up to saturation in a DC/DC converter is estimated based on its current profile. A dataset built by a proper model of the non-linear inductor was generated, reproducing its current profiles in different operating points. The measured current waveform is compared with the dataset values. The K-means classification is adopted to obtain clusters characterizing the operation in saturation, in which a precise estimation can be carried out. The linear and the deep saturation zones give poor information about the temperature; on the other hand, the temperature evaluation is of interest up to saturation. The K-means clustering allows for a relevant reduction in the computational effort. The proposed approach avoids direct measurement of the current by dedicated sensing; the temperature can be forecast before reaching the steady state, enhancing the converter’s reliability. Finally, experimental tests are used to assess the goodness of the proposed method.

A K-Means Approach to Temperature Estimation in Non-Linear Power Inductors

Boscaino, Valeria;Vitale, Gianpaolo
;
Rizzo, Riccardo
Ultimo
2025

Abstract

The temperature of a power inductor operated up to saturation in a DC/DC converter is estimated based on its current profile. A dataset built by a proper model of the non-linear inductor was generated, reproducing its current profiles in different operating points. The measured current waveform is compared with the dataset values. The K-means classification is adopted to obtain clusters characterizing the operation in saturation, in which a precise estimation can be carried out. The linear and the deep saturation zones give poor information about the temperature; on the other hand, the temperature evaluation is of interest up to saturation. The K-means clustering allows for a relevant reduction in the computational effort. The proposed approach avoids direct measurement of the current by dedicated sensing; the temperature can be forecast before reaching the steady state, enhancing the converter’s reliability. Finally, experimental tests are used to assess the goodness of the proposed method.
2025
Istituto di Calcolo e Reti ad Alte Prestazioni - ICAR - Sede Secondaria Palermo
clustering
DC-DC converter
green computing
non-linear inductor
temperature estimation
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/557070
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