Acoustic state detection of microbubble emission boiling using a deep neural network based on cepstrum analysis

Junichiro Ono, Yuta Aoki, Noriyuki Unno, Kazuhisa Yuki, Koichi Suzuki, Yoshitaka Ueki, Shin ichi Satake

研究成果: Article査読

8 被引用数 (Scopus)

抄録

Microbubble emission boiling (MEB) is a cooling technology in which the heat flux can potentially exceed the critical heat flux (CHF). Reliable predictions of the occurrence of MEB are necessary to achieve stable MEB and to induce it under actual environment conditions. In this study, we developed a method based on deep learning with boiling sound to predict the boiling state of the interval before the low-heat-flux level reaches MEB. The boiling sound was acquired by a hydrophone, and the sound was adopted to machine learning algorithms, which were subsequently applied to classification and regression models. The feature extraction algorithms for the boiling sounds were spectrum or cepstrum methods. Both methods were comparatively investigated in terms of the machine learning accuracy. As a result, in the case of the cepstrum method as the feature extraction, the accuracy was improved. In particular, we found that the regression model demonstrated substantially better accuracy than the classification model. In addition, accurate predictions were possible even when the degree of subcooling was changed.

本文言語English
論文番号104512
ジャーナルInternational Journal of Multiphase Flow
166
DOI
出版ステータスPublished - 9月 2023

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