Ahmad Zahoor, Kim Jae-Young, Kim Jong-Myon
Department of Electrical, Electronic and Computer Engineering, University of Ulsan, Ulsan 44610, Republic of Korea.
Prognosis and Diagnostics Technologies Co., Ulsan 44610, Republic of Korea.
Sensors (Basel). 2023 Nov 10;23(22):9090. doi: 10.3390/s23229090.
This work presents a technique for fault detection and identification in centrifugal pumps (CPs) using a novel fault-specific Mann-Whitney test (FSU Test) and K-nearest neighbor (KNN) classification algorithm. Traditional fault indicators, such as the mean, peak, root mean square, and impulse factor, lack sensitivity in detecting incipient faults. Furthermore, for defect identification, supervised models rely on pre-existing knowledge about pump defects for training purposes. To address these concerns, a new centrifugal pump fault indicator (CPFI) that does not rely on previous knowledge is developed based on a novel fault-specific Mann-Whitney test. The new fault indicator is obtained by decomposing the vibration signature (VS) of the centrifugal pump hierarchically into its respective time-frequency representation using the wavelet packet transform (WPT) in the first step. The node containing the fault-specific frequency band is selected, and the Mann-Whitney test statistic is calculated from it. The combination of hierarchical decomposition of the vibration signal for fault-specific frequency band selection and the Mann-Whitney test form the new fault-specific Mann-Whitney test. The test output statistic yields the centrifugal pump fault indicator, which shows sensitivity toward the health condition of the centrifugal pump. This indicator changes according to the working conditions of the centrifugal pump. To further enhance fault detection, a new effect ratio (ER) is introduced. The KNN algorithm is employed to classify the fault type, resulting in promising improvements in fault classification accuracy, particularly under variable operating conditions.
这项工作提出了一种利用新型特定故障曼-惠特尼检验(FSU检验)和K近邻(KNN)分类算法对离心泵(CP)进行故障检测和识别的技术。传统的故障指标,如均值、峰值、均方根和脉冲因子,在检测早期故障时缺乏灵敏度。此外,对于缺陷识别,监督模型依赖于关于泵缺陷的先验知识进行训练。为了解决这些问题,基于一种新型特定故障曼-惠特尼检验,开发了一种不依赖先前知识的新型离心泵故障指标(CPFI)。首先,通过使用小波包变换(WPT)将离心泵的振动信号(VS)分层分解为其各自的时频表示,从而获得新的故障指标。选择包含特定故障频带的节点,并从中计算曼-惠特尼检验统计量。针对特定故障频带选择的振动信号分层分解与曼-惠特尼检验相结合,形成了新型特定故障曼-惠特尼检验。检验输出统计量产生离心泵故障指标,该指标对离心泵的健康状况表现出灵敏度。该指标会根据离心泵的工作条件而变化。为了进一步增强故障检测,引入了一种新的效应比(ER)。采用KNN算法对故障类型进行分类,在故障分类准确率方面取得了显著提高,尤其是在可变运行条件下。