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基于振动和电机定子电流分析的离心泵非设计工况运行与气蚀检测

Off-Design Operation and Cavitation Detection in Centrifugal Pumps Using Vibration and Motor Stator Current Analyses.

作者信息

Han Yuejiang, Zou Jiamin, Presas Alexandre, Luo Yin, Yuan Jianping

机构信息

Research Center of Fluid Machinery Engineering and Technology, Jiangsu University, Zhenjiang 212013, China.

Centre for Industrial Diagnostics and Fluid Dynamics, Polytechnic University of Catalonia, 08034 Barcelona, Spain.

出版信息

Sensors (Basel). 2024 May 25;24(11):3410. doi: 10.3390/s24113410.

Abstract

Centrifugal pumps are essential in many industrial processes. An accurate operation diagnosis of centrifugal pumps is crucial to ensure their reliable operation and extend their useful life. In real industry applications, many centrifugal pumps lack flowmeters and accurate pressure sensors, and therefore, it is not possible to determine whether the pump is operating near its best efficiency point (BEP). This paper investigates the detection of off-design operation and cavitation for centrifugal pumps with accelerometers and current sensors. To this end, a centrifugal pump was tested under off-design conditions and various levels of cavitation. A three-axis accelerometer and three Hall-effect current sensors were used to collect vibration and stator current signals simultaneously under each state. Both kinds of signals were evaluated for their effectiveness in operation diagnosis. Signal processing methods, including wavelet threshold function, variational mode decomposition (VMD), Park vector modulus transformation, and a marginal spectrum were introduced for feature extraction. Seven families of machine learning-based classification algorithms were evaluated for their performance when used for off-design and cavitation identification. The obtained results, using both types of signals, prove the effectiveness of both approaches and the advantages of combining them in achieving the most reliable operation diagnosis results for centrifugal pumps.

摘要

离心泵在许多工业过程中至关重要。对离心泵进行准确的运行诊断对于确保其可靠运行并延长其使用寿命至关重要。在实际工业应用中,许多离心泵缺少流量计和精确的压力传感器,因此,无法确定泵是否在其最佳效率点(BEP)附近运行。本文研究了利用加速度计和电流传感器对离心泵非设计工况运行和 cavitation(此处可能有误,推测为“气蚀”)的检测。为此,在非设计工况和不同程度的气蚀条件下对一台离心泵进行了测试。使用一个三轴加速度计和三个霍尔效应电流传感器在每种状态下同时采集振动和定子电流信号。对这两种信号在运行诊断中的有效性进行了评估。引入了包括小波阈值函数、变分模态分解(VMD)、Park 矢量模变换和边际谱在内的信号处理方法进行特征提取。评估了七种基于机器学习的分类算法在用于非设计工况和气蚀识别时的性能。使用这两种信号获得的结果证明了这两种方法的有效性以及将它们结合起来在实现离心泵最可靠运行诊断结果方面的优势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1122/11175120/7074af7130ff/sensors-24-03410-g001.jpg

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