基于倒谱分析的深度神经网络微泡发射沸腾声态检测

IF 3.6 2区 工程技术 Q1 MECHANICS International Journal of Multiphase Flow Pub Date : 2023-09-01 DOI:10.1016/j.ijmultiphaseflow.2023.104512
Junichiro Ono , Yuta Aoki , Noriyuki Unno , Kazuhisa Yuki , Koichi Suzuki , Yoshitaka Ueki , Shin-ichi Satake
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引用次数: 0

摘要

微泡发射沸腾(MEB)是一种热流密度可能超过临界热流密度的冷却技术。对MEB的发生进行可靠的预测是实现稳定的MEB和在实际环境条件下诱导MEB的必要条件。在本研究中,我们开发了一种基于沸腾声的深度学习方法来预测低热通量水平达到MEB之前区间的沸腾状态。通过水听器获取沸腾声,并将其用于机器学习算法,然后将其应用于分类和回归模型。沸腾声的特征提取算法有频谱法和倒谱法。对比研究了两种方法的机器学习精度。因此,在倒谱法作为特征提取的情况下,精度得到了提高。特别是,我们发现回归模型比分类模型显示出更好的准确性。此外,即使改变过冷度,也可以进行准确的预测。
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Acoustic state detection of microbubble emission boiling using a deep neural network based on cepstrum analysis

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.

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来源期刊
CiteScore
7.30
自引率
10.50%
发文量
244
审稿时长
4 months
期刊介绍: The International Journal of Multiphase Flow publishes analytical, numerical and experimental articles of lasting interest. The scope of the journal includes all aspects of mass, momentum and energy exchange phenomena among different phases such as occur in disperse flows, gas–liquid and liquid–liquid flows, flows in porous media, boiling, granular flows and others. The journal publishes full papers, brief communications and conference announcements.
期刊最新文献
Uncertainty quantification for the drag reduction of microbubble-laden fluid flow in a horizontal channel Two-phase flows downstream, upstream and within Plate Heat Exchangers A simple and efficient finite difference scheme to the Cahn–Hilliard–Navier–Stokes system equations Editorial Board A simple explicit thermodynamic closure for multi-fluid simulations including complex vapor–liquid equilibria: Application to NH3 H2O mixtures
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