Liu Yu, Xu Zhuofei, Guo Pengcheng, Sun Longgang
School of Water Resources and Hydroelectric Engineering, Xi'an University of Technology, Xi'an 710048, China.
Faculty of Printing Packaging Engineering and Digital Media Technology, Xi'an University of Technology, Xi'an 710048, China.
Sensors (Basel). 2024 Nov 21;24(23):7441. doi: 10.3390/s24237441.
To realize abnormal-sound diagnosis in hydroelectric generating units, this study proposes a method based on continuous wavelet transform (CWT) and Transfer Learning (TL). A denoising algorithm utilizing spectral noise-gate technology is proposed to enhance fault characteristics in hydroelectric units. Subsequently, Continuous Wavelet Transform is applied to obtain frequency components, and the results are converted into a series of pseudo-color images to highlight information differences. A transfer model is subsequently developed for feature extraction, utilizing simplified fully connected layers to reduce modeling costs. The study optimizes key parameters during the signal-processing stage and achieves an improved parameter-setting scheme. Acoustic signals corresponding to four different fault states and a normal state are collected from a Kaplan hydroelectric generating unit in a hydropower station. The signal diagnosis accuracy rates before filtering are 84.83% and 95.14%. These rates significantly improved to 98.88% and 98.06%, respectively, demonstrating the effectiveness of the noise-reduction process. To demonstrate the superiority of the improved model in this work, a series of classic deep-learning models, including AlexNet, Resnet18, and MobileNetV3, are used for comparative analysis. The proposed method can effectively diagnose faults in Kaplan hydroelectric generating units with a high accuracy, which is crucial for the daily monitoring and maintenance of these units.
为实现水轮发电机组异常声音诊断,本研究提出一种基于连续小波变换(CWT)和迁移学习(TL)的方法。提出一种利用频谱噪声门技术的去噪算法,以增强水电机组的故障特征。随后,应用连续小波变换获取频率分量,并将结果转换为一系列伪彩色图像以突出信息差异。随后开发一个迁移模型用于特征提取,利用简化的全连接层降低建模成本。该研究在信号处理阶段优化关键参数,并实现了改进的参数设置方案。从某水电站的一台轴流转桨式水轮发电机组收集了对应四种不同故障状态和一种正常状态的声学信号。滤波前的信号诊断准确率分别为84.83%和95.14%。这些准确率分别显著提高到98.88%和98.06%,证明了降噪过程的有效性。为证明本工作中改进模型的优越性,使用了一系列经典深度学习模型,包括AlexNet、Resnet18和MobileNetV3进行对比分析。所提方法能够有效且高精度地诊断轴流转桨式水轮发电机组的故障,这对这些机组的日常监测和维护至关重要。